Publication
ICDE 2008
Conference paper

An algebraic approach to rule-based information extraction

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Abstract

Traditional approaches to rule-based information extraction (IK) have primarily been based on regular expression grammars. However, these grammar-based systems have difficulty scaling to large data sets and large numbers of rules. Inspired by traditional database research, we propose an algebraic approach to rule-based IE that addresses these scalability issues through query optimization. The operators of our algebra are motivated by our experience in building several rule-based extraction programs over diverse data sets. We present the operators of our algebra and propose several optimization strategies motivated by the text-specific characteristics of our operators. Finally we validate the potential benefits of our approach by extensive experiments over real-world blog data. © 2008 IEEE.

Date

Publication

ICDE 2008