Machine Translation of minority languages presents unique challenges, including the paucity of bilingual training data and
the unavailability of linguistically-trained speakers. This paper focuses on a machine learning approach to transfer-based
MT, where data in the form of translations and lexical alignments are elicited from bilingual speakers, and a seeded version-space
learning algorithm formulates and refines transfer rules. A rule-generalization lattice is defined based on LFG-style f-structures,
permitting generalization operators in the search for the most general rules consistent with the elicited data. The paper
presents these methods and illustrates examples.