Personalized text snippet extraction using statistical language models

作者:

Highlights:

摘要

In knowledge discovery in a text database, extracting and returning a subset of information highly relevant to a user's query is a critical task. In a broader sense, this is essentially identification of certain personalized patterns that drives such applications as Web search engine construction, customized text summarization and automated question answering. A related problem of text snippet extraction has been previously studied in information retrieval. In these studies, common strategies for extracting and presenting text snippets to meet user needs either process document fragments that have been delimitated a priori or use a sliding window of a fixed size to highlight the results. In this work, we argue that text snippet extraction can be generalized if the user's intention is better utilized. It overcomes the rigidness of existing approaches by dynamically returning more flexible start–end positions of text snippets, which are also semantically more coherent. This is achieved by constructing and using statistical language models which effectively capture the commonalities between a document and the user intention. Experiments indicate that our proposed solutions provide effective personalized information extraction services.

论文关键词:Text snippet extraction,Personalization,Language model,Information retrieval,Natural language processing,Pattern discovery,Hidden Markov Model

论文评审过程:Received 17 September 2008, Revised 14 May 2009, Accepted 10 June 2009, Available online 21 June 2009.

论文官网地址:https://doi.org/10.1016/j.patcog.2009.06.003