Publications

Hierarchical wrapper induction for semistructured information sources

Abstract

With the tremendous amount of information that becomes available on the Web on a daily basis, the ability to quickly develop information agents has become a crucial problem. A vital component of any Web-based information agent is a set of wrappers that can extract the relevant data from semistructured information sources. Our novel approach to wrapper induction is based on the idea of hierarchical information extraction, which turns the hard problem of extracting data from an arbitrarily complex document into a series of simpler extraction tasks. We introduce an inductive algorithm, STALKER, that generates high accuracy extraction rules based on user-labeled training examples. Labeling the training data represents the major bottleneck in using wrapper induction techniques, and our experimental results show that STALKER requires up to two orders of magnitude fewer examples than other algorithms …

Date
January 1, 1970
Authors
Ion Muslea, Steven Minton, Craig A Knoblock
Journal
Autonomous Agents and Multi-Agent Systems
Volume
4
Pages
93-114
Publisher
Kluwer Academic Publishers