Litcius/Paper detail

Small sample sizes: A big data problem in high-dimensional data analysis

Frank Konietschke, Karima Schwab, Markus Pauly

2020Statistical Methods in Medical Research84 citationsDOIOpen Access PDF

Abstract

In many experiments and especially in translational and preclinical research, sample sizes are (very) small. In addition, data designs are often high dimensional, i.e. more dependent than independent replications of the trial are observed. The present paper discusses the applicability of max t-test-type statistics (multiple contrast tests) in high-dimensional designs (repeated measures or multivariate) with small sample sizes. A randomization-based approach is developed to approximate the distribution of the maximum statistic. Extensive simulation studies confirm that the new method is particularly suitable for analyzing data sets with small sample sizes. A real data set illustrates the application of the methods.

Topics & Concepts

Sample size determinationStatisticsComputer scienceMultivariate statisticsStatisticType I and type II errorsContrast (vision)Data setSample (material)Test statisticData miningStatistical hypothesis testingMathematicsArtificial intelligenceChromatographyChemistryStatistical Methods in Clinical TrialsStatistical Methods and InferenceGene expression and cancer classification