High Performance Computing White Papers

MMIHMM: Maximum Mutual Information Hidden Markov Models

Overview This paper proposes a new family of Hidden Markov Models named Maximum Mutual Information Hidden Markov Models (MMIHMMs). MMIHMMs have the same graphical structure as HMMs. However, the cost function being optimized is not the joint likelihood of the observations and the hidden states. It consists of the weighted linear combination of the mutual information between the hidden states and the observations and the likelihood of the observations and the states. We present both theoretical and practical motivations for having such a cost function. Next, we derive the parameter estimation (learning) equations for both the discrete and continuous observation cases. Finally we illustrate the superiority of our approach in different classification tasks by comparing the classification performance of our proposed Maximum Mutual Information HMMs (MMIHMMs) with standard Maximum Likelihood HMMs (HMMs), in the case of synthetic and real, discrete and continuous, supervised and unsupervised data. We believe that MMIHMMs are a powerful tool to solve many of the problems associated with HMMs when used for classification and/or clustering.

Further White Paper Details
PublisherMicrosoft File FormatHTML & PDF
Date PublishedFebruary 2002 Downloads19
FormatWhite Papers   
Topics
Thin clients switch on digitally excluded

Thin clients switch on digitally excluded

Case study: Digital inclusion project tackles social exclusion in Liverpool more

Renault goes multilingual

Renault goes multilingual

Case study: Translation tech turns docs into 23 languages… more


Quick Sitemap Links: