SlideShare una empresa de Scribd logo
1 de 16
1.11 Hypergeometric
    Distribution
Hypergeometric Distribution

Suppose we are interested in the number of defectives in
  a sample of size n units drawn from a lot containing N
  units, of which a are defective.
Each object has same chance of being selected, then the
  probability that the first drawing will yield a defective
  unit               = a/N
but for the second drawing, probability

                   a       1
                                if first unit is defective,
                  N        1
                       a
                               if first unit is not defective.
                  N        1
Hypergeometric Distribution
• The trials here are not independent and hence the
  fourth assumption underlying the binomial
  distribution is not fulfilled and therefore, we cannot
  apply binomial distribution here.
• Binomial distribution would have been applied if we
  do sampling with replacement, viz., if each unit
  selected from the sample would have been replaced
  before the next one is drawn.
Hypergeometric Distribution

Sampling without replacement
Number of ways in which x successes (defectives) can be
  chosen is a
             x
Number of ways in which n – x failures (non defectives)
be chosen is N a
             n x
Hence number of ways x successes and n – x failures can
be chosen is a N a
              x    n   x
Hypergeometric Distribution

Number of ways n objects can be chosen from N objects is N
If all the possibilities are equally likely then for sampling n
without replacement the probability of getting “x successes
in n trials” is given by
                                a   N   a
                                x   n   x
          h ( x; n, a , N )                      for x   0 , 1,...., n
                                    N
                                    n
          where x        a, n   x   N       a.
Hypergeometric Distribution

• The solution of the problem of sampling without
  replacement gave birth to the above distribution
  which      we     termed     as     hypergeometric
  distribution.
• The parameters of hypergeometric distribution are
  the sample size n, the lot size (or population size)
  N, and the number of “successes” in the lot a.
• When n is small compared to N, the composition
  of the lot is not seriously affected by drawing the
  sample and the binomial distribution with
  parameters n and p = a/N will yield a good
  approximation.
Hypergeometric Distribution
The difference between the two values is only 0.010.

In general it can be shown that
                h( x; n, a, N) b( x; n, p)
with p = (a/N) when N ∞.

A good rule of thumb is to use the binomial distribution
  as an approximation to the hyper-geometric
  distribution if n/N ≤0.05
The Mean and the Variance of a Probability
              Distribution

   Mean of hypergeometric distribution
                  a            n     sample size
            n                  N      population size
                 N             a     number of success
  Proof:                                        a   N   a
       n                             n          x   n   x
            x .h ( x ; n , a , N )         x.
                                                    N
      x 0                            x 1
                                                    n
The Mean and the Variance of a Probability
              Distribution


   a                 a!               a       (a       1)!               a a       1
    x        x! ( a       x )!        x (x    1)! ( a         x )!       x x       1

                 a        1       N       a
        n                                                    n       a   1     N       a
                 x        1       n   x            a
            a.
                              N                    N                 x   1     n       x
    x 1                                                      x 1
                              n                    n
The Mean and the Variance of a Probability
              Distribution

   Put x – 1= y
                                                                k   n   1
          n 1
     a          a       1           N       a                   m   a   1
     N   y 0        y           n       1       y               r   y

     n                                                          s   N   a

                            k       m           s       m       s
  Use the identity
                                    r       k       r       k
                        r 0
The Mean and the Variance of a Probability
              Distribution

   We get

                  a       N   1
               N          n   1
                  n

                      a
              n
                      N
Variance of hypergeometric distribution

         2      n a (N        a) (N     n)
                          2
                      N       (N   1)
Proof:                                              a   N   a
     n                                  n
              2                                2    x   n   x
2            x .h ( x ; n , a , N )           x .
    x 0
                                                        N
                                        x 1
                                                        n
a    1       N   a
        n          x    1       n   x
2   a         x.
                            N
        x 1
                            n
              n                     a   1   N   a
    a
                   (x   1 1).
    N                               x   1   n   x
            x 1
    n
n       a       2       N       a
              a (a       1)
         2                            .
                 N                        x       2       n       x
                              x 2
                  n
                              n       a       1       N       a
                     a
                     N                x       1       n       x
                          x 1
                     n
Put x – 2 = y in 1st summation and x – 1 = z in 2nd one
n 2         a       2       N           a
            a (a       1)
     2                              .
                  N                         y       n       2           y
                            y 0
                  n
                        n 1 a               1       N       a
                   a
                   N                    z       n       1       z
                        z 0
                   n
                                k       m           s                   m       s
Use the identity
                                        r       k       r                   k
                            r 0

 k   n          2, m        a       2               k       n           1, m        a   1
 r       y, s      N        a                       r       z, s            N       a
a (a    1) N        2             a        N        1
2
        N         n     2         N            n        1
        n                             n
                 n(n    1)                n
    a (a    1)                    a
                 N (N       1)            N

