Discrete Random Variable: Difference between revisions

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* The average rate of occurrence per unit of time/sace is the '''rate parameter''' <math>\lambda</math>
* The average rate of occurrence per unit of time/sace is the '''rate parameter''' <math>\lambda</math>


Poisson distribution approximates binomial distribution when ''n'' is large and ''p'' is small, used to model rare events.
Poisson distribution approximates binomial distribution when ''n'' is large and ''p'' is small, used to model rare events. Normally it is used to measure the number of events in a unit time, whereas [[Continuous Random Variable#Exponential Distribution|exponential distribution]] models the amount of waiting time until an event.


I'm sleepy I'll write the details later... zzz...
I'm sleepy I'll write the details later... zzz...

Revision as of 07:46, 19 March 2024

A random variable is discrete if the values it can take on within an interval is finite.

PMF and CDF

The probability mass function (PMF) describes the probability distribution over a discrete random variable.

The cumulative distribution function (CDF) specifies the probability of an observation being equal to or less than a given value.

We usually have tables for these in the case of discrete random variables.

Statistics

Expected value (mean):

Distributions

Bernoulli

The bernoulli distribution describes the random variable of an experiment that has two outcomes and is performed once. The outcomes are either success or failure.

PMF

Statistics

Binomial

Repeating a bernoulli experiment times and we get a binomial random variable.

Consider an experiment with exactly two possible outcomes, conducted n times independently.

I'm sleep I'll write the details later. It should be on the equation sheet.

Poisson

The poisson distribution is used when we know the average rate of occurrence for a particular event over a particular time period.

  • There must be fixed interval of the time or space
  • Events happen with a known average rate independent of time or the last event.
  • The average rate of occurrence per unit of time/sace is the rate parameter

Poisson distribution approximates binomial distribution when n is large and p is small, used to model rare events. Normally it is used to measure the number of events in a unit time, whereas exponential distribution models the amount of waiting time until an event.

I'm sleepy I'll write the details later... zzz...