A binomial distribution is used to determine t🎃he probability of a pass or f🏅ail outcome in a survey or an experiment.
What Is a Binomial Distribution?
A binomial distribution shows the probability that a value will take one of two independent values under a given set of parameters or assumptions. It assumes there is only one outcome for each trial, each trial has the same probability of success, and each trial is mutually exclusive or independent 🔴of the others.
Key Takeaways
- The binomial distribution describes binary outcomes such as a yes/no answer or an on/off condition.
- The mean of a binomial distribution is calculated by multiplying the number of trials by the probability of success.
- A binomial distribution is a discrete distribution used in statistics, unlike a continuous distribution, such as a normal distribution.
Understanding Binomial Distributions
To start, the “bino๊mial” in binomial distribution means there are two things: the number of successes and the number of attempts. Each is useless without the other.
A binomial distribution is a 澳洲幸运5官方开奖结果体彩网:discrete distribution, not a continuous distribution (such as a 澳洲幸运5官方开奖结果体彩网:normal distribution). This is because a binomial distribution only counts two states, typically r🤡epresented as 1 (for a success) or 0 (for a failure), given multiple trials in the data. A binomial distribution thus represents the probability of x successes in n trials, given a success probability p for each trial.
A binomial distribution summarizes the number of trials, or observations, when each trial has the same probability of attaining one particu🅺lar value. A binomial distribution determines the probability of ⛦observing a specific number of successful outcomes in a specified number of trials.
Important
Binomial distributions are often used in social science statistics as a building block for mode🌄ls for dichotomous outcome variables, sꦕuch as whether a Republican or Democrat will win an upcoming election, whether an individual will die within a specified period of time, etc. It also has applications in finance, banking, and insurance, among other industries.
Analyzing Binomial Distributions
A binomial distribution's expected value, or mean, is calculated by multiplying the number of trials (n) by the probability of success (p), or n × p.
For example, the expected value of the number of heads in 100 trials of heads or tails is 50, or (100 × 0.5). Another common example of a binomial distribution is estimating the chances of success for a free-throw shooter in basketball, where 1 = a basket made and 0 = a miss.
The binomial distribution function is calcu🌟la🥀ted as:
P( x : n , p ) = n C x p x ( 1 - p ) n - x
澳洲幸运5官方开奖结果体彩网: Where:
- n is the number of trials (occurrences)
- x is the number of successful trials
- p is the probability of success in a single trial
- n C x is the combination of n and x. A combination is the number of ways to choose a sample of x elements from a set of n distinct objects, where order does not matter, and replacements are not allowed. Note that nCx = n! / r! ( n − r ) ! ), where ! is factorial (so, 4! = 4 × 3 × 2 × 1).
The mean of the binomial distribution is np, and the variance of the binomial distribution is np (1 − p). When p = 0.5, the distribution is symmetric around tꩵhe mean, such as when flipping a coin, because the chances of getting heads or tails are 50%, or 0.5. When p > 0.5, the distribution curve is skewed to the left. When p < 0.5, the distribution curve is skewed to the right.
The binomial distribution is the sum of a series of multiple independent and identically distributed Bernoulli trials. In a Bernoulli trial, the experiment is random and💫 ☂can only have two possible outcomes: success or failure.
For instance, flipping a coin is considered to be a 澳洲幸运5官方开奖结果体彩网:Bernoulli trial; each trial can only take one of two values (heads or tails), each success has the same probabili♚ty, and the results of one trial do not influence the results of another. Bernoulli distribution is a special case of binomial distribution where the number of trials n = 1.
Example of a Binomial Distribution
The binomial distribution is calculated by multiplying the probability of success raised to the power of the number of successes and the probability of failure raised to the power of the differen🍎ce between the number of successes and the number of trials. Then, multiply the product by the combination of the number of t♎rials and successes.
For example, assume that a casino created a new game in which participants can place bets on the number of heads or tails in a specified n꧙umber of coin flips. Assume a participant wants to place a $10 bet that there will be exactly six heads in 20 coin flips. The participant wants to calculate the probability of this occurring, and therefore, they use the calculation for binomial distribution.
The probability was calculated as (20! / (6! × (20 - 6)!)) × (0.50)(6) × (1 - 0.50)(20 - 6). Consequently, the probability of exactly six heads occurring in 20 coin flips is🍃 0.0369, or 3.7%. The expected value was 10 heads in this case, so the participant made a poor bet. The graph below shows that the mean is 10 (the expected value), and the chances of getting six heads are on the left tail i🀅n red. You can see that there is less of a chance of six heads occurring than seven, eight, nine, 10, 11, 12, or 13 heads.
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StatCrunch Binomial Calculator
So, how can this be used in finance? One example: Let’s say you’re a bank, a lender, that wants to know within three decimal places the likelihood of a particular borrower defaulting. What are the chances of so many borrowers 澳洲幸运5官方开奖结果体彩网:defaulting that they would render the bank ins♏olvent? Once you use the binomial distribution function to calculate that number, you have a better idea of how to price insurance and, ultimately, how much money to lend out and keep in reserve.
What Does Binomial Distribution Mean?
A binomial distribution 🦩states the likelihood that a value will take one of two 𒐪independent values under a given set of assumptions.
How Is a Binomial Distribution Used?
This distribution pattern is used in statistics but has implications in finance and other fields. Banks may use it to estimate the likelihood of a particular borrower defaulting, how much money to lend, and the amount to keep in reserve. It’s also used in the insurance industry to determine policy pricing and to assess risk.
Why Is the Binomial Distribution Important?
A binomial distribution is used to figure the probability of a pass or fail outcome in a survey, or an experiment that is replicated numerous times. There are only two potential outcomes for this type of distribution. More broadly, dis🐽tribution is an important part of analyzing data sets to estimate all the potential outcomes of the data and how freওquently they occur. Forecasting and understanding the success or failure of outcomes is essential to business development.
The Bottom Line
The binomial distribution is an important statistical distribution that describes binary outcomes (such as the flip of a coin, a yes/no answer, or an on/off condition). Understanding its characteristics and functions is important for data analysis in vari🌱ous contexts that involve an outcome taking one of two independent values.
It has applications in social science, finance, banking, insurance, and other areas. For instance, it can be used to estimate whether a borrower will default on a loan, whether an options contract will fini꧃sh in-the-money or out-of-the-money, or whether a company will miss or beat earnings estimates.