tech,12-3-H05-1032,ak generally leverages performance of a <term> summarizer </term> , at times giving it a significant
tech,4-2-H05-1032,ak </term> . Comparison is made against <term> non Bayesian summarizers </term> , using <term> test data </term> from
tech,7-1-H05-1032,ak presents a <term> Bayesian model </term> for <term> text summarization </term> , which explicitly encodes and exploits
other,24-1-H05-1032,ak judgments </term> are distributed over the <term> text </term> . Comparison is made against <term>
other,12-2-H05-1032,ak </term> , using <term> test data </term> from <term> Japanese news texts </term> . It is found that the <term> Bayesian
tech,22-3-H05-1032,ak giving it a significant lead over <term> non-Bayesian models </term> . We describe a new method for the
other,18-1-H05-1032,ak encodes and exploits information on how <term> human judgments </term> are distributed over the <term> text
model,4-1-H05-1032,ak performance </term> . The paper presents a <term> Bayesian model </term> for <term> text summarization </term>
other,9-2-H05-1032,ak Bayesian summarizers </term> , using <term> test data </term> from <term> Japanese news texts </term>
tech,5-3-H05-1032,ak texts </term> . It is found that the <term> Bayesian approach </term> generally leverages performance of
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