2           2    n a (N          a) (N             n)
    2                       2
                        N        (N       1)

Más contenido relacionado

La actualidad más candente

Regression analysis.
Regression analysis.Regression analysis.
Regression analysis.sonia gupta
 
Calculation of arithmetic mean
Calculation of arithmetic meanCalculation of arithmetic mean
Calculation of arithmetic meanSajina Nair
 
One Sample T Test
One Sample T TestOne Sample T Test
One Sample T Testshoffma5
 
Spearman’s Rank Correlation Coefficient
Spearman’s Rank Correlation CoefficientSpearman’s Rank Correlation Coefficient
Spearman’s Rank Correlation CoefficientSharlaine Ruth
 
Wilcoxon Rank-Sum Test
Wilcoxon Rank-Sum TestWilcoxon Rank-Sum Test
Wilcoxon Rank-Sum TestSahil Jain
 
Axiom of Choice
Axiom of Choice Axiom of Choice
Axiom of Choice gizemk
 
Measures of Central Tendency
Measures of Central TendencyMeasures of Central Tendency
Measures of Central TendencyRejvi Ahmed
 
wilcoxon signed rank test
wilcoxon signed rank testwilcoxon signed rank test
wilcoxon signed rank testraj shekar
 
Wilcoxon signed rank test
Wilcoxon signed rank testWilcoxon signed rank test
Wilcoxon signed rank testBiswash Sapkota
 
Testing of hypotheses
Testing of hypothesesTesting of hypotheses
Testing of hypothesesRajThakuri
 
Introduction to probability distributions-Statistics and probability analysis
Introduction to probability distributions-Statistics and probability analysis Introduction to probability distributions-Statistics and probability analysis
Introduction to probability distributions-Statistics and probability analysis Vijay Hemmadi
 
Poisson distribution
Poisson distributionPoisson distribution
Poisson distributionAnindya Jana
 
Geometric distributions
Geometric distributionsGeometric distributions
Geometric distributionsUlster BOCES
 
Probability distribution
Probability distributionProbability distribution
Probability distributionRanjan Kumar
 
Discrete random variable.
Discrete random variable.Discrete random variable.
Discrete random variable.Shakeel Nouman
 
CMSC 56 | Lecture 6: Sets & Set Operations
CMSC 56 | Lecture 6: Sets & Set OperationsCMSC 56 | Lecture 6: Sets & Set Operations
CMSC 56 | Lecture 6: Sets & Set Operationsallyn joy calcaben
 

La actualidad más candente (20)

Regression analysis.
Regression analysis.Regression analysis.
Regression analysis.
 
Calculation of arithmetic mean
Calculation of arithmetic meanCalculation of arithmetic mean
Calculation of arithmetic mean
 
One Sample T Test
One Sample T TestOne Sample T Test
One Sample T Test
 
Spearman’s Rank Correlation Coefficient
Spearman’s Rank Correlation CoefficientSpearman’s Rank Correlation Coefficient
Spearman’s Rank Correlation Coefficient
 
Binomial distribution
Binomial distributionBinomial distribution
Binomial distribution
 
Wilcoxon Rank-Sum Test
Wilcoxon Rank-Sum TestWilcoxon Rank-Sum Test
Wilcoxon Rank-Sum Test
 
Normal as Approximation to Binomial
Normal as Approximation to Binomial  Normal as Approximation to Binomial
Normal as Approximation to Binomial
 
Binomial distribution
Binomial distributionBinomial distribution
Binomial distribution
 
Axiom of Choice
Axiom of Choice Axiom of Choice
Axiom of Choice
 
Measures of Central Tendency
Measures of Central TendencyMeasures of Central Tendency
Measures of Central Tendency
 
