A test of independence in two-way contingency tables based on maximal correlation
Abstract (Summary)
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Gábor Székely, Advisor
Maximal correlation has several desirable properties as a measure of dependence, including
the fact that it vanishes if and only if the variables are independent. Except for a few
special cases, it is hard to evaluate maximal correlation explicitly. In this dissertation, we
focus on two-dimensional contingency tables and discuss a procedure for estimating maximal
correlation, which we use for constructing a test of independence. For large samples,
we present the asymptotic null distribution of the test statistic. For small samples or tables
with sparseness, we use exact inferential methods, where we employ maximal correlation as
the ordering criterion.
We compare the maximal correlation test with other tests of independence by Monte
Carlo simulations. When the underlying continuous variables are dependent but uncorrelated,
we point out some cases for which the new test is more powerful.
Bibliographical Information:
Advisor:
School:Bowling Green State University
School Location:USA - Ohio
Source Type:Master's Thesis
Keywords:autonomy psychology
ISBN:
Date of Publication: