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Uncertainty

Uncertainty or Incertitude refers to epistemic situations involving imperfect or unknown information. It applies to predictions of future events, to physical measurements that are already made, or to the unknown. Uncertainty arises in partially observable or stochastic environments, as well as due to ignorance, indolence, or both.[1] It arises in any number of fields, including insurance, philosophy, physics, statistics, economics, finance, medicine, psychology, sociology, engineering, metrology, meteorology, ecology and information science.

Situations often arise wherein a decision must be made when the results of each possible choice are uncertain.

Concepts edit

Although the terms are used in various ways among the general public, many specialists in decision theory, statistics and other quantitative fields have defined uncertainty, risk, and their measurement as:

Uncertainty edit

The lack of certainty, a state of limited knowledge where it is impossible to exactly describe the existing state, a future outcome, or more than one possible outcome.[2]

Measurement of uncertainty
A set of possible states or outcomes where probabilities are assigned to each possible state or outcome – this also includes the application of a probability density function to continuous variables.[3]

Second order uncertainty edit

In statistics and economics, second-order uncertainty is represented in probability density functions over (first-order) probabilities.[4][5]

Opinions in subjective logic[6] carry this type of uncertainty.

Risk edit

Risk is a state of uncertainty, where some possible outcomes have an undesired effect or significant loss. Measurement of risk includes a set of measured uncertainties, where some possible outcomes are losses, and the magnitudes of those losses. This also includes loss functions over continuous variables.[7][8][9][10]

Uncertainty versus variability edit

There is a difference between uncertainty and variability. Uncertainty is quantified by a probability distribution which depends upon knowledge about the likelihood of what the single, true value of the uncertain quantity is. Variability is quantified by a distribution of frequencies of multiple instances of the quantity, derived from observed data.[11]

Knightian uncertainty edit

In economics, in 1921 Frank Knight distinguished uncertainty from risk with uncertainty being lack of knowledge which is immeasurable and impossible to calculate. Because of the absence of clearly defined statistics in most economic decisions where people face uncertainty, he believed that we cannot measure probabilities in such cases; this is now referred to as Knightian uncertainty.[12]

Uncertainty must be taken in a sense radically distinct from the familiar notion of risk, from which it has never been properly separated.... The essential fact is that 'risk' means in some cases a quantity susceptible of measurement, while at other times it is something distinctly not of this character; and there are far-reaching and crucial differences in the bearings of the phenomena depending on which of the two is really present and operating.... It will appear that a measurable uncertainty, or 'risk' proper, as we shall use the term, is so far different from an unmeasurable one that it is not in effect an uncertainty at all.

— Frank Knight (1885–1972), Risk, Uncertainty, and Profit (1921), University of Chicago.[13]

There is a fundamental distinction between the reward for taking a known risk and that for assuming a risk whose value itself is not known. It is so fundamental, indeed, that … a known risk will not lead to any reward or special payment at all.

— Frank Knight

Knight pointed out that the unfavorable outcome of known risks can be insured during the decision-making process because it has a clearly defined expected probability distribution. Unknown risks have no known expected probability distribution, which can lead to extremely risky company decisions.

Other taxonomies of uncertainties and decisions include a broader sense of uncertainty and how it should be approached from an ethics perspective:[14]

 
A taxonomy of uncertainty

There are some things that you know to be true, and others that you know to be false; yet, despite this extensive knowledge that you have, there remain many things whose truth or falsity is not known to you. We say that you are uncertain about them. You are uncertain, to varying degrees, about everything in the future; much of the past is hidden from you; and there is a lot of the present about which you do not have full information. Uncertainty is everywhere and you cannot escape from it.

Dennis Lindley, Understanding Uncertainty (2006)

Risk and uncertainty edit

For example, if it is unknown whether or not it will rain tomorrow, then there is a state of uncertainty. If probabilities are applied to the possible outcomes using weather forecasts or even just a calibrated probability assessment, the uncertainty has been quantified. Suppose it is quantified as a 90% chance of sunshine. If there is a major, costly, outdoor event planned for tomorrow then there is a risk since there is a 10% chance of rain, and rain would be undesirable. Furthermore, if this is a business event and $100,000 would be lost if it rains, then the risk has been quantified (a 10% chance of losing $100,000). These situations can be made even more realistic by quantifying light rain vs. heavy rain, the cost of delays vs. outright cancellation, etc.

Some may represent the risk in this example as the "expected opportunity loss" (EOL) or the chance of the loss multiplied by the amount of the loss (10% × $100,000 = $10,000). That is useful if the organizer of the event is "risk neutral", which most people are not. Most would be willing to pay a premium to avoid the loss. An insurance company, for example, would compute an EOL as a minimum for any insurance coverage, then add onto that other operating costs and profit. Since many people are willing to buy insurance for many reasons, then clearly the EOL alone is not the perceived value of avoiding the risk.

Quantitative uses of the terms uncertainty and risk are fairly consistent from fields such as probability theory, actuarial science, and information theory. Some also create new terms without substantially changing the definitions of uncertainty or risk. For example, surprisal is a variation on uncertainty sometimes used in information theory. But outside of the more mathematical uses of the term, usage may vary widely. In cognitive psychology, uncertainty can be real, or just a matter of perception, such as expectations, threats, etc.