Probability Distribution
Probability DistributionProbability Distribution
Probability Distribution
 
wilcoxon signed rank test
wilcoxon signed rank testwilcoxon signed rank test
wilcoxon signed rank test
 
Wilcoxon signed rank test
Wilcoxon signed rank testWilcoxon signed rank test
Wilcoxon signed rank test
 
Testing of hypotheses
Testing of hypothesesTesting of hypotheses
Testing of hypotheses
 
Introduction to probability distributions-Statistics and probability analysis
Introduction to probability distributions-Statistics and probability analysis Introduction to probability distributions-Statistics and probability analysis
Introduction to probability distributions-Statistics and probability analysis
 
Poisson distribution
Poisson distributionPoisson distribution
Poisson distribution
 
Geometric distributions
Geometric distributionsGeometric distributions
Geometric distributions
 
Probability distribution
Probability distributionProbability distribution
Probability distribution
 
Discrete random variable.
Discrete random variable.Discrete random variable.
Discrete random variable.
 
CMSC 56 | Lecture 6: Sets & Set Operations
CMSC 56 | Lecture 6: Sets & Set OperationsCMSC 56 | Lecture 6: Sets & Set Operations
CMSC 56 | Lecture 6: Sets & Set Operations
 

Destacado

Poisson Distribution, Poisson Process & Geometric Distribution
Poisson Distribution, Poisson Process & Geometric DistributionPoisson Distribution, Poisson Process & Geometric Distribution
Poisson Distribution, Poisson Process & Geometric DistributionDataminingTools Inc
 
Hypergeometric Distribution
Hypergeometric DistributionHypergeometric Distribution
Hypergeometric Distributionmathscontent
 
Poisson distribution
Poisson distributionPoisson distribution
Poisson distributionAntiqNyke
 
The Poisson Distribution
The  Poisson DistributionThe  Poisson Distribution
The Poisson DistributionMax Chipulu
 
Subjective probability
Subjective probabilitySubjective probability
Subjective probabilityTanuj Gupta
 
Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)
Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)
Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)Taro Tezuka
 
Risk In Our Society
Risk In Our SocietyRisk In Our Society
Risk In Our Societydaryl10
 
Binomial probability distribution
Binomial probability distributionBinomial probability distribution
Binomial probability distributionMuhammad Yahaya
 
Set Theory
Set TheorySet Theory
Set Theoryitutor
 
Discrete Probability Distributions
Discrete Probability DistributionsDiscrete Probability Distributions
Discrete Probability Distributionsmandalina landy
 
Discrete and continuous probability distributions ppt @ bec doms
Discrete and continuous probability distributions ppt @ bec domsDiscrete and continuous probability distributions ppt @ bec doms
Discrete and continuous probability distributions ppt @ bec domsBabasab Patil
 
RapidMiner: Setting Up A Process
RapidMiner: Setting Up A ProcessRapidMiner: Setting Up A Process
RapidMiner: Setting Up A ProcessDataminingTools Inc
 
Oratoria E RetóRica Latinas
Oratoria E RetóRica LatinasOratoria E RetóRica Latinas
Oratoria E RetóRica Latinaslara
 

Destacado (20)

Poisson Distribution, Poisson Process & Geometric Distribution
Poisson Distribution, Poisson Process & Geometric DistributionPoisson Distribution, Poisson Process & Geometric Distribution
Poisson Distribution, Poisson Process & Geometric Distribution
 
Hypergeometric Distribution
Hypergeometric DistributionHypergeometric Distribution
Hypergeometric Distribution
 
Poisson distribution
Poisson distributionPoisson distribution
Poisson distribution
 
The Poisson Distribution
The  Poisson DistributionThe  Poisson Distribution
The Poisson Distribution
 
Subjective probability
Subjective probabilitySubjective probability
Subjective probability
 
Probability Review
Probability ReviewProbability Review
Probability Review
 
Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)
Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)
Bernoulli distribution and multinomial distribution (ベルヌーイ分布と多項分布)
 
Risk In Our Society
Risk In Our SocietyRisk In Our Society
Risk In Our Society
 
Probability distributions & expected values
Probability distributions & expected valuesProbability distributions & expected values
Probability distributions & expected values
 
Binomial probability distribution
Binomial probability distributionBinomial probability distribution
Binomial probability distribution
 
