“…A number of methods have been proposed, either for context-sensitive spelling correction directly, or for related lexical disambiguation tasks. The methods include word trigrams (Mays, Damerau, & Mercer, 1991), Bayesian classifiers (Gale, Church, & Yarowsky, 1993), decision lists (Yarowsky, 1994), Bayesian hybrids (Golding, 1995), a combination of part-of-speech trigrams and Bayesian hybrids (Golding & Schabes, 1996), and, more recently, transformation-based learning (Mangu & Brill, 1997), latent semantic analysis (Jones & Martin, 1997), and differential grammars (Powers, 1997). While these research systems have gradually been achieving higher levels of accuracy, we believe that a Winnow-based approach is particularly promising for this problem, due to the problem's need for a very large number of features to characterize the context in which a word occurs, and Winnow's theoretically-demonstrated ability to handle such large numbers of features.…”