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Emily Candia
on Oct 18, 2024

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The Poisson distribution is a discrete distribution that expresses the probability of a fixed number of events occurring in a fixed interval.For example,suppose we want to model the number of arrivals per minute at the campus dining hall during lunch.We observe the actual arrivals in 200 one-minute periods in 1 week.The sample mean is 3.8 and the results are shown below. The Poisson distribution is a discrete distribution that expresses the probability of a fixed number of events occurring in a fixed interval.For example,suppose we want to model the number of arrivals per minute at the campus dining hall during lunch.We observe the actual arrivals in 200 one-minute periods in 1 week.The sample mean is 3.8 and the results are shown below.   The probabilities based on a Poisson distribution with a mean of 3.8 are shown below.   Perform a formal test to determine if the observed counts are compatible with the Poisson distribution with a mean of 3.8 and a significance level of .05. A) The P-value is very small;therefore the observed counts are compatible with the Poisson distribution. B) The P-value is large;therefore the observed counts are compatible with the Poisson distribution. C) The P-value is very small;therefore the observed counts are not compatible with the Poisson distribution. D) The P-value is large;therefore the observed counts are not compatible with the Poisson distribution. The probabilities based on a Poisson distribution with a mean of 3.8 are shown below. The Poisson distribution is a discrete distribution that expresses the probability of a fixed number of events occurring in a fixed interval.For example,suppose we want to model the number of arrivals per minute at the campus dining hall during lunch.We observe the actual arrivals in 200 one-minute periods in 1 week.The sample mean is 3.8 and the results are shown below.   The probabilities based on a Poisson distribution with a mean of 3.8 are shown below.   Perform a formal test to determine if the observed counts are compatible with the Poisson distribution with a mean of 3.8 and a significance level of .05. A) The P-value is very small;therefore the observed counts are compatible with the Poisson distribution. B) The P-value is large;therefore the observed counts are compatible with the Poisson distribution. C) The P-value is very small;therefore the observed counts are not compatible with the Poisson distribution. D) The P-value is large;therefore the observed counts are not compatible with the Poisson distribution. Perform a formal test to determine if the observed counts are compatible with the Poisson distribution with a mean of 3.8 and a significance level of .05.

A) The P-value is very small;therefore the observed counts are compatible with the Poisson distribution.
B) The P-value is large;therefore the observed counts are compatible with the Poisson distribution.
C) The P-value is very small;therefore the observed counts are not compatible with the Poisson distribution.
D) The P-value is large;therefore the observed counts are not compatible with the Poisson distribution.

Poisson Distribution

A probability distribution that expresses the probability of a given number of events occurring in a fixed interval of time or space.

Significance Level

The significance level is a threshold in hypothesis testing, beyond which an observed effect is considered statistically significant, typically set at 0.05.

Fixed Interval

A concept in operant conditioning referring to a schedule of reinforcement where rewards are given after a specific, constant amount of time has passed.

  • Master the application and deciphering of the Poisson distribution.
  • Identify the differences between actual and anticipated numbers in chi-square compatibility assessments.
  • Understand the implications of p-values in hypothesis testing.
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Michelle LivingstonOct 24, 2024
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