English

Equitability, interval estimation, and statistical power

Statistics Theory 2015-05-14 v2 Machine Learning Quantitative Methods Methodology Machine Learning Statistics Theory

Abstract

For analysis of a high-dimensional dataset, a common approach is to test a null hypothesis of statistical independence on all variable pairs using a non-parametric measure of dependence. However, because this approach attempts to identify any non-trivial relationship no matter how weak, it often identifies too many relationships to be useful. What is needed is a way of identifying a smaller set of relationships that merit detailed further analysis. Here we formally present and characterize equitability, a property of measures of dependence that aims to overcome this challenge. Notionally, an equitable statistic is a statistic that, given some measure of noise, assigns similar scores to equally noisy relationships of different types [Reshef et al. 2011]. We begin by formalizing this idea via a new object called the interpretable interval, which functions as an interval estimate of the amount of noise in a relationship of unknown type. We define an equitable statistic as one with small interpretable intervals. We then draw on the equivalence of interval estimation and hypothesis testing to show that under moderate assumptions an equitable statistic is one that yields well powered tests for distinguishing not only between trivial and non-trivial relationships of all kinds but also between non-trivial relationships of different strengths. This means that equitability allows us to specify a threshold relationship strength x0x_0 and to search for relationships of all kinds with strength greater than x0x_0. Thus, equitability can be thought of as a strengthening of power against independence that enables fruitful analysis of data sets with a small number of strong, interesting relationships and a large number of weaker ones. We conclude with a demonstration of how our two equivalent characterizations of equitability can be used to evaluate the equitability of a statistic in practice.

Keywords

Cite

@article{arxiv.1505.02212,
  title  = {Equitability, interval estimation, and statistical power},
  author = {Yakir A. Reshef and David N. Reshef and Pardis C. Sabeti and Michael M. Mitzenmacher},
  journal= {arXiv preprint arXiv:1505.02212},
  year   = {2015}
}

Comments

Yakir A. Reshef and David N. Reshef are co-first authors, Pardis C. Sabeti and Michael M. Mitzenmacher are co-last authors. This paper, together with arXiv:1505.02212, subsumes arXiv:1408.4908

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