Open Access
structSSI: Simultaneous and Selective Inference for Grouped or Hierarchically Structured Data
Author(s) -
Kris Sankaran,
Susan Holmes
Publication year - 2014
Publication title -
journal of statistical software
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 7.636
H-Index - 145
ISSN - 1548-7660
DOI - 10.18637/jss.v059.i13
Subject(s) - false discovery rate , interpretability , multiple comparisons problem , inference , computer science , dependency (uml) , r package , data mining , statistical inference , statistical hypothesis testing , machine learning , artificial intelligence , statistics , mathematics , biology , biochemistry , computational science , gene
The package structSSI provides an accessible implementation of two recently developed simultaneous and selective inference techniques: the group Benjamini-Hochberg and hierarchical false discovery rate procedures. Unlike many multiple testing schemes, these methods specifically incorporate existing information about the grouped or hierarchical dependence between hypotheses under consideration while controlling the false discovery rate. Doing so increases statistical power and interpretability. Furthermore, these procedures provide novel approaches to the central problem of encoding complex dependency between hypotheses. We briefly describe the group Benjamini-Hochberg and hierarchical false discovery rate procedures and then illustrate them using two examples, one a measure of ecological microbial abundances and the other a global temperature time series. For both procedures, we detail the steps associated with the analysis of these particular data sets, including establishing the dependence structures, performing the test, and interpreting the results. These steps are encapsulated by functions, and we explain their applicability to general data sets.