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    Improving N-Gram Modeling Using Distance-Related Unit Association Maximum Entropy Language Modeling

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    In this paper, a distance-related unit association maximum entropy (DUAME) language modeling is proposed. This approach can model an event (unit subsequence) using the co-occurrence of full distance unit association (UA) features so that it is able to pursue a functional approximation to higher order N-gram with significantly less memory requirement. A smoothing strategy related to this modeling will also be discussed. Preliminary experimental results have shown that DUAME modeling is comparable to conventional N-gram modeling in perplexity with significantly small number of parameters
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