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Optimal estimation of sparse topic models

Abstract

Topic models have become popular tools for dimension reduction and exploratory analysis of text data which consists in observed frequencies of a vocabulary of pp words in nn documents, stored in a p×np\times n matrix. The main premise is that the mean of this data matrix can be factorized into a product of two non-negative matrices: a p×Kp\times K word-topic matrix AA and a K×nK\times n topic-document matrix WW. This paper studies the estimation of AA that is possibly element-wise sparse, and the number of topics KK is unknown. In this under-explored context, we derive a new minimax lower bound for the estimation of such AA and propose a new computationally efficient algorithm for its recovery. We derive a finite sample upper bound for our estimator, and show that it matches the minimax lower bound in many scenarios. Our estimate adapts to the unknown sparsity of AA and our analysis is valid for any finite nn, pp, KK and document lengths. Empirical results on both synthetic data and semi-synthetic data show that our proposed estimator is a strong competitor of the existing state-of-the-art algorithms for both non-sparse AA and sparse AA, and has superior performance is many scenarios of interest.

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