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Bernoulli trial

In the theory of probability and statistics, a Bernoulli trial (or binomial trial) is a random experiment with exactly two possible outcomes, "success" and "failure", in which the probability of success is the same every time the experiment is conducted.[1] It is named after Jacob Bernoulli, a 17th-century Swiss mathematician, who analyzed them in his Ars Conjectandi (1713).[2]

Graphs of probability P of not observing independent events each of probability p after n Bernoulli trials vs np for various p. Three examples are shown:
Blue curve: Throwing a 6-sided die 6 times gives a 33.5% chance that 6 (or any other given number) never turns up; it can be observed that as n increases, the probability of a 1/n-chance event never appearing after n tries rapidly converges to 0.
Grey curve: To get 50-50 chance of throwing a Yahtzee (5 cubic dice all showing the same number) requires 0.69 × 1296 ~ 898 throws.
Green curve: Drawing a card from a deck of playing cards without jokers 100 (1.92 × 52) times with replacement gives 85.7% chance of drawing the ace of spades at least once.

The mathematical formalisation of the Bernoulli trial is known as the Bernoulli process. This article offers an elementary introduction to the concept, whereas the article on the Bernoulli process offers a more advanced treatment.

Since a Bernoulli trial has only two possible outcomes, it can be framed as some "yes or no" question. For example:

  • Is the top card of a shuffled deck an ace?
  • Was the newborn child a girl? (See human sex ratio.)

Therefore, success and failure are merely labels for the two outcomes, and should not be construed literally. The term "success" in this sense consists in the result meeting specified conditions; it is not a value judgement. More generally, given any probability space, for any event (set of outcomes), one can define a Bernoulli trial, corresponding to whether the event occurred or not (event or complementary event). Examples of Bernoulli trials include:

  • Flipping a coin. In this context, obverse ("heads") conventionally denotes success and reverse ("tails") denotes failure. A fair coin has the probability of success 0.5 by definition. In this case, there are exactly two possible outcomes.
  • Rolling a die, where a six is "success" and everything else a "failure". In this case, there are six possible outcomes, and the event is a six; the complementary event "not a six" corresponds to the other five possible outcomes.
  • In conducting a political opinion poll, choosing a voter at random to ascertain whether that voter will vote "yes" in an upcoming referendum.

Definition Edit

Independent repeated trials of an experiment with exactly two possible outcomes are called Bernoulli trials. Call one of the outcomes "success" and the other outcome "failure". Let   be the probability of success in a Bernoulli trial, and   be the probability of failure. Then the probability of success and the probability of failure sum to one, since these are complementary events: "success" and "failure" are mutually exclusive and exhaustive. Thus, one has the following relations:

 

Alternatively, these can be stated in terms of odds: given probability   of success and   of failure, the odds for are   and the odds against are   These can also be expressed as numbers, by dividing, yielding the odds for,  , and the odds against,  :

 

These are multiplicative inverses, so they multiply to 1, with the following relations:

 

In the case that a Bernoulli trial is representing an event from finitely many equally likely outcomes, where   of the outcomes are success and   of the outcomes are failure, the odds for are   and the odds against are   This yields the following formulas for probability and odds:

 

Here the odds are computed by dividing the number of outcomes, not the probabilities, but the proportion is the same, since these ratios only differ by multiplying both terms by the same constant factor.

Random variables describing Bernoulli trials are often encoded using the convention that 1 = "success", 0 = "failure".

Closely related to a Bernoulli trial is a binomial experiment, which consists of a fixed number   of statistically independent Bernoulli trials, each with a probability of success  , and counts the number of successes. A random variable corresponding to a binomial experiment is denoted by  , and is said to have a binomial distribution. The probability of exactly   successes in the experiment   is given by:

 

where   is a binomial coefficient.

Bernoulli trials may also lead to negative binomial distributions (which count the number of successes in a series of repeated Bernoulli trials until a specified number of failures are seen), as well as various other distributions.

