Difference between revisions of "Manuals/calci/DISCRETEDISTRIBUTED"

From ZCubes Wiki
Jump to navigation Jump to search
Line 9: Line 9:
 
*Discrete distribution is frequently used in statistical modeling and computer programming.
 
*Discrete distribution is frequently used in statistical modeling and computer programming.
 
*The discrete uniform distribution itself is inherently non-parametric.
 
*The discrete uniform distribution itself is inherently non-parametric.
*Consider an interval <math>[a,b]</math>, with these conventions, the cumulative distribution function (CDF) of the discrete uniform distribution can be expressed, for any <math>k \isin [a,b]</math>, as F(k;a,b)=k-a+1/b-a+1.
+
*Consider an interval <math>[a,b]</math>, with these conventions, the cumulative distribution function (CDF) of the discrete uniform distribution can be expressed, for any <math>k \isin [a,b]</math>, as <math>F(k;a,b)=\frac{k-a+1}{b-a+1}</math>.
 
*This function will return the result as error when  
 
*This function will return the result as error when  
 
  1.Any one of the parameter is non numeric.
 
  1.Any one of the parameter is non numeric.
 
  2.The value of a and b is<0.
 
  2.The value of a and b is<0.
 +
 +
==Examples==
 +
 +
==See Also==
 +
*[[Manuals/calci/BERNOULLIDISTRIBUTED  | BERNOULLIDISTRIBUTED ]]
 +
*[[Manuals/calci/BINOMIALDISTRIBUTED  | BINOMIALDISTRIBUTED ]]
 +
*[[Manuals/calci/NORMALDISTRIBUTED  | NORMALDISTRIBUTED ]]
 +
 +
==References==
 +
*[http://www.investopedia.com/terms/d/discrete-distribution.asp Discrete Distribution]
 +
 +
 +
*[[Z_API_Functions | List of Main Z Functions]]
 +
 +
*[[ Z3 |  Z3 home ]]

Revision as of 13:32, 21 September 2017

DISCRETEDISTRIBUTED (Numbers,Values,Probability)


  • is any value to test.

Description

  • This function shows the value of Discrete distribution.
  • The Discrete Uniform distribution is a symmetric probability distribution whereby a finite number of values are equally likely to be distributed.
  • So every one of n values has equal probability 1/n.
  • Unlike a continuous distribution which has an infinite number of outcomes,a discrete distribution is characterized by a limited number of possible observations.
  • Discrete distribution is frequently used in statistical modeling and computer programming.
  • The discrete uniform distribution itself is inherently non-parametric.
  • Consider an interval , with these conventions, the cumulative distribution function (CDF) of the discrete uniform distribution can be expressed, for any , as .
  • This function will return the result as error when
1.Any one of the parameter is non numeric.
2.The value of a and b is<0.

Examples

See Also

References