Set Theory
Set TheorySet Theory
Set Theory
 
Discrete Probability Distributions
Discrete Probability DistributionsDiscrete Probability Distributions
Discrete Probability Distributions
 
Discrete and continuous probability distributions ppt @ bec doms
Discrete and continuous probability distributions ppt @ bec domsDiscrete and continuous probability distributions ppt @ bec doms
Discrete and continuous probability distributions ppt @ bec doms
 
Simulation
SimulationSimulation
Simulation
 
R Environment
R EnvironmentR Environment
R Environment
 
Data
DataData
Data
 
Webmining Overview
Webmining OverviewWebmining Overview
Webmining Overview
 
RapidMiner: Setting Up A Process
RapidMiner: Setting Up A ProcessRapidMiner: Setting Up A Process
RapidMiner: Setting Up A Process
 
Oratoria E RetóRica Latinas
Oratoria E RetóRica LatinasOratoria E RetóRica Latinas
Oratoria E RetóRica Latinas
 
Norihicodanch
NorihicodanchNorihicodanch
Norihicodanch
 

Similar a Hypergeometric Distribution

Sampling Distributions
Sampling DistributionsSampling Distributions
Sampling Distributionsmathscontent
 
Basics of probability in statistical simulation and stochastic programming
Basics of probability in statistical simulation and stochastic programmingBasics of probability in statistical simulation and stochastic programming
Basics of probability in statistical simulation and stochastic programmingSSA KPI
 
Correlation of dts by er. sanyam s. saini me (reg) 2012-14
Correlation of dts by  er. sanyam s. saini  me  (reg) 2012-14Correlation of dts by  er. sanyam s. saini  me  (reg) 2012-14
Correlation of dts by er. sanyam s. saini me (reg) 2012-14Sanyam Singh
 
Model For Estimating Diversity Presentation
Model For Estimating Diversity PresentationModel For Estimating Diversity Presentation
Model For Estimating Diversity PresentationDavid Torres
 
Interpolation with unequal interval
Interpolation with unequal intervalInterpolation with unequal interval
Interpolation with unequal intervalDr. Nirav Vyas
 
Basic statistics
Basic statisticsBasic statistics
Basic statisticsdhwhite
 
Dsp U Lec04 Discrete Time Signals & Systems
Dsp U   Lec04 Discrete Time Signals & SystemsDsp U   Lec04 Discrete Time Signals & Systems
Dsp U Lec04 Discrete Time Signals & Systemstaha25
 
Formulas statistics
Formulas statisticsFormulas statistics
Formulas statisticsPrashi_Jain
 
Module 2 Lesson 2 Notes
Module 2 Lesson 2 NotesModule 2 Lesson 2 Notes
Module 2 Lesson 2 Notestoni dimella
 
WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR SPARSE IMPULSE RESPONSE IDENTIFI...
WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR  SPARSE IMPULSE RESPONSE IDENTIFI...WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR  SPARSE IMPULSE RESPONSE IDENTIFI...
WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR SPARSE IMPULSE RESPONSE IDENTIFI...bermudez_jcm
 
Ode powerpoint presentation1
Ode powerpoint presentation1Ode powerpoint presentation1
Ode powerpoint presentation1Pokkarn Narkhede
 
02 2d systems matrix
02 2d systems matrix02 2d systems matrix
02 2d systems matrixRumah Belajar
 

Similar a Hypergeometric Distribution (20)

Sampling Distributions
Sampling DistributionsSampling Distributions
Sampling Distributions
 
Sampling Distributions
Sampling DistributionsSampling Distributions
Sampling Distributions
 
Basics of probability in statistical simulation and stochastic programming
Basics of probability in statistical simulation and stochastic programmingBasics of probability in statistical simulation and stochastic programming
Basics of probability in statistical simulation and stochastic programming
 
Notes 6-2
Notes 6-2Notes 6-2
Notes 6-2
 
Correlation of dts by er. sanyam s. saini me (reg) 2012-14
Correlation of dts by  er. sanyam s. saini  me  (reg) 2012-14Correlation of dts by  er. sanyam s. saini  me  (reg) 2012-14
Correlation of dts by er. sanyam s. saini me (reg) 2012-14
 
