Difference between revisions of "Manuals/calci/POISSON"

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==poisson
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<div style="font-size:30px">'''POISSON(X,Lambda,Cumulative)'''</div><br/>
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*<math>x</math>    is the number of events.
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*<math>Lambda </math> is the mean
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*<math>Cumulative</math> is the logical value like TRUE or FALSE.
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**POISSON(), returns the Poisson distribution.
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==Description==
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*This function gives the value of the Poisson distribution.
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*The Poisson distribution is a discrete probability distribution for the counts of events that occur randomly in a given interval of time.
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*It is  is used to model the number of events occurring within a given time interval.
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*In <math>POISSON(X,Lambda,Cumulative)</math>, <math>X</math> is the number of events in a given interval of time, <math>Lambda </math> is the Average Numeric value and <math>Cumulative</math> is the logical value.
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*If it is TRUE, this function will give the Cumulative Poisson Probability with the number of random events between <math>0</math> and <math>x</math>(included).
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*If it is FALSE, this function will give the Poisson Probability Mass function with the number of events occurring will be exactly <math>x</math>.
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*The <math>POISSON</math>probability mass function is:
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<math> f(x,\lambda)=\frac{\lambda^x.e^{-\lambda}}{x!}</math>
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<math>x=0,1,2...</math> where <math> \lambda </math> is the shape parameter and <math>\lambda > 0</math>. <math>e</math> is the base of the natural logarithm (e=2.718282).
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*The Cumulative Poisson Probability  function is:
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<math>F(k,\lambda)=\sum_{k=0}^x \frac{e^{-\lambda} .\lambda^k}{k!}</math>.
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*This function will return the result as error when
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1.<math>X</math> or <math>Lamda</math> is non-numeric.
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2.<math>X<0</math> or <math>Lamda<0</math>.
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==Examples==
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#POISSON(10,3,TRUE) = 0.9997076630493528
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#POISSON(10,3,FALSE) = 0.0008101511794681433
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#POISSON(21.7,7.54,TRUE) = 0.9999955033358848
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#POISSON(21.7,7.54,FALSE) = 0.00000948031184308478
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==Related Videos==
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{{#ev:youtube|v=3z-M6sbGIZ0|280|center|Poisson Distribution}}
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==See Also==
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*[[Manuals/calci/EXPONDIST  | EXPONDIST ]]
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==References==
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[http://en.wikipedia.org/wiki/Poisson_distribution Poisson distribution ]
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*[[Z_API_Functions | List of Main Z Functions]]
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*[[ Z3 |  Z3 home ]]

Latest revision as of 15:21, 6 December 2018

POISSON(X,Lambda,Cumulative)


  • is the number of events.
  • is the mean
  • is the logical value like TRUE or FALSE.
    • POISSON(), returns the Poisson distribution.

Description

  • This function gives the value of the Poisson distribution.
  • The Poisson distribution is a discrete probability distribution for the counts of events that occur randomly in a given interval of time.
  • It is is used to model the number of events occurring within a given time interval.
  • In , is the number of events in a given interval of time, is the Average Numeric value and is the logical value.
  • If it is TRUE, this function will give the Cumulative Poisson Probability with the number of random events between and (included).
  • If it is FALSE, this function will give the Poisson Probability Mass function with the number of events occurring will be exactly .
  • The probability mass function is:

where is the shape parameter and . is the base of the natural logarithm (e=2.718282).

  • The Cumulative Poisson Probability function is:

.

  • This function will return the result as error when
1. or  is non-numeric.
2. or .

Examples

  1. POISSON(10,3,TRUE) = 0.9997076630493528
  2. POISSON(10,3,FALSE) = 0.0008101511794681433
  3. POISSON(21.7,7.54,TRUE) = 0.9999955033358848
  4. POISSON(21.7,7.54,FALSE) = 0.00000948031184308478

Related Videos

Poisson Distribution

See Also

References

Poisson distribution