Vagueness is a form of uncertainty where the analyst is unable to clearly differentiate between two different classes, such as 'person of average height' and 'tall person'. This form of vagueness can be modelled by some variation on Zadeh's fuzzy logic or subjective logic.[15]

Ambiguity is a form of uncertainty where even the possible outcomes have unclear meanings and interpretations. The statement "He returns from the bank" is ambiguous because its interpretation depends on whether the word 'bank' is meant as "the side of a river" or "a financial institution". Ambiguity typically arises in situations where multiple analysts or observers have different interpretations of the same statements.[16]

At the subatomic level, uncertainty may be a fundamental and unavoidable property of the universe. In quantum mechanics, the Heisenberg uncertainty principle puts limits on how much an observer can ever know about the position and velocity of a particle. This may not just be ignorance of potentially obtainable facts but that there is no fact to be found. There is some controversy in physics as to whether such uncertainty is an irreducible property of nature or if there are "hidden variables" that would describe the state of a particle even more exactly than Heisenberg's uncertainty principle allows.[17]

Radical Uncertainty edit

The term 'radical uncertainty' was coined by John Kay and Mervyn King in their book Radical Uncertainty: Decision-Making for an Unknowable Future, published in March 2020. It is distinct from Knightian uncertainty, by whether or not it is 'resolvable'. If uncertainty arises from a lack of knowledge, and that lack of knowledge is resolvable by acquiring knowledge (such as by primary or secondary research) then it is not radical uncertainty. Only when there are no means available to acquire the knowledge which would resolve the uncertainty, is it considered 'radical'.[18][19]

In measurements edit

The most commonly used procedure for calculating measurement uncertainty is described in the "Guide to the Expression of Uncertainty in Measurement" (GUM) published by ISO. A derived work is for example the National Institute of Standards and Technology (NIST) Technical Note 1297, "Guidelines for Evaluating and Expressing the Uncertainty of NIST Measurement Results", and the Eurachem/Citac publication "Quantifying Uncertainty in Analytical Measurement". The uncertainty of the result of a measurement generally consists of several components. The components are regarded as random variables, and may be grouped into two categories according to the method used to estimate their numerical values:

By propagating the variances of the components through a function relating the components to the measurement result, the combined measurement uncertainty is given as the square root of the resulting variance. The simplest form is the standard deviation of a repeated observation.

In metrology, physics, and engineering, the uncertainty or margin of error of a measurement, when explicitly stated, is given by a range of values likely to enclose the true value. This may be denoted by error bars on a graph, or by the following notations:[citation needed]

  • measured value ± uncertainty
  • measured value +uncertainty
    −uncertainty
  • measured value (uncertainty)

In the last notation, parentheses are the concise notation for the ± notation. For example, applying 10 12 meters in a scientific or engineering application, it could be written 10.5 m or 10.50 m, by convention meaning accurate to within one tenth of a meter, or one hundredth. The precision is symmetric around the last digit. In this case it's half a tenth up and half a tenth down, so 10.5 means between 10.45 and 10.55. Thus it is understood that 10.5 means 10.5±0.05, and 10.50 means 10.50±0.005, also written 10.50(5) and 10.500(5) respectively. But if the accuracy is within two tenths, the uncertainty is ± one tenth, and it is required to be explicit: 10.5±0.1 and 10.50±0.01 or 10.5(1) and 10.50(1). The numbers in parentheses apply to the numeral left of themselves, and are not part of that number, but part of a notation of uncertainty. They apply to the least significant digits. For instance, 1.00794(7) stands for 1.00794±0.00007, while 1.00794(72) stands for 1.00794±0.00072.[20] This concise notation is used for example by IUPAC in stating the atomic mass of elements.

The middle notation is used when the error is not symmetrical about the value – for example 3.4+0.3
−0.2
. This can occur when using a logarithmic scale, for example.

Uncertainty of a measurement can be determined by repeating a measurement to arrive at an estimate of the standard deviation of the values. Then, any single value has an uncertainty equal to the standard deviation. However, if the values are averaged, then the mean measurement value has a much smaller uncertainty, equal to the standard error of the mean, which is the standard deviation divided by the square root of the number of measurements. This procedure neglects systematic errors, however.[citation needed]

When the uncertainty represents the standard error of the measurement, then about 68.3% of the time, the true value of the measured quantity falls within the stated uncertainty range. For example, it is likely that for 31.7% of the atomic mass values given on the list of elements by atomic mass, the true value lies outside of the stated range. If the width of the interval is doubled, then probably only 4.6% of the true values lie outside the doubled interval, and if the width is tripled, probably only 0.3% lie outside. These values follow from the properties of the normal distribution, and they apply only if the measurement process produces normally distributed errors. In that case, the quoted standard errors are easily converted to 68.3% ("one sigma"), 95.4% ("two sigma"), or 99.7% ("three sigma") confidence intervals.[citation needed]

In this context, uncertainty depends on both the accuracy and precision of the measurement instrument. The lower the accuracy and precision of an instrument, the larger the measurement uncertainty is. Precision is often determined as the standard deviation of the repeated measures of a given value, namely using the same method described above to assess measurement uncertainty. However, this method is correct only when the instrument is accurate. When it is inaccurate, the uncertainty is larger than the standard deviation of the repeated measures, and it appears evident that the uncertainty does not depend only on instrumental precision.

In the media edit

Uncertainty in science, and science in general, may be interpreted differently in the public sphere than in the scientific community.[21] This is due in part to the diversity of the public audience, and the tendency for scientists to misunderstand lay audiences and therefore not communicate ideas clearly and effectively.[21] One example is explained by the information deficit model. Also, in the public realm, there are often many scientific voices giving input on a single topic.[21] For example, depending on how an issue is reported in the public sphere, discrepancies between outcomes of multiple scientific studies due to methodological differences could be interpreted by the public as a lack of consensus in a situation where a consensus does in fact exist.[21] This interpretation may have even been intentionally promoted, as scientific uncertainty may be managed to reach certain goals. For example, climate change deniers took the advice of Frank Luntz to frame global warming as an issue of scientific uncertainty, which was a precursor to the conflict frame used by journalists when reporting the issue.[22]

"Indeterminacy can be loosely said to apply to situations in which not all the parameters of the system and their interactions are fully known, whereas ignorance refers to situations in which it is not known what is not known."[23] These unknowns, indeterminacy and ignorance, that exist in science are often "transformed" into uncertainty when reported to the public in order to make issues more manageable, since scientific indeterminacy and ignorance are difficult concepts for scientists to convey without losing credibility.[21] Conversely, uncertainty is often interpreted by the public as ignorance.[24] The transformation of indeterminacy and ignorance into uncertainty may be related to the public's misinterpretation of uncertainty as ignorance.

