Induction of Word and Phrase Alignments for Automatic Document Summarization

Author:

Daumé Hal1,Marcu Daniel2

Affiliation:

1. Information Sciences Institute University of Southern California, 4676 Admiralty Way, Suite 1001, Marina del Rey, CA 90292.

2. Information Sciences Institute, University of Southern California, 4676 Admiralty Way, Suite 1001, Marina del Rey, CA 90292.

Abstract

Current research in automatic single-document summarization is dominated by two effective, yet naïve approaches: summarization by sentence extraction and headline generation via bagof-words models. While successful in some tasks, neither of these models is able to adequately capture the large set of linguistic devices utilized by humans when they produce summaries. One possible explanation for the widespread use of these models is that good techniques have been developed to extract appropriate training data for them from existing document/abstract and document/ headline corpora. We believe that future progress in automatic summarization will be driven both by the development of more sophisticated, linguistically informed models, as well as a more effective leveraging of document/abstract corpora. In order to open the doors to simultaneously achieving both of these goals, we have developed techniques for automatically producing word-to-word and phrase-to-phrase alignments between documents and their human-written abstracts. These alignments make explicit the correspondences that exist in such document/abstract pairs and create a potentially rich data source from which complex summarization algorithms may learn. This paper describes experiments we have carried out to analyze the ability of humans to perform such alignments, and based on these analyses, we describe experiments for creating them automatically. Our model for the alignment task is based on an extension of the standard hidden Markov model and learns to create alignments in a completely unsupervised fashion. We describe our model in detail and present experimental results that show that our model is able to learn to reliably identify word- and phrase-level alignments in a corpus of (document, abstract) pairs.

Publisher

MIT Press - Journals

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

Cited by 8 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Learning from Numerous Untailored Summaries;PRICAI 2016: Trends in Artificial Intelligence;2016

2. Automatic Alignment of News Texts and Their Multi-document Summaries: Comparison among Methods;Lecture Notes in Computer Science;2014

3. Construction of an aligned monolingual treebank for studying semantic similarity;Language Resources and Evaluation;2013-10-04

4. Manual Typification of Source Texts and Multi-document Summaries Alignments;Procedia - Social and Behavioral Sciences;2013-10

5. The Extraction of Figure-Related Sentences to Effectively Understand Figures;Innovations in Intelligent Machines – 2;2012

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