资源论文Faster Greedy MAP Inference for Determinantal Point Processes

Faster Greedy MAP Inference for Determinantal Point Processes

2020-03-10 | |  53 |   44 |   0

Abstract

Determinantal point processes (DPPs) are popular probabilistic models that arise in many machine learning tasks, where distributions of diverse sets are characterized by matrix determinants. In this paper, we develop fast algorithms to find the most likely configuration (MAP) of large-scale DPPs, which is NP-hard in general. Due to the submodular nature of the MAP objective, greedy algorithms have been used with empirical success. Greedy implementations require computation of log-determinants, matrix inverses or solving linear systems at each iteration. We present faster implementations of the greedy algorithms by utilizing the complementary benefits of two log-determinant approximation schemes: (a) first-order expansions to the matrix log-determinant function and (b) highorder expansions to the scalar log function with stochastic trace estimators. In our experiments, our algorithms are significantly faster than their competitors for large-scale instances, while sacrificing marginal accuracy.

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