Journalists may inflate uncertainty (making the science seem more uncertain than it really is) or downplay uncertainty (making the science seem more certain than it really is).[25] One way that journalists inflate uncertainty is by describing new research that contradicts past research without providing context for the change.[25] Journalists may give scientists with minority views equal weight as scientists with majority views, without adequately describing or explaining the state of scientific consensus on the issue.[25] In the same vein, journalists may give non-scientists the same amount of attention and importance as scientists.[25]

Journalists may downplay uncertainty by eliminating "scientists' carefully chosen tentative wording, and by losing these caveats the information is skewed and presented as more certain and conclusive than it really is".[25] Also, stories with a single source or without any context of previous research mean that the subject at hand is presented as more definitive and certain than it is in reality.[25] There is often a "product over process" approach to science journalism that aids, too, in the downplaying of uncertainty.[25] Finally, and most notably for this investigation, when science is framed by journalists as a triumphant quest, uncertainty is erroneously framed as "reducible and resolvable".[25]

Some media routines and organizational factors affect the overstatement of uncertainty; other media routines and organizational factors help inflate the certainty of an issue. Because the general public (in the United States) generally trusts scientists, when science stories are covered without alarm-raising cues from special interest organizations (religious groups, environmental organizations, political factions, etc.) they are often covered in a business related sense, in an economic-development frame or a social progress frame.[26] The nature of these frames is to downplay or eliminate uncertainty, so when economic and scientific promise are focused on early in the issue cycle, as has happened with coverage of plant biotechnology and nanotechnology in the United States, the matter in question seems more definitive and certain.[26]

Sometimes, stockholders, owners, or advertising will pressure a media organization to promote the business aspects of a scientific issue, and therefore any uncertainty claims which may compromise the business interests are downplayed or eliminated.[25]

Applications edit

  • Uncertainty is designed into games, most notably in gambling, where chance is central to play.
  • In scientific modelling, in which the prediction of future events should be understood to have a range of expected values
  • In computer science, and in particular data management, uncertain data is commonplace and can be modeled and stored within an uncertain database
  • In optimization, uncertainty permits one to describe situations where the user does not have full control on the outcome of the optimization procedure, see scenario optimization and stochastic optimization.
  • In weather forecasting, it is now commonplace to include data on the degree of uncertainty in a weather forecast.
  • Uncertainty or error is used in science and engineering notation. Numerical values should only have to be expressed in those digits that are physically meaningful, which are referred to as significant figures. Uncertainty is involved in every measurement, such as measuring a distance, a temperature, etc., the degree depending upon the instrument or technique used to make the measurement. Similarly, uncertainty is propagated through calculations so that the calculated value has some degree of uncertainty depending upon the uncertainties of the measured values and the equation used in the calculation.[27]
  • In physics, the Heisenberg uncertainty principle forms the basis of modern quantum mechanics.[17]
  • In metrology, measurement uncertainty is a central concept quantifying the dispersion one may reasonably attribute to a measurement result. Such an uncertainty can also be referred to as a measurement error.
  • In daily life, measurement uncertainty is often implicit ("He is 6 feet tall" give or take a few inches), while for any serious use an explicit statement of the measurement uncertainty is necessary. The expected measurement uncertainty of many measuring instruments (scales, oscilloscopes, force gages, rulers, thermometers, etc.) is often stated in the manufacturers' specifications.
  • In engineering, uncertainty can be used in the context of validation and verification of material modeling.[28]
  • Uncertainty has been a common theme in art, both as a thematic device (see, for example, the indecision of Hamlet), and as a quandary for the artist (such as Martin Creed's difficulty with deciding what artworks to make).
  • Uncertainty is an important factor in economics. According to economist Frank Knight, it is different from risk, where there is a specific probability assigned to each outcome (as when flipping a fair coin). Knightian uncertainty involves a situation that has unknown probabilities.[12]
  • Investing in financial markets such as the stock market involves Knightian uncertainty when the probability of a rare but catastrophic event is unknown.[12]

Philosophy edit

In Western philosophy the first philosopher to embrace uncertainty was Pyrrho[29] resulting in the Hellenistic philosophies of Pyrrhonism and Academic Skepticism, the first schools of philosophical skepticism. Aporia and acatalepsy represent key concepts in ancient Greek philosophy regarding uncertainty.

Artificial intelligence edit

Many reasoning systems provide capabilities for reasoning under uncertainty. This is important when building situated reasoning agents which must deal with uncertain representations of the world. There are several common approaches to handling uncertainty. These include the use of certainty factors, probabilistic methods such as Bayesian inference or Dempster–Shafer theory, multi-valued ('fuzzy') logic and various connectionist approaches.[30]

