A spectral algorithm for learning Hidden Markov Models

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摘要

Hidden Markov Models (HMMs) are one of the most fundamental and widely used statistical tools for modeling discrete time series. In general, learning HMMs from data is computationally hard (under cryptographic assumptions), and practitioners typically resort to search heuristics which suffer from the usual local optima issues. We prove that under a natural separation condition (bounds on the smallest singular value of the HMM parameters), there is an efficient and provably correct algorithm for learning HMMs. The sample complexity of the algorithm does not explicitly depend on the number of distinct (discrete) observations—it implicitly depends on this quantity through spectral properties of the underlying HMM. This makes the algorithm particularly applicable to settings with a large number of observations, such as those in natural language processing where the space of observation is sometimes the words in a language. The algorithm is also simple, employing only a singular value decomposition and matrix multiplications.

论文关键词:Hidden Markov Models,Latent variable models,Observable operator models,Time series,Spectral algorithm,Singular value decomposition,Learning probability distributions,Unsupervised learning

论文评审过程:Received 1 February 2010, Revised 31 January 2011, Accepted 22 December 2011, Available online 18 January 2012.

论文官网地址:https://doi.org/10.1016/j.jcss.2011.12.025