Models
ModelsModels
Models
 
Model For Estimating Diversity Presentation
Model For Estimating Diversity PresentationModel For Estimating Diversity Presentation
Model For Estimating Diversity Presentation
 
Session 2
Session 2Session 2
Session 2
 
Interpolation with unequal interval
Interpolation with unequal intervalInterpolation with unequal interval
Interpolation with unequal interval
 
Mcgill3
Mcgill3Mcgill3
Mcgill3
 
Basic statistics
Basic statisticsBasic statistics
Basic statistics
 
Dsp U Lec04 Discrete Time Signals & Systems
Dsp U   Lec04 Discrete Time Signals & SystemsDsp U   Lec04 Discrete Time Signals & Systems
Dsp U Lec04 Discrete Time Signals & Systems
 
Formulas statistics
Formulas statisticsFormulas statistics
Formulas statistics
 
Module 2 Lesson 2 Notes
Module 2 Lesson 2 NotesModule 2 Lesson 2 Notes
Module 2 Lesson 2 Notes
 
WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR SPARSE IMPULSE RESPONSE IDENTIFI...
WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR  SPARSE IMPULSE RESPONSE IDENTIFI...WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR  SPARSE IMPULSE RESPONSE IDENTIFI...
WAVELET-PACKET-BASED ADAPTIVE ALGORITHM FOR SPARSE IMPULSE RESPONSE IDENTIFI...
 
9-8 Notes
9-8 Notes9-8 Notes
9-8 Notes
 
Fourier series
Fourier seriesFourier series
Fourier series
 
Fourier series
Fourier seriesFourier series
Fourier series
 
Ode powerpoint presentation1
Ode powerpoint presentation1Ode powerpoint presentation1
Ode powerpoint presentation1
 
02 2d systems matrix
02 2d systems matrix02 2d systems matrix
02 2d systems matrix
 

Más de DataminingTools Inc

AI: Introduction to artificial intelligence
AI: Introduction to artificial intelligenceAI: Introduction to artificial intelligence
AI: Introduction to artificial intelligenceDataminingTools Inc
 
Data Mining: Text and web mining
Data Mining: Text and web miningData Mining: Text and web mining
Data Mining: Text and web miningDataminingTools Inc
 
Data Mining: Mining stream time series and sequence data
Data Mining: Mining stream time series and sequence dataData Mining: Mining stream time series and sequence data
Data Mining: Mining stream time series and sequence dataDataminingTools Inc
 
Data Mining: Mining ,associations, and correlations
Data Mining: Mining ,associations, and correlationsData Mining: Mining ,associations, and correlations
Data Mining: Mining ,associations, and correlationsDataminingTools Inc
 
Data Mining: Graph mining and social network analysis
Data Mining: Graph mining and social network analysisData Mining: Graph mining and social network analysis
Data Mining: Graph mining and social network analysisDataminingTools Inc
 
Data warehouse and olap technology
Data warehouse and olap technologyData warehouse and olap technology
Data warehouse and olap technologyDataminingTools Inc
 

Más de DataminingTools Inc (20)

Terminology Machine Learning
Terminology Machine LearningTerminology Machine Learning
Terminology Machine Learning
 
Techniques Machine Learning
Techniques Machine LearningTechniques Machine Learning
Techniques Machine Learning
 
Machine learning Introduction
Machine learning IntroductionMachine learning Introduction
Machine learning Introduction
 
Areas of machine leanring
Areas of machine leanringAreas of machine leanring
Areas of machine leanring
 
AI: Planning and AI
AI: Planning and AIAI: Planning and AI
AI: Planning and AI
 
AI: Logic in AI 2
AI: Logic in AI 2AI: Logic in AI 2
AI: Logic in AI 2
 
AI: Logic in AI
AI: Logic in AIAI: Logic in AI
AI: Logic in AI
 
AI: Learning in AI 2
AI: Learning in AI 2AI: Learning in AI 2
AI: Learning in AI 2
 
AI: Learning in AI
AI: Learning in AI AI: Learning in AI
AI: Learning in AI
 
AI: Introduction to artificial intelligence
AI: Introduction to artificial intelligenceAI: Introduction to artificial intelligence
AI: Introduction to artificial intelligence
 
