Tytuł pozycji:
Using Permutation Tests in Multiple Correlation Investigation
An indication of correlation between dependent variable and predictors is a crucial
point in building statistical regression model. The test of Pearson correlation coefficient – with
relatively good power – needs to fulfill the assumption about normal distribution. In other cases
only non-parametric tests can be used. This article presents a possibility and advantages of permutation
tests with the discussion about proposed test statistics. The power of proposed tests was
estimated on the basis of Monte Carlo experiments. The investigations were carried out for real
data – a sample of refinery process parameters, where the indication of changes in correlation,
even for sample with small size is very important. It creates an opportunity to react to changes and
update statistical models quickly and keep acceptable quality of prediction