NONPARAMETRIC TESTS FOR THE SIMPLE TREE ALTERNATIVE FOR SCALE AND LOCATION TESTING AND FOR THE MIXED DESIGN FOR PORPORTOINS TESTING ARE PROPOSED
Date
2024-06
Authors
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Publisher
North Dakota State University
Abstract
To test for changes in location and/or scale, two nonparametric tests are proposed for the
simple tree alternative. The Wald-Wolfowitz runs test, and a modified Ansari-Bradley test are
used in developing these tests. The proposed tests are compared in a study to see how well they
maintain their significance levels. The proposed tests powers are also estimated for three and
four populations under a variety of conditions. Three different types of variable parameters
vectors are considered with each vector containing a location and a scale parameter. For
symmetric distributions, the Proposed First Test is best for location changes, while the Proposed
Second Test is best for scale changes and combined changes. However, for non-symmetric
distributions, the Proposed Second Test is best for location changes, while the Proposed First
Test is best for scale changes and combined changes.
In studies involving proportions, researchers often encounter scenarios where data is
collected through a combination of paired samples and independent samples, constituting a
mixed design. Existing statistical tests like McNemar's test and the two-sample proportion test
are limited in their ability to analyze such mixed data simultaneously. This study proposes five
new nonparametric test statistics (𝑇1 , 𝑇2 , 𝑇3 , 𝑇4 ,and 𝑇5), that integrate McNemar's test for
paired data with the two-sample proportion test, allowing for a unified analysis under the mixed
design framework. When paired and independent sample sizes were equal, the 𝑇1 test, which
assigned equal weights to the standardized McNemar's and two-sample proportion tests,
exhibited the highest estimated powers, particularly when using a test for a mixed design. As
sample size imbalances increased between the paired and independent samples, different tests
became more powerful. Specifically, when independent samples were at least two times greater
than paired samples, the 𝑇2 test (doubling the weight of the standardized two-sample proportion test) was favored. Conversely, when paired samples were substantially larger, the 𝑇3 test
(doubling the weight of the standardized McNemar's test) demonstrated superior powers.
Description
Keywords
Nonparametric tests, Changes in location, Changes in scale, Significance levels, Test powers, Symmetric distributions, Non-symmetric distributions, Mixed designs, Paired samples, Independent samples, Test statistics