See also edit

References edit

  1. ^ Peter Norvig; Sebastian Thrun. . Udacity. Archived from the original on 2014-01-22. Retrieved 2013-07-04.
  2. ^ Hubbard, D. W. (2014). How to measure anything: finding the value of "intangibles" in business. Wiley.
  3. ^ Kabir, H. D., Khosravi, A., Hosen, M. A., & Nahavandi, S. (2018). Neural Network-based Uncertainty Quantification: A Survey of Methodologies and Applications. IEEE Access. Vol. 6, Pages 36218 - 36234, doi:10.1109/ACCESS.2018.2836917
  4. ^ Gärdenfors, Peter; Sahlin, Nils-Eric (1982). "Unreliable probabilities, risk taking, and decision making". Synthese. 53 (3): 361–386. doi:10.1007/BF00486156. S2CID 36194904.
  5. ^ David Sundgren and Alexander Karlsson. Uncertainty levels of second-order probability. Polibits, 48:5–11, 2013.
  6. ^ Audun Jøsang. Subjective Logic: A Formalism for Reasoning Under Uncertainty. Springer, Heidelberg, 2016.
  7. ^ Douglas Hubbard (2010). How to Measure Anything: Finding the Value of Intangibles in Business, 2nd ed. John Wiley & Sons. Description 2011-11-22 at the Wayback Machine, contents 2013-04-27 at the Wayback Machine, and preview.
  8. ^ Jean-Jacques Laffont (1989). The Economics of Uncertainty and Information, MIT Press. Description 2012-01-25 at the Wayback Machine and chapter-preview links.
  9. ^ Jean-Jacques Laffont (1980). Essays in the Economics of Uncertainty, Harvard University Press. Chapter-preview links.
  10. ^ Robert G. Chambers and John Quiggin (2000). Uncertainty, Production, Choice, and Agency: The State-Contingent Approach. Cambridge. Description and preview. ISBN 0-521-62244-1
  11. ^ Begg, Steve H., Matthew B. Welsh, and Reidar B. Bratvold. "Uncertainty vs. Variability: What’s the Difference and Why is it Important?." SPE Hydrocarbon Economics and Evaluation Symposium. OnePetro, 2014.
  12. ^ a b c Knight, Frank H. (2009). Risk uncertainity and profit. Kessinger Publishing. OCLC 449946611.
  13. ^ Knight, F. H. (1921). Risk, Uncertainty, and Profit. Boston: Hart, Schaffner & Marx.
  14. ^ Tannert C, Elvers HD, Jandrig B (2007). "The ethics of uncertainty. In the light of possible dangers, research becomes a moral duty". EMBO Rep. 8 (10): 892–6. doi:10.1038/sj.embor.7401072. PMC 2002561. PMID 17906667.
  15. ^ Williamson, Timothy (1994). Vagueness. ISBN 0-415-03331-4. OCLC 254215717.
  16. ^ Winkler, Susanne (2015), "Exploring Ambiguity and the Ambiguity Model from a Transdisciplinary Perspective", Ambiguity, Berlin, München, Boston: DE GRUYTER, pp. 1–26, doi:10.1515/9783110403589-002, ISBN 9783110403589, retrieved 2023-04-02
  17. ^ a b Soloviev, V.; Solovieva, V.; Saptsin, V. (2014). "Heisenberg uncertainity principle and economic analogues of basic physical quantities". doi:10.31812/0564/1306. S2CID 248741767. {{cite journal}}: Cite journal requires |journal= (help)
  18. ^ "Radical Uncertainty". John Kay. 2020-02-12. Retrieved 2023-06-30.
  19. ^ King, Mervyn; Kay, John (2020). Radical Uncertainty: Decision-Making for an Unknowable Future. The Bridge Street Press.
  20. ^ "Standard Uncertainty and Relative Standard Uncertainty". CODATA reference. NIST. from the original on 16 October 2011. Retrieved 26 September 2011.
  21. ^ a b c d e Zehr, S. C. (1999). Scientists' representations of uncertainty. In Friedman, S.M., Dunwoody, S., & Rogers, C. L. (Eds.), Communicating uncertainty: Media coverage of new and controversial science (3–21). Mahwah, NJ: Lawrence Erlbaum Associates, Inc.
  22. ^ Nisbet, M.; Scheufele, D. A. (2009). "What's next for science communication? Promising directions and lingering distractions". American Journal of Botany. 96 (10): 1767–1778. doi:10.3732/ajb.0900041. PMID 21622297. S2CID 11964566.
  23. ^ Shackley, S.; Wynne, B. (1996). "Representing uncertainty in global climate change science and policy: Boundary-ordering devices and authority". Science, Technology, & Human Values. 21 (3): 275–302. doi:10.1177/016224399602100302. S2CID 145178297.
  24. ^ Somerville, R. C.; Hassol, S. J. (2011). "Communicating the science of climate change". Physics Today. 64 (10): 48–53. Bibcode:2011PhT....64j..48S. doi:10.1063/pt.3.1296.
  25. ^ a b c d e f g h i Stocking, H. (1999). "How journalists deal with scientific uncertainty". In Friedman, S. M.; Dunwoody, S.; Rogers, C. L. (eds.). Communicating Uncertainty: Media Coverage of New and Controversial Science. Mahwah, NJ: Lawrence Erlbaum. pp. 23–41. ISBN 978-0-8058-2727-9.
  26. ^ a b Nisbet, M.; Scheufele, D. A. (2007). "The Future of Public Engagement". The Scientist. 21 (10): 38–44.
  27. ^ Gregory, Kent J.; Bibbo, Giovanni; Pattison, John E. (2005). "A Standard Approach to Measurement Uncertainties for Scientists and Engineers in Medicine". Australasian Physical and Engineering Sciences in Medicine. 28 (2): 131–139. doi:10.1007/BF03178705. PMID 16060321. S2CID 13018991.
  28. ^ "Category:Uncertainty - EVOCD". from the original on 2015-09-26. Retrieved 2016-07-29.
  29. ^ Pyrrho, Internet Encyclopedia of Philosophy https://www.iep.utm.edu/pyrrho/
  30. ^ Moses, Yoram; Vardi, Moshe Y; Fagin, Ronald; Halpern, Joseph Y (2003). Reasoning About Knowledge. MIT Press. ISBN 978-0-262-56200-3.

