DocumentCode
2448994
Title
Hybrid Strategies for Attribute Relation Learning from Candidates
Author
Fu, Kui ; Nie, Guihua ; Wang, Huimin
Author_Institution
Dept. of Electron. Bus., Wuhan Univ. of Technol., Wuhan
fYear
2008
fDate
July 28 2008-Aug. 1 2008
Firstpage
199
Lastpage
202
Abstract
Attribute relation learning is important, but has been few studied. This paper proposes hybrid strategies for attribute relation acquisition from candidate attributes. The composition of candidate attributes is firstly analyzed and subdivided into three types: non-attribute vocabularies, invalid attribute, and valid attribute. Secondly, the HowNet-based filtering strategy is presented which filters out the non-attribute vocabularies and invalid attributes from the candidates using the knowledge of ldquois-ardquo relations and attribute-host relations described by attribute sememe in HowNet. Thirdly, the pruning strategy based on domain concept tree is proposed to further perfect the associations between a concept and its candidate attributes. We define some pruning rules through which some redundant, unreliable, even wrong attributes can be discarded from candidates and some lost attributes can be recalled. Our results about attribute relation learning show the efficiency of our hybrid strategies.
Keywords
knowledge based systems; learning (artificial intelligence); systems analysis; HowNet-based filtering strategy; attribute relation acquisition; attribute relation learning; candidate attributes; invalid attribute; nonattribute vocabularies; valid attribute; Application software; Computer applications; Filtering; Filters; Learning systems; Ontologies; Training data; Vocabulary; Attribute; Attribute Relation; HowNet; Ontology Learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Software and Applications, 2008. COMPSAC '08. 32nd Annual IEEE International
Conference_Location
Turku
ISSN
0730-3157
Print_ISBN
978-0-7695-3262-2
Electronic_ISBN
0730-3157
Type
conf
DOI
10.1109/COMPSAC.2008.21
Filename
4591557
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