Overview

DDST (ddst) stands for Data Driven Smooth Test (data driven smooth test). The test characterizes data-dependent choice of the number of components in a smooth test statistic.

In this package you will find two groups of selected data driven smooth tests: goodness-of-fit tests and nonparametric tests for comparing distributions.

Nonparametric Data Driven Smooth Tests for Comparing Distributions

A starting point of the constructions were the papers: Data driven rank test for two-sample problem by Janic-Wróblewska and Ledwina (2000) and Towards data driven selection of a penalty function for data driven Neyman tests by Inglot and Ledwina (2006).

A more detailed overview is contained in Data Driven Smooth Tests - Introductory Material. Full details on the above procedures can be found in the related papers.