Typesetting for Improved Readability using Lexical and Syntactic Information
journal contributionposted on 04.08.2013 by Ahmed Salama, Kemal Oflazer, Susan Hagan
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We present results from our study of which uses syntactically and semantically motivated information to group segments of sentences into unbreakable units for the purpose of typesetting those sentences in a region of a fixed width, using an otherwise standard dynamic programming line breaking algorithm, to minimize raggedness. In addition to a rule-based baseline segmenter, we use a very modest size text, manually annotated with positions of breaks, to train a maximum entropy classifier, relying on an extensive set of lexical and syntactic features, which can then predict whether or not to break after a certain word position in a sentence. We also use a simple genetic algorithm to search for a subset of the features optimizing F1, to arrive at a set of features that delivers 89.2% Precision, 90.2% Recall (89.7% F1) on a test set, improving the rule-based baseline by about 11 points and the classifier trained on all features by about 1 point in F1.