PAPER DIGEST
Most Influential WWW 2004 Paper · 2026-03 edition

Web-scale Information Extraction In Knowitall: (preliminary Results)

Oren Etzioni, Michael Cafarella, Doug Downey, Stanley Kok, Ana-Maria Popescu, Tal Shaked, Stephen Soderland, Daniel S. Weld, Alexander Yates

Venue
ACM Web Conference (WWW) 2004
Recognition
Most Influential WWW 2004 Paper (Rank No. 6)
Edition
2026-03
Impact factor
8
Certificate ID
976288defe73d080

Abstract

Manually querying search engines in order to accumulate a large bodyof factual information is a tedious, error-prone process of piecemealsearch. Search engines retrieve and rank potentially relevantdocuments for human perusal, but do not extract facts, assessconfidence, or fuse information from multiple documents. This paperintroduces KnowItAll, a system that aims to automate the tedious process ofextracting large collections of facts from the web in an autonomous,domain-independent, and scalable manner.The paper describes preliminary experiments in which an instance of KnowItAll, running for four days on a single machine, was able to automatically extract 54,753 facts. KnowItAll associates a probability with each fact enabling it to trade off precision and recall. The paper analyzes KnowItAll's architecture and reports on lessons learned for the design of large-scale information extraction systems.

Download PDF certificate