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Abstract
There are some common goodness of fit tests that have been studied by researchers over
the years such as the Shapiro-Wilk test, Anderson Darling test, Chi-square test and Bickel-
Rosenblatt test. Researchers often use the goodness of fit test to decide if an underlying
population distribution differs from a specific distribution. The main purpose of this thesis
is to compare the power of some common goodness of fit tests, where a comparison of
the proposed goodness of tests is conducted using the simulation method of sample data
generated from some common distributions; R software was used to generate data by applying
Monte Carlo simulation. The power of the tests generally affected by some factors like sample
size and the type of distribution being tested in, however, the critical values are used for power
comparisons that are obtained based on 10000 simulated samples from different distributions.
The power of each test was then obtained by comparing the respective critical values with
the goodness of fit test statistics. The main results based on the simulation study indicate
that the Anderson Darling test has the highest power in the case of testing symmetric
distributions when the data is generated from parametric alternative distributions, while
the χ2 test has the lowest power. Furthermore, the Bickel-Rosenblatt test has the highest
power in the case of testing symmetric distributions and the Anderson Darling test has the
highest power under other non-parametric alternative distributions. This study also shows
that when the Epanechnikov kernel is employed, the Bickel- Rosenblatt test has the highest
power compared to the uniform kernel. |
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