Title of article
Analysis of a probabilistic model of redundancy in unsupervised information extraction Original Research Article
Author/Authors
Doug Downey، نويسنده , , Oren Etzioni، نويسنده , , Stephen Soderland، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
23
From page
726
To page
748
Abstract
Unsupervised Information Extraction (UIE) is the task of extracting knowledge from text without the use of hand-labeled training examples. Because UIE systems do not require human intervention, they can recursively discover new relations, attributes, and instances in a scalable manner. When applied to massive corpora such as the Web, UIE systems present an approach to a primary challenge in artificial intelligence: the automatic accumulation of massive bodies of knowledge.
A fundamental problem for a UIE system is assessing the probability that its extracted information is correct. In massive corpora such as the Web, the same extraction is found repeatedly in different documents. How does this redundancy impact the probability of correctness?
We present a combinatorial “balls-and-urns” model, called Urns, that computes the impact of sample size, redundancy, and corroboration from multiple distinct extraction rules on the probability that an extraction is correct. We describe methods for estimating Urnsʹs parameters in practice and demonstrate experimentally that for UIE the modelʹs log likelihoods are 15 times better, on average, than those obtained by methods used in previous work. We illustrate the generality of the redundancy model by detailing multiple applications beyond UIE in which Urns has been effective. We also provide a theoretical foundation for Urnsʹs performance, including a theorem showing that PAC Learnability in Urns is guaranteed without hand-labeled data, under certain assumptions.
Keywords
Unsupervised , world wide web , Information extraction
Journal title
Artificial Intelligence
Serial Year
2010
Journal title
Artificial Intelligence
Record number
1207761
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