When multiple Bernoulli trials are performed, each with its own probability of success, these are sometimes referred to as Poisson trials.[3]

Example: tossing coins Edit

Consider the simple experiment where a fair coin is tossed four times. Find the probability that exactly two of the tosses result in heads.

Solution Edit

For this experiment, let a heads be defined as a success and a tails as a failure. Because the coin is assumed to be fair, the probability of success is  . Thus, the probability of failure,  , is given by

 .

Using the equation above, the probability of exactly two tosses out of four total tosses resulting in a heads is given by:

 

See also Edit

References Edit

  1. ^ Papoulis, A. (1984). "Bernoulli Trials". Probability, Random Variables, and Stochastic Processes (2nd ed.). New York: McGraw-Hill. pp. 57–63.
  2. ^ James Victor Uspensky: Introduction to Mathematical Probability, McGraw-Hill, New York 1937, page 45
  3. ^ Rajeev Motwani and P. Raghavan. Randomized Algorithms. Cambridge University Press, New York (NY), 1995, p.67-68

External links Edit

bernoulli, trial, theory, probability, statistics, binomial, trial, random, experiment, with, exactly, possible, outcomes, success, failure, which, probability, success, same, every, time, experiment, conducted, named, after, jacob, bernoulli, 17th, century, s. In the theory of probability and statistics a Bernoulli trial or binomial trial is a random experiment with exactly two possible outcomes success and failure in which the probability of success is the same every time the experiment is conducted 1 It is named after Jacob Bernoulli a 17th century Swiss mathematician who analyzed them in his Ars Conjectandi 1713 2 Graphs of probability P of not observing independent events each of probability p after n Bernoulli trials vs np for various p Three examples are shown Blue curve Throwing a 6 sided die 6 times gives a 33 5 chance that 6 or any other given number never turns up it can be observed that as n increases the probability of a 1 n chance event never appearing after n tries rapidly converges to 0 Grey curve To get 50 50 chance of throwing a Yahtzee 5 cubic dice all showing the same number requires 0 69 1296 898 throws Green curve Drawing a card from a deck of playing cards without jokers 100 1 92 52 times with replacement gives 85 7 chance of drawing the ace of spades at least once The mathematical formalisation of the Bernoulli trial is known as the Bernoulli process This article offers an elementary introduction to the concept whereas the article on the Bernoulli process offers a more advanced treatment Since a Bernoulli trial has only two possible outcomes it can be framed as some yes or no question For example Is the top card of a shuffled deck an ace Was the newborn child a girl See human sex ratio Therefore success and failure are merely labels for the two outcomes and should not be construed literally The term success in this sense consists in the result meeting specified conditions it is not a value judgement More generally given any probability space for any event set of outcomes one can define a Bernoulli trial corresponding to whether the event occurred or not event or complementary event Examples of Bernoulli trials include Flipping a coin In this context obverse heads conventionally denotes success and reverse tails denotes failure A fair coin has the probability of success 0 5 by definition In this case there are exactly two possible outcomes Rolling a die where a six is success and everything else a failure In this case there are six possible outcomes and the event is a six the complementary event not a six corresponds to the other five possible outcomes In conducting a political opinion poll choosing a voter at random to ascertain whether that voter will vote yes in an upcoming referendum Contents 1 Definition 2 Example tossing coins 2 1 Solution 3 See also 4 References 5 External linksDefinition EditIndependent repeated trials of an experiment with exactly two possible outcomes are called Bernoulli trials Call one of the outcomes success and the other outcome failure Let p displaystyle p nbsp be the probability of success in a Bernoulli trial and q displaystyle q nbsp be the probability of failure Then the probability of success and the probability of failure sum to one since these are complementary events success and failure are mutually exclusive