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False positives and false negatives

A false positive is an error in binary classification in which a test result incorrectly indicates the presence of a condition (such as a disease when the disease is not present), while a false negative is the opposite error, where the test result incorrectly indicates the absence of a condition when it is actually present. These are the two kinds of errors in a binary test, in contrast to the two kinds of correct result (a true positive and a true negative). They are also known in medicine as a false positive (or false negative) diagnosis, and in statistical classification as a false positive (or false negative) error.[1]

In statistical hypothesis testing, the analogous concepts are known as type I and type II errors, where a positive result corresponds to rejecting the null hypothesis, and a negative result corresponds to not rejecting the null hypothesis. The terms are often used interchangeably, but there are differences in detail and interpretation due to the differences between medical testing and statistical hypothesis testing.

False positive error edit

A false positive error, or false positive, is a result that indicates a given condition exists when it does not. For example, a pregnancy test which indicates a woman is pregnant when she is not, or the conviction of an innocent person.[2]

A false positive error is a type I error where the test is checking a single condition, and wrongly gives an affirmative (positive) decision. However it is important to distinguish between the type 1 error rate and the probability of a positive result being false. The latter is known as the false positive risk (see Ambiguity in the definition of false positive rate, below).[3]

False negative error edit

A false negative error, or false negative, is a test result which wrongly indicates that a condition does not hold. For example, when a pregnancy test indicates a woman is not pregnant, but she is, or when a person guilty of a crime is acquitted, these are false negatives. The condition "the woman is pregnant", or "the person is guilty" holds, but the test (the pregnancy test or the trial in a court of law) fails to realize this condition, and wrongly decides that the person is not pregnant or not guilty.[citation needed]

A false negative error is a type II error occurring in a test where a single condition is checked for, and the result of the test is erroneous, that the condition is absent.[4]

Related terms edit

False positive and false negative rates edit

The false positive rate (FPR) is the proportion of all negatives that still yield positive test outcomes, i.e., the conditional probability of a positive test result given an event that was not present.[citation needed]

The false positive rate is equal to the significance level. The specificity of the test is equal to 1 minus the false positive rate.

In statistical hypothesis testing, this fraction is given the Greek letter α, and 1 − α is defined as the specificity of the test. Increasing the specificity of the test lowers the probability of type I errors, but may raise the probability of type II errors (false negatives that reject the alternative hypothesis when it is true).[a]

Complementarily, the false negative rate (FNR) is the proportion of positives which yield negative test outcomes with the test, i.e., the conditional probability of a negative test result given that the condition being looked for is present.

In statistical hypothesis testing, this fraction is given the letter β. The "power" (or the "sensitivity") of the test is equal to 1 − β.

Ambiguity in the definition of false positive rate edit

The term false discovery rate (FDR) was used by Colquhoun (2014)[5] to mean the probability that a "significant" result was a false positive. Later Colquhoun (2017)[3] used the term false positive risk (FPR) for the same quantity, to avoid confusion with the term FDR as used by people who work on multiple comparisons. Corrections for multiple comparisons aim only to correct the type I error rate, so the result is a (corrected) p-value. Thus they are susceptible to the same misinterpretation as any other p-value. The false positive risk is always higher, often much higher, than the p-value.[5][3]

Confusion of these two ideas, the error of the transposed conditional, has caused much mischief.[6] Because of the ambiguity of notation in this field, it is essential to look at the definition in every paper. The hazards of reliance on p-values was emphasized in Colquhoun (2017)[3] by pointing out that even an observation of p = 0.001 was not necessarily strong evidence against the null hypothesis. Despite the fact that the likelihood ratio in favor of the alternative hypothesis over the null is close to 100, if the hypothesis was implausible, with a prior probability of a real effect being 0.1, even the observation of p = 0.001 would have a false positive rate of 8 percent. It wouldn't even reach the 5 percent level. As a consequence, it has been recommended[3][7] that every p-value should be accompanied by the prior probability of there being a real effect that it would be necessary to assume in order to achieve a false positive risk of 5%. For example, if we observe p = 0.05 in a single experiment, we would have to be 87% certain that there was a real effect before the experiment was done to achieve a false positive risk of 5%.

