Recognizing analogies, synonyms, antonyms, and associations appear to be four\ud
distinct tasks, requiring distinct NLP algorithms. In the past, the four\ud
tasks have been treated independently, using a wide variety of algorithms.\ud
These four semantic classes, however, are a tiny sample of the full\ud
range of semantic phenomena, and we cannot afford to create ad hoc algorithms\ud
for each semantic phenomenon; we need to seek a unified approach.\ud
We propose to subsume a broad range of phenomena under analogies.\ud
To limit the scope of this paper, we restrict our attention to the subsumption\ud
of synonyms, antonyms, and associations. We introduce a supervised corpus-based\ud
machine learning algorithm for classifying analogous word pairs, and we\ud
show that it can solve multiple-choice SAT analogy questions, TOEFL\ud
synonym questions, ESL synonym-antonym questions, and similar-associated-both\ud
questions from cognitive psychology