AI: Belief Networks
AI: Belief NetworksAI: Belief Networks
AI: Belief Networks
 
AI: AI & Searching
AI: AI & SearchingAI: AI & Searching
AI: AI & Searching
 
AI: AI & Problem Solving
AI: AI & Problem SolvingAI: AI & Problem Solving
AI: AI & Problem Solving
 
Data Mining: Text and web mining
Data Mining: Text and web miningData Mining: Text and web mining
Data Mining: Text and web mining
 
Data Mining: Outlier analysis
Data Mining: Outlier analysisData Mining: Outlier analysis
Data Mining: Outlier analysis
 
Data Mining: Mining stream time series and sequence data
Data Mining: Mining stream time series and sequence dataData Mining: Mining stream time series and sequence data
Data Mining: Mining stream time series and sequence data
 
Data Mining: Mining ,associations, and correlations
Data Mining: Mining ,associations, and correlationsData Mining: Mining ,associations, and correlations
Data Mining: Mining ,associations, and correlations
 
Data Mining: Graph mining and social network analysis
Data Mining: Graph mining and social network analysisData Mining: Graph mining and social network analysis
Data Mining: Graph mining and social network analysis
 
Data warehouse and olap technology
Data warehouse and olap technologyData warehouse and olap technology
Data warehouse and olap technology
 
Data Mining: Data processing
Data Mining: Data processingData Mining: Data processing
Data Mining: Data processing
 

Último

Oppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmOppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmStan Meyer
 
Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Seán Kennedy
 
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...DhatriParmar
 
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptxDecoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptxDhatriParmar
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQuiz Club NITW
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfPatidar M
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxlancelewisportillo
 
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptxDhatriParmar
 
Q-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITWQ-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITWQuiz Club NITW
 
Congestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationCongestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationdeepaannamalai16
 
ROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxVanesaIglesias10
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptxmary850239
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxkarenfajardo43
 
MS4 level being good citizen -imperative- (1) (1).pdf
MS4 level   being good citizen -imperative- (1) (1).pdfMS4 level   being good citizen -imperative- (1) (1).pdf
MS4 level being good citizen -imperative- (1) (1).pdfMr Bounab Samir
 
Scientific Writing :Research Discourse
Scientific  Writing :Research  DiscourseScientific  Writing :Research  Discourse
Scientific Writing :Research DiscourseAnita GoswamiGiri
 
ClimART Action | eTwinning Project
ClimART Action    |    eTwinning ProjectClimART Action    |    eTwinning Project
ClimART Action | eTwinning Projectjordimapav
 
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfGrade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfJemuel Francisco
 
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxMan or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxDhatriParmar
 
Reading and Writing Skills 11 quarter 4 melc 1
Reading and Writing Skills 11 quarter 4 melc 1Reading and Writing Skills 11 quarter 4 melc 1
Reading and Writing Skills 11 quarter 4 melc 1GloryAnnCastre1
 

Último (20)

Oppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and FilmOppenheimer Film Discussion for Philosophy and Film
Oppenheimer Film Discussion for Philosophy and Film
 
Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...
 
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
Blowin' in the Wind of Caste_ Bob Dylan's Song as a Catalyst for Social Justi...
 
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptxDecoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdf
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
 
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
Unraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptxUnraveling Hypertext_ Analyzing  Postmodern Elements in  Literature.pptx
Unraveling Hypertext_ Analyzing Postmodern Elements in Literature.pptx
 
Q-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITWQ-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITW
 
Congestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentationCongestive Cardiac Failure..presentation
Congestive Cardiac Failure..presentation
 
ROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptxROLES IN A STAGE PRODUCTION in arts.pptx
ROLES IN A STAGE PRODUCTION in arts.pptx
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
 
MS4 level being good citizen -imperative- (1) (1).pdf
MS4 level   being good citizen -imperative- (1) (1).pdfMS4 level   being good citizen -imperative- (1) (1).pdf
MS4 level being good citizen -imperative- (1) (1).pdf
 
Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"
 
Scientific Writing :Research Discourse
Scientific  Writing :Research  DiscourseScientific  Writing :Research  Discourse
Scientific Writing :Research Discourse
 
ClimART Action | eTwinning Project
ClimART Action    |    eTwinning ProjectClimART Action    |    eTwinning Project
ClimART Action | eTwinning Project
 