Receiver operating characteristic edit

The article "Receiver operating characteristic" discusses parameters in statistical signal processing based on ratios of errors of various types.

See also edit

Notes edit

  1. ^ When developing detection algorithms or tests, a balance must be chosen between risks of false negatives and false positives. Usually there is a threshold of how close a match to a given sample must be achieved before the algorithm reports a match. The higher this threshold, the more false negatives and the fewer false positives.

References edit

  1. ^ False Positives and False Negatives
  2. ^ Robinson A, Keller LR, del Campo C. Building insights on true positives vs. false positives: Bayes’ rule. Decision Sciences Journal of Innovative Education. 2022;20(4):224-234. doi:10.1111/dsji.12265
  3. ^ a b c d e Colquhoun, David (2017). "The reproducibility of research and the misinterpretation of p-values". Royal Society Open Science. 4 (12): 171085. doi:10.1098/rsos.171085. PMC 5750014. PMID 29308247.
  4. ^ Banerjee, A; Chitnis, UB; Jadhav, SL; Bhawalkar, JS; Chaudhury, S (2009). "Hypothesis testing, type I and type II errors". Ind Psychiatry J. 18 (2): 127–31. doi:10.4103/0972-6748.62274. PMC 2996198. PMID 21180491.
  5. ^ a b Colquhoun, David (2014). "An investigation of the false discovery rate and the misinterpretation of p-values". Royal Society Open Science. 1 (3): 140216. arXiv:1407.5296. Bibcode:2014RSOS....140216C. doi:10.1098/rsos.140216. PMC 4448847. PMID 26064558.
  6. ^ Colquhoun, David. "The problem with p-values". Aeon. Aeon Magazine. Retrieved 11 December 2016.
  7. ^ Colquhoun, David (2018). "The false positive risk: A proposal concerning what to do about p values". The American Statistician. 73: 192–201. arXiv:1802.04888. doi:10.1080/00031305.2018.1529622. S2CID 85530643.

