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I'm playing around with writing an n-gram sentence comparison/generation script. The model heavily favors shorter sentences, any quick suggestions on how I might weight it more towards longer sentences?

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Probably the model contains an end of sentence symbol. Reduce its weights. Alternatively, add in more copies of longer sentences to its training data. –  Rob Neuhaus Dec 20 '11 at 23:14
Was there supposed to be more text after "because"? –  Don Reba Dec 21 '11 at 6:14
@DonReba No sorry accidentally left that in while editing. –  Seth Archer Brown Dec 21 '11 at 14:12

1 Answer 1

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Assuming that you compute a score for each n-gram and rank the ngrams by these scores, you can adjust the scores of these n-grams by applying a different scalar weight for each value of n, e.g., v = <0.1, 0.2, 0.5, 0.9, 1.0>, where v[0] would be applied to an n-gram where n == 1. Such a vector could be determined from a larger text corpus by measuring the relative frequencies of a set of representative solution n-grams (e.g., if you are looking for sentences, then calculate n for each sentence, count the frequencies of each value of n, and create a probability distribution from that data.

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