Student[Statistics]
ChiSquareIndependenceTest
apply the chi-square test for independence in a matrix
Calling Sequence
Parameters
Description
Examples
References
Compatibility
ChiSquareIndependenceTest(X, level_option)
X
-
Matrix of categorized data
level_option
(optional) equation of the form level=float.
The ChiSquareIndependenceTest function computes the chi-square test for independence in a Matrix. This tests whether two factors in a population are independent of one another. The rows represent the levels of one factor; the columns represent the levels of another. The entries in the Matrix are interpreted as counts of observations with the given combination of levels.
The first parameter X is a Matrix of categorized data samples.
level=float
This option is used to specify the level of analysis (minimum criteria for the observed data to be considered well-fit to the expected data). By default, this value is 0.05.
with⁡StudentStatistics:
Specify the matrices of categorized data values.
X≔Matrix⁡32,12,14,22,6,9:
Y≔Matrix⁡2,4,4,9,7,12:
Perform the independence test on the first sample.
ChiSquareIndependenceTest⁡X,level=0.05
Chi-Square Test for Independence -------------------------------- Null Hypothesis: Two attributes within a population are independent of one another Alt. Hypothesis: Two attributes within a population are not independent of one another Dimensions: 3 Total Elements: 95 Distribution: ChiSquare(2) Computed Statistic: 10.71219801 Computed p-value: .00471928013704082 Critical Values: 5.99146454710798 Result: [Rejected] This statistical test provides evidence that the null hypothesis is false.
hypothesis=false,criticalvalue=5.99146454710798,distribution=ChiSquare⁡2,pvalue=0.00471928013704082,statistic=10.71219801
Perform the independence test on the second sample.
ChiSquareIndependenceTest⁡Y,level=0.05
Chi-Square Test for Independence -------------------------------- Null Hypothesis: Two attributes within a population are independent of one another Alt. Hypothesis: Two attributes within a population are not independent of one another Dimensions: 3 Total Elements: 38 Distribution: ChiSquare(2) Computed Statistic: .1289151874 Computed p-value: .937575872647938 Critical Values: 5.99146454710798 Result: [Accepted] This statistical test does not provide enough evidence to conclude that the null hypothesis is false.
hypothesis=true,criticalvalue=5.99146454710798,distribution=ChiSquare⁡2,pvalue=0.937575872647938,statistic=0.1289151874
Kanju, Gopal K. 100 Statistical Tests. London: SAGE Publications Ltd., 1994.
Sheskin, David J. Handbook of Parametric and Nonparametric Statistical Procedures. London: CRC Press, 1997.
The Student[Statistics][ChiSquareIndependenceTest] command was introduced in Maple 18.
For more information on Maple 18 changes, see Updates in Maple 18.
See Also
Statistics[ChiSquareIndependenceTest]
Student
Student/Statistics/ChiSquareIndependenceTest/overview
Student[Statistics][HypothesisTest]
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