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdfGrade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
Grade 9 Quarter 4 Dll Grade 9 Quarter 4 DLL.pdf
 
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxMan or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
 
Reading and Writing Skills 11 quarter 4 melc 1
Reading and Writing Skills 11 quarter 4 melc 1Reading and Writing Skills 11 quarter 4 melc 1
Reading and Writing Skills 11 quarter 4 melc 1
 

Hypergeometric Distribution

  • 1. 1.11 Hypergeometric Distribution
  • 2. Hypergeometric Distribution Suppose we are interested in the number of defectives in a sample of size n units drawn from a lot containing N units, of which a are defective. Each object has same chance of being selected, then the probability that the first drawing will yield a defective unit = a/N but for the second drawing, probability a 1 if first unit is defective, N 1 a if first unit is not defective. N 1
  • 3. Hypergeometric Distribution • The trials here are not independent and hence the fourth assumption underlying the binomial distribution is not fulfilled and therefore, we cannot apply binomial distribution here. • Binomial distribution would have been applied if we do sampling with replacement, viz., if each unit selected from the sample would have been replaced before the next one is drawn.
  • 4. Hypergeometric Distribution Sampling without replacement Number of ways in which x successes (defectives) can be chosen is a x Number of ways in which n – x failures (non defectives) be chosen is N a n x Hence number of ways x successes and n – x failures can be chosen is a N a x n x
  • 5. Hypergeometric Distribution Number of ways n objects can be chosen from N objects is N If all the possibilities are equally likely then for sampling n without replacement the probability of getting “x successes in n trials” is given by a N a x n x h ( x; n, a , N ) for x 0 , 1,...., n N n where x a, n x N a.
  • 6. Hypergeometric Distribution • The solution of the problem of sampling without replacement gave birth to the above distribution which we termed as hypergeometric distribution. • The parameters of hypergeometric distribution are the sample size n, the lot size (or population size) N, and the number of “successes” in the lot a. • When n is small compared to N, the composition of the lot is not seriously affected by drawing the sample and the binomial distribution with parameters n and p = a/N will yield a good approximation.
  • 7. Hypergeometric Distribution The difference between the two values is only 0.010. In general it can be shown that h( x; n, a, N) b( x; n, p) with p = (a/N) when N ∞. A good rule of thumb is to use the binomial distribution as an approximation to the hyper-geometric distribution if n/N ≤0.05
  • 8. The Mean and the Variance of a Probability Distribution Mean of hypergeometric distribution a n sample size n N population size N a number of success Proof: a N a n n x n x x .h ( x ; n , a , N ) x. N x 0 x 1 n
  • 9. The Mean and the Variance of a Probability Distribution a a! a (a 1)! a a 1 x x! ( a x )! x (x 1)! ( a x )! x x 1 a 1 N a n n a 1 N a x 1 n x a a. N N x 1 n x x 1 x 1 n n
  • 10. The Mean and the Variance of a Probability Distribution Put x – 1= y k n 1 n 1 a a 1 N a m a 1 N y 0 y n 1 y r y n s N a k m s m s Use the identity r k r k r 0
  • 11. The Mean and the Variance of a Probability Distribution We get a N 1 N n 1 n a n N
  • 12. Variance of hypergeometric distribution 2 n a (N a) (N n) 2 N (N 1) Proof: a N a n n 2 2 x n x 2 x .h ( x ; n , a , N ) x . x 0 N x 1 n
  • 13. a 1 N a n x 1 n x 2 a x. N x 1 n n a 1 N a a (x 1 1). N x 1 n x x 1 n
  • 14. n a 2 N a a (a 1) 2 . N x 2 n x x 2 n n a 1 N a a N x 1 n x x 1 n Put x – 2 = y in 1st summation and x – 1 = z in 2nd one
  • 15. n 2 a 2 N a a (a 1) 2 . N y n 2 y y 0 n n 1 a 1 N a a N z n 1 z z 0 n k m s m s Use the identity r k r k r 0 k n 2, m a 2 k n 1, m a 1 r y, s N a r z, s N a
  • 16. a (a 1) N 2 a N 1 2 N n 2 N n 1 n n n(n 1) n a (a 1) a N (N 1) N 2 2 n a (N a) (N n) 2 2 N (N 1)