INDIGO Home University of Illinois at Urbana-Champaign logo uic building uic pavilion uic student center

Advancing Open Information Extraction Methods to Enrich Knowledge Bases

Show full item record

Bookmark or cite this item: http://hdl.handle.net/10027/22249

Files in this item

File Description Format
PDF MIRREZAEI-DISSERTATION-2017.pdf (1MB) Restricted Access (no description provided) PDF
Title: Advancing Open Information Extraction Methods to Enrich Knowledge Bases
Author(s): Mirrezaei, Seyed Iman
Advisor(s): F.Cruz, Isabel
Contributor(s): Di Eugenio, Barbara; Liu, Bing; Ziebart, Brian; Martins, Bruno; F.Cruz, Isabel
Department / Program: Computer Science
Degree Granting Institution: University of Illinois at Chicago
Degree: PhD, Doctor of Philosophy
Genre: Doctoral
Subject(s): Spatio-temporal text analysis open information extraction distantly supervised information extraction text mining.
Abstract: Discovering knowledge from textual sources and subsequently expanding the coverage of knowledge bases like DBpedia or Google’s Knowledge Graph currently requires either extensive manual work or carefully designed open information extractors. An open information extractor (OIE) captures triples from textual resources. Each triple consists of a subject, a predicate/property, and an object. Triples can be mediated via verbs, nouns, adjectives, or appositions. The research that we conducted in the area of OIE resulted on the development of OIE systems, named TRIPLEX and TRIPLEX-ST. We focus on further advancing OIE methods to support the expansion of spatio-temporal information in knowledge bases. TRIPLEX extracts triples from grammatical dependency relations involving noun phrases and modifiers that correspond to adjectives and appositions. TRIPLEX constructs templates that express nounmediated triples during its automatic bootstrapping process, which finds sentences that express nounmediated triples by leveraging Wikipedia. The templates express how noun-mediated triples occur in sentences and include rich linguistic annotations. Finally, the templates can be used to extract triples from previously unseen text. TRIPLEX-ST is a novel information extraction system that can capture spatio-temporal information from text. It extends current open-domain information extraction (OIE) systems in several dimensions, including the ability to extract facts associated with spatio-temporal contexts (i.e., spatio-temporal information that constrains the facts). The system usesWikipedia sentences and triples in existing knowledge bases, such as YAGO, to automatically infer templates during a bootstrapping process. These templates include rich linguistic annotations, and they can be used to extract both facts associated with spatio-temporal contexts and spatio-temporal facts from previously unseen sentences. TRIPLEX-ST also includes syntax-based sentence simplification methods, which contribute to improving extraction effectiveness. Our experiments show that TRIPLEX-ST outperforms a state-of-the-art OIE system on the extraction of spatio-temporal facts. We also show that our approach can accurately extract useful new information, in the form of triples connected to spatio-temporal contexts, using a large Wikipedia dataset.
Issue Date: 2017-09-05
Type: Thesis
URI: http://hdl.handle.net/10027/22249
Date Available in INDIGO: 2018-02-08
Date Deposited: December 2
 

This item appears in the following Collection(s)

Show full item record

Statistics

Country Code Views
United States of America 42
China 5
Russian Federation 2
Germany 1
France 1

Browse

My Account

Information

Access Key