Sparse Choice Models
Vivek F. Farias, Srikanth Jagabathula, Devavrat Shah

TL;DR
This paper introduces a non-parametric, sparse approach to learning choice models as distributions over permutations from noisy marginal data, demonstrating theoretical guarantees and empirical effectiveness.
Contribution
It establishes the existence of sparse approximations for any choice model and provides an efficient method to find such models under certain conditions.
Findings
Sparse models can approximate any choice model with small support.
Efficient algorithms work under 'signature' conditions.
Empirical results reveal structural properties of choice models.
Abstract
Choice models, which capture popular preferences over objects of interest, play a key role in making decisions whose eventual outcome is impacted by human choice behavior. In most scenarios, the choice model, which can effectively be viewed as a distribution over permutations, must be learned from observed data. The observed data, in turn, may frequently be viewed as (partial, noisy) information about marginals of this distribution over permutations. As such, the search for an appropriate choice model boils down to learning a distribution over permutations that is (near-)consistent with observed information about this distribution. In this work, we pursue a non-parametric approach which seeks to learn a choice model (i.e. a distribution over permutations) with {\em sparsest} possible support, and consistent with observed data. We assume that the data observed consists of noisy…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Causal Inference Techniques · Sparse and Compressive Sensing Techniques
