Commonsense knowledge mining from the web
Journal
National Conference on Artificial Intelligence
Journal Volume
3
Pages
1480-1485
ISBN
9781577354666
Date Issued
2010
Author(s)
Yu C.-H.
Abstract
Good and generous knowledge sources, reliable and efficient induction patterns, and automatic and controllable quality assertion approaches are three critical issues to commonsense knowledge (CSK) acquisition. This paper employs Open Mind Common Sense (OMCS), a volunteers-contributed CSK database, to study the first and the third issues. For those stylized CSK, our result shows that over 40% of CSK for four predicate types in OMCS can be found in the web, which contradicts to the assumption that CSK is not communicated in texts. Moreover, we propose a commonsense knowledge classifier trained from OMCS, and achieve high precision in some predicate types, e.g., 82.6% in HasProperty. The promising results suggest new ways of analyzing and utilizing volunteer-contributed knowledge to design systems automatically mining commonsense knowledge from the web. Copyright ? 2010, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rights reserved.
Type
conference paper