Further reading edit

External links edit

  • Measurement Uncertainties in Science and Technology, Springer 2005 2007-12-15 at the Wayback Machine
  • Proposal for a New Error Calculus
  • Estimation of Measurement Uncertainties — an Alternative to the ISO Guide 2008-05-27 at the Wayback Machine
  • Bibliography of Papers Regarding Measurement Uncertainty
  • Guidelines for Evaluating and Expressing the Uncertainty of NIST Measurement Results
  • Strategic Engineering: Designing Systems and Products under Uncertainty (MIT Research Group)
  • Understanding Uncertainty site from Cambridge's Winton programme
  • Bowley, Roger (2009). "∆ – Uncertainty". Sixty Symbols. Brady Haran for the University of Nottingham.

uncertainty, film, same, name, film, incertitude, refers, epistemic, situations, involving, imperfect, unknown, information, applies, predictions, future, events, physical, measurements, that, already, made, unknown, arises, partially, observable, stochastic, . For the film of the same name see Uncertainty film Uncertainty or Incertitude refers to epistemic situations involving imperfect or unknown information It applies to predictions of future events to physical measurements that are already made or to the unknown Uncertainty arises in partially observable or stochastic environments as well as due to ignorance indolence or both 1 It arises in any number of fields including insurance philosophy physics statistics economics finance medicine psychology sociology engineering metrology meteorology ecology and information science Situations often arise wherein a decision must be made when the results of each possible choice are uncertain Contents 1 Concepts 1 1 Uncertainty 1 1 1 Second order uncertainty 1 1 2 Risk 1 2 Uncertainty versus variability 1 3 Knightian uncertainty 1 4 Risk and uncertainty 1 5 Radical Uncertainty 1 6 In measurements 2 In the media 3 Applications 4 Philosophy 5 Artificial intelligence 6 See also 7 References 8 Further reading 9 External linksConcepts editAlthough the terms are used in various ways among the general public many specialists in decision theory statistics and other quantitative fields have defined uncertainty risk and their measurement as Uncertainty edit The lack of certainty a state of limited knowledge where it is impossible to exactly describe the existing state a future outcome or more than one possible outcome 2 Measurement of uncertainty A set of possible states or outcomes where probabilities are assigned to each possible state or outcome this also includes the application of a probability density function to continuous variables 3 Second order uncertainty edit In statistics and economics second order uncertainty is represented in probability density functions over first order probabilities 4 5 Opinions in subjective logic 6 carry this type of uncertainty Risk edit Risk is a state of uncertainty where some possible outcomes have an undesired effect or significant loss Measurement of risk includes a set of measured uncertainties where some possible outcomes are losses and the magnitudes of those losses This also includes loss functions over continuous variables 7 8 9 10 Uncertainty versus variability edit There is a difference between uncertainty and variability Uncertainty is quantified by a probability distribution which depends upon knowledge about the likelihood of what the single true value of the uncertain quantity is Variability is quantified by a distribution of frequencies of multiple instances of the quantity derived from observed data 11 Knightian uncertainty edit In economics in 1921 Frank Knight distinguished uncertainty from risk with uncertainty being lack of knowledge which is immeasurable and impossible to calculate Because of the absence of clearly defined statistics in most economic decisions where people face uncertainty he believed that we cannot measure probabilities in such cases this is now referred to as Knightian uncertainty 12 Uncertainty must be taken in a sense radically distinct from the familiar notion of risk from which it has never been properly separated The essential fact is that risk means in some cases a quantity susceptible of measurement while at other times it is something distinctly not of this character and there are far reaching and crucial differences in the bearings of the phenomena depending on which of the two is really present and operating It will appear that a measurable uncertainty or risk proper as we shall use the term is so far different from an unmeasurable one that it is not in effect an uncertainty at all Frank Knight 1885 1972 Risk Uncertainty and Profit 1921 University of Chicago 13 There is a fundamental distinction between the reward for taking a known risk and that for assuming a risk whose value itself is not known It is so fundamental indeed that a known risk will not lead to any reward or special payment at all Frank Knight Knight pointed out that the unfavorable outcome of known risks can be insured during the decision making process because it has a clearly defined expected probability distribution Unknown risks have no known expected probability distribution which can lead to extremely risky company decisions Other taxonomies of uncertainties and decisions include a broader sense of uncertainty and how it should be approached from an ethics perspective 14 nbsp A taxonomy of uncertainty There are some things that you know to be true and others that you know to be false yet despite this extensive knowledge that you have there remain many things whose truth or falsity is not known to you We say that you are uncertain about them You are uncertain to varying degrees about everything in the future much of the past is hidden from you and there is a lot of the present about which you do not have full information Uncertainty is everywhere and you cannot escape from it Dennis Lindley Understanding Uncertainty 2006 Risk and uncertainty edit For example if it is unknown whether or not it will rain tomorrow then there is a state of uncertainty If probabilities are applied to the possible outcomes using weather forecasts or even just a calibrated probability assessment the uncertainty has been quantified Suppose it is quantified as a 90 chance of sunshine If there is a major costly outdoor event planned for tomorrow then there is a risk since there is a 10 chance of rain and rain would be undesirable Furthermore if this is a business event and 100 000 would be lost if it rains then the risk has been quantified a 10 chance of losing 100 000 These situations can be made even more realistic by quantifying light rain vs heavy rain the cost of delays vs outright cancellation etc Some may represent the risk in this example as the expected opportunity loss EOL or the chance of the loss multiplied by the amount of the loss 10 100 000 10 000 That is useful if the organizer of the event is risk neutral which most people are not Most would be willing to pay a premium to avoid the loss An insurance company for example would compute an EOL as a minimum for any insurance coverage then add onto that other operating costs and profit Since many people are willing to buy insurance for many reasons then clearly the EOL alone is not the perceived value of avoiding the risk Quantitative uses of the terms uncertainty and