A method for extracting important segments from documents using support vector machines: Toward automatic text summarization

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Abstract

In this paper we propose an extraction-based method for automatic summarization. The proposed method consists of two processes: important segment extraction and sentence compaction. The process of important segment extraction classifies each segment in a document as important or not by Support Vector Machines (SVMs). The process of sentence compaction then determines grammatically appropriate portions of a sentence for a summary according to its dependency structure and the classification result by SVMs. To test the performance of our method, we conducted an evaluation experiment using the Text Summarization Challenge (TSC-1) corpus of human-prepared summaries. The result was that our method achieved better performance than a segment-extraction-only method and the Lead method, especially for sentences only a part of which was included in human summaries. Further analysis of the experimental results suggests that a hybrid method that integrates sentence extraction with segment extraction may generate better summaries.

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Susuki, D., & Utsumi, A. (2006). A method for extracting important segments from documents using support vector machines: Toward automatic text summarization. Transactions of the Japanese Society for Artificial Intelligence, 21(4), 330–339. https://doi.org/10.1527/tjsai.21.330

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