fbpx
Wikipedia

Event (probability theory)

In probability theory, an event is a set of outcomes of an experiment (a subset of the sample space) to which a probability is assigned.[1] A single outcome may be an element of many different events,[2] and different events in an experiment are usually not equally likely, since they may include very different groups of outcomes.[3] An event consisting of only a single outcome is called an elementary event or an atomic event; that is, it is a singleton set. An event that has more than one possible outcomes is called compound event. An event is said to occur if contains the outcome of the experiment (or trial) (that is, if ).[4] The probability (with respect to some probability measure) that an event occurs is the probability that contains the outcome of an experiment (that is, it is the probability that ). An event defines a complementary event, namely the complementary set (the event not occurring), and together these define a Bernoulli trial: did the event occur or not?

Typically, when the sample space is finite, any subset of the sample space is an event (that is, all elements of the power set of the sample space are defined as events).[5] However, this approach does not work well in cases where the sample space is uncountably infinite. So, when defining a probability space it is possible, and often necessary, to exclude certain subsets of the sample space from being events (see Events in probability spaces, below).

A simple example Edit

If we assemble a deck of 52 playing cards with no jokers, and draw a single card from the deck, then the sample space is a 52-element set, as each card is a possible outcome. An event, however, is any subset of the sample space, including any singleton set (an elementary event), the empty set (an impossible event, with probability zero) and the sample space itself (a certain event, with probability one). Other events are proper subsets of the sample space that contain multiple elements. So, for example, potential events include:

 
An Euler diagram of an event.   is the sample space and   is an event.
By the ratio of their areas, the probability of   is approximately 0.4.
  • "Red and black at the same time without being a joker" (0 elements),
  • "The 5 of Hearts" (1 element),
  • "A King" (4 elements),
  • "A Face card" (12 elements),
  • "A Spade" (13 elements),
  • "A Face card or a red suit" (32 elements),
  • "A card" (52 elements).

Since all events are sets, they are usually written as sets (for example, {1, 2, 3}), and represented graphically using Venn diagrams. In the situation where each outcome in the sample space Ω is equally likely, the probability   of an event   is the following formula:

 
This rule can readily be applied to each of the example events above.

Events in probability spaces Edit

Defining all subsets of the sample space as events works well when there are only finitely many outcomes, but gives rise to problems when the sample space is infinite. For many standard probability distributions, such as the normal distribution, the sample space is the set of real numbers or some subset of the real numbers. Attempts to define probabilities for all subsets of the real numbers run into difficulties when one considers 'badly behaved' sets, such as those that are nonmeasurable. Hence, it is necessary to restrict attention to a more limited family of subsets. For the standard tools of probability theory, such as joint and conditional probabilities, to work, it is necessary to use a σ-algebra, that is, a family closed under complementation and countable unions of its members. The most natural choice of σ-algebra is the Borel measurable set derived from unions and intersections of intervals. However, the larger class of Lebesgue measurable sets proves more useful in practice.

In the general measure-theoretic description of probability spaces, an event may be defined as an element of a selected 𝜎-algebra of subsets of the sample space. Under this definition, any subset of the sample space that is not an element of the 𝜎-algebra is not an event, and does not have a probability. With a reasonable specification of the probability space, however, all events of interest are elements of the 𝜎-algebra.

A note on notation Edit

Even though events are subsets of some sample space   they are often written as predicates or indicators involving random variables. For example, if   is a real-valued random variable defined on the sample space   the event

 
can be written more conveniently as, simply,
 
This is especially common in formulas for a probability, such as
 
The set   is an example of an inverse image under the mapping   because   if and only if  

See also Edit

Notes Edit

  1. ^ Leon-Garcia, Alberto (2008). Probability, statistics and random processes for electrical engineering. Upper Saddle River, NJ: Pearson. ISBN 9780131471221.
  2. ^ Pfeiffer, Paul E. (1978). Concepts of probability theory. Dover Publications. p. 18. ISBN 978-0-486-63677-1.
  3. ^ Foerster, Paul A. (2006). Algebra and trigonometry: Functions and Applications, Teacher's edition (Classics ed.). Upper Saddle River, NJ: Prentice Hall. p. 634. ISBN 0-13-165711-9.
  4. ^ Dekking, Frederik Michel; Kraaikamp, Cornelis; Lopuhaä, Hendrik Paul; Ludolf Erwin, Meester (2005). Dekking, Michel (ed.). A modern introduction to probability and statistics: understandig why and how. Springer texts in statistics. London [Heidelberg]: Springer. p. 14. ISBN 978-1-85233-896-1.
  5. ^ Širjaev, Alʹbert N. (2016). Probability-1. Graduate texts in mathematics. Translated by Boas, Ralph Philip; Chibisov, Dmitry (3rd ed.). New York Heidelberg Dordrecht London: Springer. ISBN 978-0-387-72205-4.