risk are fairly consistent from fields such as probability theory actuarial science and information theory Some also create new terms without substantially changing the definitions of uncertainty or risk For example surprisal is a variation on uncertainty sometimes used in information theory But outside of the more mathematical uses of the term usage may vary widely In cognitive psychology uncertainty can be real or just a matter of perception such as expectations threats etc Vagueness is a form of uncertainty where the analyst is unable to clearly differentiate between two different classes such as person of average height and tall person This form of vagueness can be modelled by some variation on Zadeh s fuzzy logic or subjective logic 15 Ambiguity is a form of uncertainty where even the possible outcomes have unclear meanings and interpretations The statement He returns from the bank is ambiguous because its interpretation depends on whether the word bank is meant as the side of a river or a financial institution Ambiguity typically arises in situations where multiple analysts or observers have different interpretations of the same statements 16 At the subatomic level uncertainty may be a fundamental and unavoidable property of the universe In quantum mechanics the Heisenberg uncertainty principle puts limits on how much an observer can ever know about the position and velocity of a particle This may not just be ignorance of potentially obtainable facts but that there is no fact to be found There is some controversy in physics as to whether such uncertainty is an irreducible property of nature or if there are hidden variables that would describe the state of a particle even more exactly than Heisenberg s uncertainty principle allows 17 Radical Uncertainty edit The term radical uncertainty was coined by John Kay and Mervyn King in their book Radical Uncertainty Decision Making for an Unknowable Future published in March 2020 It is distinct from Knightian uncertainty by whether or not it is resolvable If uncertainty arises from a lack of knowledge and that lack of knowledge is resolvable by acquiring knowledge such as by primary or secondary research then it is not radical uncertainty Only when there are no means available to acquire the knowledge which would resolve the uncertainty is it considered radical 18 19 In measurements edit Main article Measurement uncertainty See also Uncertainty quantification and Uncertainty propagation The most commonly used procedure for calculating measurement uncertainty is described in the Guide to the Expression of Uncertainty in Measurement GUM published by ISO A derived work is for example the National Institute of Standards and Technology NIST Technical Note 1297 Guidelines for Evaluating and Expressing the Uncertainty of NIST Measurement Results and the Eurachem Citac publication Quantifying Uncertainty in Analytical Measurement The uncertainty of the result of a measurement generally consists of several components The components are regarded as random variables and may be grouped into two categories according to the method used to estimate their numerical values Type A those evaluated by statistical methods Type B those evaluated by other means e g by assigning a probability distributionBy propagating the variances of the components through a function relating the components to the measurement result the combined measurement uncertainty is given as the square root of the resulting variance The simplest form is the standard deviation of a repeated observation In metrology physics and engineering the uncertainty or margin of error of a measurement when explicitly stated is given by a range of values likely to enclose the true value This may be denoted by error bars on a graph or by the following notations citation needed measured value uncertainty measured value uncertainty uncertainty measured value uncertainty In the last notation parentheses are the concise notation for the notation For example applying 10 1 2 meters in a scientific or engineering application it could be written 10 5 m or 10 50 m by convention meaning accurate to within one tenth of a meter or one hundredth The precision is symmetric around the last digit In this case it s half a tenth up and half a tenth down so 10 5 means between 10 45 and 10 55 Thus it is understood that 10 5 means 10 5 0 05 and 10 50 means 10 50 0 005 also written 10 50 5 and 10 500 5 respectively But if the accuracy is within two tenths the uncertainty is one tenth and it is required to be explicit 10 5 0 1 and 10 50 0 01 or 10 5 1 and 10 50 1 The numbers in parentheses apply to the numeral left of themselves and are not part of that number but part of a notation of uncertainty They apply to the least significant digits For instance 1 00794 7 stands for 1 00794 0 00007 while 1 00794 72 stands for 1 00794 0 00072 20 This concise notation is used for example by IUPAC in stating the atomic mass of elements The middle notation is used when the error is not symmetrical about the value for example 3 4 0 3 0 2 This can occur when using a logarithmic scale for example Uncertainty of a measurement can be determined by repeating a measurement to arrive at an estimate of the standard deviation of the values Then any single value has an uncertainty equal to the standard deviation However if the values are averaged then the mean measurement value has a much smaller uncertainty equal to the standard error of the mean which is the standard deviation divided by the square root of the number of measurements This procedure neglects systematic errors however citation needed When the uncertainty represents the standard error of the measurement then about 68 3 of the time the true value of the measured quantity falls within the stated uncertainty range For example it is likely that for 31 7 of the atomic mass values given on the list of elements by atomic mass the true value lies outside of the stated range If the width of the interval is doubled then probably only 4 6 of the true values lie outside the doubled interval and if the width is tripled probably only 0 3 lie outside These values follow from the properties of the normal distribution and they apply only if the measurement process produces normally distributed errors In that case the quoted standard errors are easily converted to 68 3 one sigma 95 4 two sigma or 99 7 three sigma confidence intervals citation needed In this context uncertainty depends on both the accuracy and precision of the measurement instrument The lower the accuracy and precision of an instrument the larger the measurement uncertainty is Precision is often determined as the standard deviation of the repeated measures of a given value namely using the same method described above to assess measurement uncertainty However this method is correct only when the instrument is accurate When it is inaccurate the uncertainty is larger than the standard deviation of the repeated measures and it appears evident that the uncertainty does not depend only on instrumental precision In the media editUncertainty in science and science in general may be interpreted differently in the public sphere than in the scientific community 21 This is due in part to the diversity of the public audience and the tendency for scientists to