In this paper we present an unsupervised method for learning a model to distinguish between ambiguous se-lection of structural transfer rules in a rule-based machine translation (MT) system. In rule-based MT systems, transfer rules are the component responsible for converting source language morphological and syntactic structures to target language structures. These transfer rules function by matching a source language pattern of lexical items and applying a sequence of actions. There can, however, be more than one potential sequence of actions for each source language pattern. Our model consists of a set of maximum entropy (or logistic regression) classifiers, one trained for each source language pattern, which select the highest probabili...