false, positives, false, negatives, false, positive, redirects, here, other, uses, false, positive, disambiguation, false, positive, error, binary, classification, which, test, result, incorrectly, indicates, presence, condition, such, disease, when, disease, . False Positive redirects here For other uses see False Positive disambiguation A false positive is an error in binary classification in which a test result incorrectly indicates the presence of a condition such as a disease when the disease is not present while a false negative is the opposite error where the test result incorrectly indicates the absence of a condition when it is actually present These are the two kinds of errors in a binary test in contrast to the two kinds of correct result a true positive and a true negative They are also known in medicine as a false positive or false negative diagnosis and in statistical classification as a false positive or false negative error 1 In statistical hypothesis testing the analogous concepts are known as type I and type II errors where a positive result corresponds to rejecting the null hypothesis and a negative result corresponds to not rejecting the null hypothesis The terms are often used interchangeably but there are differences in detail and interpretation due to the differences between medical testing and statistical hypothesis testing Contents 1 False positive error 2 False negative error 3 Related terms 3 1 False positive and false negative rates 3 2 Ambiguity in the definition of false positive rate 3 3 Receiver operating characteristic 4 See also 5 Notes 6 ReferencesFalse positive error editA false positive error or false positive is a result that indicates a given condition exists when it does not For example a pregnancy test which indicates a woman is pregnant when she is not or the conviction of an innocent person 2 A false positive error is a type I error where the test is checking a single condition and wrongly gives an affirmative positive decision However it is important to distinguish between the type 1 error rate and the probability of a positive result being false The latter is known as the false positive risk see Ambiguity in the definition of false positive rate below 3 False negative error editA false negative error or false negative is a test result which wrongly indicates that a condition does not hold For example when a pregnancy test indicates a woman is not pregnant but she is or when a person guilty of a crime is acquitted these are false negatives The condition the woman is pregnant or the person is guilty holds but the test the pregnancy test or the trial in a court of law fails to realize this condition and wrongly decides that the person is not pregnant or not guilty citation needed A false negative error is a type II error occurring in a test where a single condition is checked for and the result of the test is erroneous that the condition is absent 4 Related terms editFalse positive and false negative rates edit Main articles Sensitivity and specificity and False positive rate The false positive rate FPR is the proportion of all negatives that still yield positive test outcomes i e the conditional probability of a positive test result given an event that was not present citation needed The false positive rate is equal to the significance level The specificity of the test is equal to 1 minus the false positive rate In statistical hypothesis testing this fraction is given the Greek letter a and 1 a is defined as the specificity of the test Increasing the specificity of the test lowers the probability of type I errors but may raise the probability of type II errors false negatives that reject the alternative hypothesis when it is true a Complementarily the false negative rate FNR is the proportion of positives which yield negative test outcomes with the test i e the conditional probability of a negative test result given that the condition being looked for is present In statistical hypothesis testing this fraction is given the letter b The power or the sensitivity of the test is equal to 1 b Ambiguity in the definition of false positive rate edit The term false discovery rate FDR was used by Colquhoun 2014 5 to mean the probability that a significant result was a false positive Later Colquhoun 2017 3 used the term false positive risk FPR for the same quantity to avoid confusion with the term FDR as used by people who work on multiple comparisons Corrections for multiple comparisons aim only to correct the type I error rate so the result is a corrected p value Thus they are susceptible to the same misinterpretation as any other p value The false positive risk is always higher often much higher than the p value 5 3 Confusion of these two ideas the error of the transposed conditional has caused much mischief 6 Because of the ambiguity of notation in this field it is essential to look at the definition in every paper The hazards of reliance on p values was emphasized in Colquhoun 2017 3 by pointing out that even an observation of p 0 001 was not necessarily strong evidence against the null hypothesis Despite the fact that the likelihood ratio in favor of the alternative hypothesis over the null is close to 100 if the hypothesis was implausible with a prior probability of a real effect being 0 1 even the observation of p 0 001 would have a false positive rate of 8 percent It wouldn t even reach the 5 percent level As a consequence it has been recommended 3 7 that every p value should be accompanied by the prior probability of there being a real effect that it would be necessary to assume in order to achieve a false positive risk of 5 For example if we observe p 0 05 in a single experiment we would have to be 87 certain that there was a real effect before the experiment was done to achieve a false positive risk of 5 Receiver operating characteristic edit The article Receiver operating characteristic discusses parameters in statistical signal processing based on ratios of errors of various types See also editBase rate fallacy False positive rate Positive and negative predictive values Why Most Published Research Findings Are FalseNotes edit When developing detection algorithms or tests a balance must be chosen between risks of false negatives and false positives Usually there is a threshold of how close a match to a given sample must be achieved before the algorithm reports a match The higher this threshold the more false negatives and the fewer false positives References edit False Positives and False Negatives Robinson A Keller LR del Campo C Building insights on true positives vs false positives Bayes rule Decision Sciences Journal of Innovative Education 2022 20 4 224 234 doi 10 1111 dsji 12265 a b c d e Colquhoun David 2017 The reproducibility of research and the misinterpretation of p values Royal Society Open Science 4 12 171085 doi 10 1098 rsos 171085 PMC 5750014 PMID 29308247 Banerjee A Chitnis UB Jadhav SL Bhawalkar JS Chaudhury S 2009 Hypothesis testing type I and type II errors Ind Psychiatry J 18 2 127 31 doi 10 4103 0972 6748 62274 PMC 2996198 PMID 21180491 a b Colquhoun David 2014 An investigation of the false discovery rate and the misinterpretation of p values Royal Society Open Science 1 3 140216 arXiv 1407 5296 Bibcode 2014RSOS 140216C doi 10 1098 rsos 140216 PMC 4448847 PMID 26064558 Colquhoun David The problem with p values Aeon Aeon Magazine Retrieved 11 December 2016 Colquhoun David 2018 The false positive risk A proposal concerning what to do about p values The American Statistician 73 192 201 arXiv 1802 04888 doi 10 1080 00031305 2018 1529622 S2CID 85530643 Retrieved from https en wikipedia org w index php title False positives and false negatives amp oldid 1220823057 False negative error, wikipedia, wiki, book, books, library,

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