misunderstand lay audiences and therefore not communicate ideas clearly and effectively 21 One example is explained by the information deficit model Also in the public realm there are often many scientific voices giving input on a single topic 21 For example depending on how an issue is reported in the public sphere discrepancies between outcomes of multiple scientific studies due to methodological differences could be interpreted by the public as a lack of consensus in a situation where a consensus does in fact exist 21 This interpretation may have even been intentionally promoted as scientific uncertainty may be managed to reach certain goals For example climate change deniers took the advice of Frank Luntz to frame global warming as an issue of scientific uncertainty which was a precursor to the conflict frame used by journalists when reporting the issue 22 Indeterminacy can be loosely said to apply to situations in which not all the parameters of the system and their interactions are fully known whereas ignorance refers to situations in which it is not known what is not known 23 These unknowns indeterminacy and ignorance that exist in science are often transformed into uncertainty when reported to the public in order to make issues more manageable since scientific indeterminacy and ignorance are difficult concepts for scientists to convey without losing credibility 21 Conversely uncertainty is often interpreted by the public as ignorance 24 The transformation of indeterminacy and ignorance into uncertainty may be related to the public s misinterpretation of uncertainty as ignorance Journalists may inflate uncertainty making the science seem more uncertain than it really is or downplay uncertainty making the science seem more certain than it really is 25 One way that journalists inflate uncertainty is by describing new research that contradicts past research without providing context for the change 25 Journalists may give scientists with minority views equal weight as scientists with majority views without adequately describing or explaining the state of scientific consensus on the issue 25 In the same vein journalists may give non scientists the same amount of attention and importance as scientists 25 Journalists may downplay uncertainty by eliminating scientists carefully chosen tentative wording and by losing these caveats the information is skewed and presented as more certain and conclusive than it really is 25 Also stories with a single source or without any context of previous research mean that the subject at hand is presented as more definitive and certain than it is in reality 25 There is often a product over process approach to science journalism that aids too in the downplaying of uncertainty 25 Finally and most notably for this investigation when science is framed by journalists as a triumphant quest uncertainty is erroneously framed as reducible and resolvable 25 Some media routines and organizational factors affect the overstatement of uncertainty other media routines and organizational factors help inflate the certainty of an issue Because the general public in the United States generally trusts scientists when science stories are covered without alarm raising cues from special interest organizations religious groups environmental organizations political factions etc they are often covered in a business related sense in an economic development frame or a social progress frame 26 The nature of these frames is to downplay or eliminate uncertainty so when economic and scientific promise are focused on early in the issue cycle as has happened with coverage of plant biotechnology and nanotechnology in the United States the matter in question seems more definitive and certain 26 Sometimes stockholders owners or advertising will pressure a media organization to promote the business aspects of a scientific issue and therefore any uncertainty claims which may compromise the business interests are downplayed or eliminated 25 Applications editUncertainty is designed into games most notably in gambling where chance is central to play In scientific modelling in which the prediction of future events should be understood to have a range of expected values In computer science and in particular data management uncertain data is commonplace and can be modeled and stored within an uncertain database In optimization uncertainty permits one to describe situations where the user does not have full control on the outcome of the optimization procedure see scenario optimization and stochastic optimization In weather forecasting it is now commonplace to include data on the degree of uncertainty in a weather forecast Uncertainty or error is used in science and engineering notation Numerical values should only have to be expressed in those digits that are physically meaningful which are referred to as significant figures Uncertainty is involved in every measurement such as measuring a distance a temperature etc the degree depending upon the instrument or technique used to make the measurement Similarly uncertainty is propagated through calculations so that the calculated value has some degree of uncertainty depending upon the uncertainties of the measured values and the equation used in the calculation 27 In physics the Heisenberg uncertainty principle forms the basis of modern quantum mechanics 17 In metrology measurement uncertainty is a central concept quantifying the dispersion one may reasonably attribute to a measurement result Such an uncertainty can also be referred to as a measurement error In daily life measurement uncertainty is often implicit He is 6 feet tall give or take a few inches while for any serious use an explicit statement of the measurement uncertainty is necessary The expected measurement uncertainty of many measuring instruments scales oscilloscopes force gages rulers thermometers etc is often stated in the manufacturers specifications In engineering uncertainty can be used in the context of validation and verification of material modeling 28 Uncertainty has been a common theme in art both as a thematic device see for example the indecision of Hamlet and as a quandary for the artist such as Martin Creed s difficulty with deciding what artworks to make Uncertainty is an important factor in economics According to economist Frank Knight it is different from risk where there is a specific probability assigned to each outcome as when flipping a fair coin Knightian uncertainty involves a situation that has unknown probabilities 12 Investing in financial markets such as the stock market involves Knightian uncertainty when the probability of a rare but catastrophic event is unknown 12 Philosophy editMain article Philosophical skepticism In Western philosophy the first philosopher to embrace uncertainty was Pyrrho 29 resulting in the Hellenistic philosophies of Pyrrhonism and Academic Skepticism the first schools of philosophical skepticism Aporia and acatalepsy represent key concepts in ancient Greek philosophy regarding uncertainty Artificial intelligence editThis section is an excerpt from Reasoning system Reasoning under uncertainty edit Many reasoning systems provide capabilities for reasoning under uncertainty This is important when building situated reasoning agents which must deal with