External links Edit

event, probability, theory, this, article, needs, additional, citations, verification, please, help, improve, this, article, adding, citations, reliable, sources, unsourced, material, challenged, removed, find, sources, event, probability, theory, news, newspa. This article needs additional citations for verification Please help improve this article by adding citations to reliable sources Unsourced material may be challenged and removed Find sources Event probability theory news newspapers books scholar JSTOR January 2018 Learn how and when to remove this template message In probability theory an event is a set of outcomes of an experiment a subset of the sample space to which a probability is assigned 1 A single outcome may be an element of many different events 2 and different events in an experiment are usually not equally likely since they may include very different groups of outcomes 3 An event consisting of only a single outcome is called an elementary event or an atomic event that is it is a singleton set An event that has more than one possible outcomes is called compound event An event S displaystyle S is said to occur if S displaystyle S contains the outcome x displaystyle x of the experiment or trial that is if x S displaystyle x in S 4 The probability with respect to some probability measure that an event S displaystyle S occurs is the probability that S displaystyle S contains the outcome x displaystyle x of an experiment that is it is the probability that x S displaystyle x in S An event defines a complementary event namely the complementary set the event not occurring and together these define a Bernoulli trial did the event occur or not Typically when the sample space is finite any subset of the sample space is an event that is all elements of the power set of the sample space are defined as events 5 However this approach does not work well in cases where the sample space is uncountably infinite So when defining a probability space it is possible and often necessary to exclude certain subsets of the sample space from being events see Events in probability spaces below Contents 1 A simple example 2 Events in probability spaces 3 A note on notation 4 See also 5 Notes 6 External linksA simple example EditIf we assemble a deck of 52 playing cards with no jokers and draw a single card from the deck then the sample space is a 52 element set as each card is a possible outcome An event however is any subset of the sample space including any singleton set an elementary event the empty set an impossible event with probability zero and the sample space itself a certain event with probability one Other events are proper subsets of the sample space that contain multiple elements So for example potential events include nbsp An Euler diagram of an event B displaystyle B nbsp is the sample space and A displaystyle A nbsp is an event By the ratio of their areas the probability of A displaystyle A nbsp is approximately 0 4 Red and black at the same time without being a joker 0 elements The 5 of Hearts 1 element A King 4 elements A Face card 12 elements A Spade 13 elements A Face card or a red suit 32 elements A card 52 elements Since all events are sets they are usually written as sets for example 1 2 3 and represented graphically using Venn diagrams In the situation where each outcome in the sample space W is equally likely the probability P displaystyle P nbsp of an event A displaystyle A nbsp is the following formula P A A W alternatively Pr A A W displaystyle mathrm P A frac A Omega left text alternatively Pr A frac A Omega right nbsp This rule can readily be applied to each of the example events above Events in probability spaces EditDefining all subsets of the sample space as events works well when there are only finitely many outcomes but gives rise to problems when the sample space is infinite For many standard probability distributions such as the normal distribution the sample space is the set of real numbers or some subset of the real numbers Attempts to define probabilities for all subsets of the real numbers run into difficulties when one considers badly behaved sets such as those that are nonmeasurable Hence it is necessary to restrict attention to a more limited family of subsets For the standard tools of probability theory such as joint and conditional probabilities to work it is necessary to use a s algebra that is a family closed under complementation and countable unions of its members The most natural choice of s algebra is the Borel measurable set derived from unions and intersections of intervals However the larger class of Lebesgue measurable sets proves more useful in practice In the general measure theoretic description of probability spaces an event may be defined as an element of a selected 𝜎 algebra of subsets of the sample space Under this definition any subset of the sample space that is not an element of the 𝜎 algebra is not an event and does not have a probability With a reasonable specification of the probability space however all events of interest are elements of the 𝜎 algebra A note on notation EditEven though events are subsets of some sample space W displaystyle Omega nbsp they are often written as predicates or indicators involving random variables For example if X displaystyle X nbsp is a real valued random variable defined on the sample space W displaystyle Omega nbsp the event w W u lt X w v displaystyle omega in Omega mid u lt X omega leq v nbsp can be written more conveniently as simply u lt X v displaystyle u lt X leq v nbsp This is especially common in formulas for a probability such as Pr u lt X v F v F u displaystyle Pr u lt X leq v F v F u nbsp The set u lt X v displaystyle u lt X leq v nbsp is an example of an inverse image under the mapping X displaystyle X nbsp because w X 1 u v displaystyle omega in X 1 u v nbsp if and only if u lt X w v displaystyle u lt X omega leq v nbsp See also EditAtom measure theory A measurable set with positive measure that contains no subset of smaller positive measure Complementary event Opposite of a probability event Elementary event An event that contains only one outcomePages displaying wikidata descriptions as a fallback Independent event When the occurrence of one event does not affect the likelihood of anotherPages displaying short descriptions of redirect targets Outcome probability Possible result of an experiment or trial Pairwise independent events Set of random variables of which any two are independentNotes Edit Leon Garcia Alberto 2008 Probability statistics and random processes for electrical engineering Upper Saddle River NJ Pearson ISBN 9780131471221 Pfeiffer Paul E 1978 Concepts of probability theory Dover Publications p 18 ISBN 978 0 486 63677 1 Foerster Paul A 2006 Algebra and trigonometry Functions and Applications Teacher s edition Classics ed Upper Saddle River NJ Prentice Hall p 634 ISBN 0 13 165711 9 Dekking Frederik Michel Kraaikamp Cornelis Lopuhaa Hendrik Paul Ludolf Erwin Meester 2005 Dekking Michel ed A modern introduction to probability and statistics understandig why and how Springer texts in statistics London Heidelberg Springer p 14 ISBN 978 1 85233 896 1 Sirjaev Alʹbert N 2016 Probability 1 Graduate texts in mathematics Translated by Boas Ralph Philip Chibisov Dmitry 3rd ed New York Heidelberg Dordrecht London Springer ISBN 978 0 387 72205 4 External links Edit nbsp Wikimedia Commons has media related to Event probability theory Random event Encyclopedia of Mathematics EMS Press 2001 1994 Formal definition in the Mizar system Retrieved from https en wikipedia org w index php title Event probability theory amp oldid 1180871729, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.