Cluster Expansions and Iterative Scaling for
Maximum Entropy Language Models
Abstract
The maximum entropy method has recently been successfully introduced
to a variety of natural language applications. In each of these
applications, however, the power of the maximum entropy method is
achieved at the cost of a considerable increase in computational
requirements. In this paper we present a technique, closely related to
the classical cluster expansion from statistical mechanics, for
reducing the computational demands necessary to calculate conditional
maximum entropy language models.