Fourier-Based Testing for Families of Distributions
Cl\'ement L. Canonne, Ilias Diakonikolas, Alistair Stewart

TL;DR
This paper introduces a novel Fourier-based testing framework for distribution families with approximate spectral sparsity, achieving near-optimal sample and computational efficiency for several fundamental distribution classes.
Contribution
It presents the first Fourier transform application in distribution testing, providing efficient, sample-optimal testers for SIIRVs, PMDs, and Discrete Log-Concave Distributions.
Findings
First non-trivial testers for SIIRVs and PMDs
Improved sample and time complexity for Discrete Log-Concave Distributions
General framework applicable to families with spectral sparsity
Abstract
We study the general problem of testing whether an unknown distribution belongs to a specified family of distributions. More specifically, given a distribution family and sample access to an unknown discrete distribution , we want to distinguish (with high probability) between the case that and the case that is -far, in total variation distance, from every distribution in . This is the prototypical hypothesis testing problem that has received significant attention in statistics and, more recently, in theoretical computer science. The sample complexity of this general inference task depends on the underlying family . The gold standard in distribution property testing is to design sample-optimal and computationally efficient algorithms for this task. The main contribution of this work…
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Taxonomy
TopicsMachine Learning and Algorithms · Algorithms and Data Compression · Complexity and Algorithms in Graphs
