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Extraction of Salient Sentences from Labelled Documents

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 Added by Misha Denil
 Publication date 2014
and research's language is English




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We present a hierarchical convolutional document model with an architecture designed to support introspection of the document structure. Using this model, we show how to use visualisation techniques from the computer vision literature to identify and extract topic-relevant sentences. We also introduce a new scalable evaluation technique for automatic sentence extraction systems that avoids the need for time consuming human annotation of validation data.



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