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Cross-domain citation recommendation based on hybrid topic model and co-citation selection
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Metadata
Document Title
Cross-domain citation recommendation based on hybrid topic model and co-citation selection
Author
Tantanasiriwong S, Guha S, Janecek P, Haruechaiyasak C, Azzopardi L
Name from Authors Collection
Affiliations
Asian Institute of Technology; National Science & Technology Development Agency - Thailand; National Electronics & Computer Technology Center (NECTEC); University of Strathclyde
Type
Article
Source Title
INTERNATIONAL JOURNAL OF DATA MINING MODELLING AND MANAGEMENT
ISSN
1759-1163
Year
2017
Volume
9
Issue
3
Page
220-236
Open Access
Green Accepted
Publisher
INDERSCIENCE ENTERPRISES LTD
DOI
10.1504/IJDMMM.2017.086566
Format
Abstract
Cross-domain recommendations are of growing importance in the research community. An application of particular interest is to recommend a set of relevant research papers as citations for a given patent. This paper proposes an approach for cross-domain citation recommendation based on the hybrid topic model and co-citation selection. Using the topic model, relevant terms from documents could be clustered into the same topics. In addition, the co-citation selection technique will help select citations based on a set of highly similar patents. To evaluate the performance, we compared our proposed approach with the traditional baseline approaches using a corpus of patents collected for different technological fields of biotechnology, environmental technology, medical technology and nanotechnology. Experimental results show our cross domain citation recommendation yields a higher performance in predicting relevant publication citations than all baseline approaches.
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Publication Source
WOS