uncertain representations of the world There are several common approaches to handling uncertainty These include the use of certainty factors probabilistic methods such as Bayesian inference or Dempster Shafer theory multi valued fuzzy logic and various connectionist approaches 30 See also editCertainty Dempster Shafer theory Further research is needed Fuzzy set theory Game theory Information entropy Interval finite element Keynes Treatise on Probability Measurement uncertainty Morphological analysis problem solving Propagation of uncertainty Randomness Schrodinger s cat Scientific consensus Statistical mechanics Subjective logic Uncertainty quantification Uncertainty tolerance Volatility uncertainty complexity and ambiguityReferences edit Peter Norvig Sebastian Thrun Introduction to Artificial Intelligence Udacity Archived from the original on 2014 01 22 Retrieved 2013 07 04 Hubbard D W 2014 How to measure anything finding the value of intangibles in business Wiley Kabir H D Khosravi A Hosen M A amp Nahavandi S 2018 Neural Network based Uncertainty Quantification A Survey of Methodologies and Applications IEEE Access Vol 6 Pages 36218 36234 doi 10 1109 ACCESS 2018 2836917 Gardenfors Peter Sahlin Nils Eric 1982 Unreliable probabilities risk taking and decision making Synthese 53 3 361 386 doi 10 1007 BF00486156 S2CID 36194904 David Sundgren and Alexander Karlsson Uncertainty levels of second order probability Polibits 48 5 11 2013 Audun Josang Subjective Logic A Formalism for Reasoning Under Uncertainty Springer Heidelberg 2016 Douglas Hubbard 2010 How to Measure Anything Finding the Value of Intangibles in Business 2nd ed John Wiley amp Sons Description Archived 2011 11 22 at the Wayback Machine contents Archived 2013 04 27 at the Wayback Machine and preview Jean Jacques Laffont 1989 The Economics of Uncertainty and Information MIT Press Description Archived 2012 01 25 at the Wayback Machine and chapter preview links Jean Jacques Laffont 1980 Essays in the Economics of Uncertainty Harvard University Press Chapter preview links Robert G Chambers and John Quiggin 2000 Uncertainty Production Choice and Agency The State Contingent Approach Cambridge Description and preview ISBN 0 521 62244 1 Begg Steve H Matthew B Welsh and Reidar B Bratvold Uncertainty vs Variability What s the Difference and Why is it Important SPE Hydrocarbon Economics and Evaluation Symposium OnePetro 2014 a b c Knight Frank H 2009 Risk uncertainity and profit Kessinger Publishing OCLC 449946611 Knight F H 1921 Risk Uncertainty and Profit Boston Hart Schaffner amp Marx Tannert C Elvers HD Jandrig B 2007 The ethics of uncertainty In the light of possible dangers research becomes a moral duty EMBO Rep 8 10 892 6 doi 10 1038 sj embor 7401072 PMC 2002561 PMID 17906667 Williamson Timothy 1994 Vagueness ISBN 0 415 03331 4 OCLC 254215717 Winkler Susanne 2015 Exploring Ambiguity and the Ambiguity Model from a Transdisciplinary Perspective Ambiguity Berlin Munchen Boston DE GRUYTER pp 1 26 doi 10 1515 9783110403589 002 ISBN 9783110403589 retrieved 2023 04 02 a b Soloviev V Solovieva V Saptsin V 2014 Heisenberg uncertainity principle and economic analogues of basic physical quantities doi 10 31812 0564 1306 S2CID 248741767 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Radical Uncertainty John Kay 2020 02 12 Retrieved 2023 06 30 King Mervyn Kay John 2020 Radical Uncertainty Decision Making for an Unknowable Future The Bridge Street Press Standard Uncertainty and Relative Standard Uncertainty CODATA reference NIST Archived from the original on 16 October 2011 Retrieved 26 September 2011 a b c d e Zehr S C 1999 Scientists representations of uncertainty In Friedman S M Dunwoody S amp Rogers C L Eds Communicating uncertainty Media coverage of new and controversial science 3 21 Mahwah NJ Lawrence Erlbaum Associates Inc Nisbet M Scheufele D A 2009 What s next for science communication Promising directions and lingering distractions American Journal of Botany 96 10 1767 1778 doi 10 3732 ajb 0900041 PMID 21622297 S2CID 11964566 Shackley S Wynne B 1996 Representing uncertainty in global climate change science and policy Boundary ordering devices and authority Science Technology amp Human Values 21 3 275 302 doi 10 1177 016224399602100302 S2CID 145178297 Somerville R C Hassol S J 2011 Communicating the science of climate change Physics Today 64 10 48 53 Bibcode 2011PhT 64j 48S doi 10 1063 pt 3 1296 a b c d e f g h i Stocking H 1999 How journalists deal with scientific uncertainty In Friedman S M Dunwoody S Rogers C L eds Communicating Uncertainty Media Coverage of New and Controversial Science Mahwah NJ Lawrence Erlbaum pp 23 41 ISBN 978 0 8058 2727 9 a b Nisbet M Scheufele D A 2007 The Future of Public Engagement The Scientist 21 10 38 44 Gregory Kent J Bibbo Giovanni Pattison John E 2005 A Standard Approach to Measurement Uncertainties for Scientists and Engineers in Medicine Australasian Physical and Engineering Sciences in Medicine 28 2 131 139 doi 10 1007 BF03178705 PMID 16060321 S2CID 13018991 Category Uncertainty EVOCD Archived from the original on 2015 09 26 Retrieved 2016 07 29 Pyrrho Internet Encyclopedia of Philosophy https www iep utm edu pyrrho Moses Yoram Vardi Moshe Y Fagin Ronald Halpern Joseph Y 2003 Reasoning About Knowledge MIT Press ISBN 978 0 262 56200 3 Further reading editLindley Dennis V 2006 09 11 Understanding Uncertainty Wiley Interscience ISBN 978 0 470 04383 7 Gilboa Itzhak 2009 Theory of Decision under Uncertainty Cambridge Cambridge University Press ISBN 9780521517324 Halpern Joseph 2005 09 01 Reasoning about Uncertainty MIT Press ISBN 9780521517324 Smithson Michael 1989 Ignorance and Uncertainty New York Springer Verlag ISBN 978 0 387 96945 9 Treading Thin Air Geoff Mann on Uncertainty and Climate Change London Review of Books vol 45 no 17 7 September 2023 pp 17 19 W e are in desperate need of a politics that looks the catastrophic uncertainty of global warming and climate change square in the face That would mean taking much bigger and more transformative steps all but eliminating fossil fuels and prioritizing democratic institutions over markets The burden of this effort must fall almost entirely on the richest people and richest parts of the world because it is they who continue to gamble with everyone else s fate p 19 External links edit nbsp Look up uncertainty in Wiktionary the free dictionary nbsp Wikiquote has quotations related to Uncertainty nbsp Wikimedia Commons has media related to Uncertainty Measurement Uncertainties in Science and Technology Springer 2005 Archived 2007 12 15 at the Wayback Machine Proposal for a New Error Calculus Estimation of Measurement Uncertainties an Alternative to the ISO Guide Archived 2008 05 27 at the Wayback Machine Bibliography of Papers Regarding Measurement Uncertainty Guidelines for Evaluating and Expressing the Uncertainty of NIST Measurement Results Strategic Engineering Designing Systems and Products under Uncertainty MIT Research Group Understanding Uncertainty site from Cambridge s Winton programme Bowley Roger 2009 Uncertainty Sixty Symbols Brady Haran for the University of Nottingham Retrieved from https en wikipedia org w index php title Uncertainty amp oldid 1196820375, wikipedia, wiki, book, books, library,

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