and exhaustive Thus one has the following relations p 1 q q 1 p p q 1 displaystyle p 1 q quad quad q 1 p quad quad p q 1 nbsp Alternatively these can be stated in terms of odds given probability p displaystyle p nbsp of success and q displaystyle q nbsp of failure the odds for are p q displaystyle p q nbsp and the odds against are q p displaystyle q p nbsp These can also be expressed as numbers by dividing yielding the odds for o f displaystyle o f nbsp and the odds against o a displaystyle o a nbsp o f p q p 1 p 1 q q o a q p 1 p p q 1 q displaystyle begin aligned o f amp p q p 1 p 1 q q o a amp q p 1 p p q 1 q end aligned nbsp These are multiplicative inverses so they multiply to 1 with the following relations o f 1 o a o a 1 o f o f o a 1 displaystyle o f 1 o a quad o a 1 o f quad o f cdot o a 1 nbsp In the case that a Bernoulli trial is representing an event from finitely many equally likely outcomes where S displaystyle S nbsp of the outcomes are success and F displaystyle F nbsp of the outcomes are failure the odds for are S F displaystyle S F nbsp and the odds against are F S displaystyle F S nbsp This yields the following formulas for probability and odds p S S F q F S F o f S F o a F S displaystyle begin aligned p amp S S F q amp F S F o f amp S F o a amp F S end aligned nbsp Here the odds are computed by dividing the number of outcomes not the probabilities but the proportion is the same since these ratios only differ by multiplying both terms by the same constant factor Random variables describing Bernoulli trials are often encoded using the convention that 1 success 0 failure Closely related to a Bernoulli trial is a binomial experiment which consists of a fixed number n displaystyle n nbsp of statistically independent Bernoulli trials each with a probability of success p displaystyle p nbsp and counts the number of successes A random variable corresponding to a binomial experiment is denoted by B n p displaystyle B n p nbsp and is said to have a binomial distribution The probability of exactly k displaystyle k nbsp successes in the experiment B n p displaystyle B n p nbsp is given by P k n k p k q n k displaystyle P k n choose k p k q n k nbsp where n k displaystyle n choose k nbsp is a binomial coefficient Bernoulli trials may also lead to negative binomial distributions which count the number of successes in a series of repeated Bernoulli trials until a specified number of failures are seen as well as various other distributions When multiple Bernoulli trials are performed each with its own probability of success these are sometimes referred to as Poisson trials 3 Example tossing coins EditConsider the simple experiment where a fair coin is tossed four times Find the probability that exactly two of the tosses result in heads Solution Edit For this experiment let a heads be defined as a success and a tails as a failure Because the coin is assumed to be fair the probability of success is p 1 2 displaystyle p tfrac 1 2 nbsp Thus the probability of failure q displaystyle q nbsp is given by q 1 p 1 1 2 1 2 displaystyle q 1 p 1 tfrac 1 2 tfrac 1 2 nbsp Using the equation above the probability of exactly two tosses out of four total tosses resulting in a heads is given by P 2 4 2 p 2 q 4 2 6 1 2 2 1 2 2 3 8 displaystyle begin aligned P 2 amp 4 choose 2 p 2 q 4 2 amp 6 times left tfrac 1 2 right 2 times left tfrac 1 2 right 2 amp dfrac 3 8 end aligned nbsp See also EditBernoulli scheme Bernoulli sampling Bernoulli distribution Binomial distribution Binomial coefficient Binomial proportion confidence interval Poisson sampling Sampling design Coin flipping Jacob Bernoulli Fisher s exact test Boschloo s testReferences Edit Papoulis A 1984 Bernoulli Trials Probability Random Variables and Stochastic Processes 2nd ed New York McGraw Hill pp 57 63 James Victor Uspensky Introduction to Mathematical Probability McGraw Hill New York 1937 page 45 Rajeev Motwani and P Raghavan Randomized Algorithms Cambridge University Press New York NY 1995 p 67 68External links Edit nbsp Wikimedia Commons has media related to Bernoulli trial Bernoulli trials Encyclopedia of Mathematics EMS Press 2001 1994 Simulation of n Bernoulli trials math uah edu Retrieved 2014 01 21 Retrieved from https en wikipedia org w index php title Bernoulli trial amp oldid 1161240561, wikipedia, wiki, book, books, library,

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