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Graph Convolutional Network-Strengthened Topic Modeling for Scientific PapersMachine learning has been woven into statistics to modernize topic modeling over textual documents written in natural language, and scientific paper search and recommendation can consequently offer higher accuracy instead of counting on traditional keyword-based search. However, topic distribution of a paper resulted from existing topic modeling techniques only relies on the statistics of words contained in the paper itself. We argue that community users’ views of a paper may also provide insights at the time of recommendation. For example, if a paper on fake image detection has been cited heavily by machine learning papers, such a feature should be absorbed in the embedding of this paper, so that it can be recommended for future query on machine learning. In this paper, we present a Graph Convolutional Network-strengthened Topic Modeling (GCN-TM) method, which employs GCN technique to refine topic modeling of scientific papers. A citation-oriented knowledge graph is constructed, and topic modeling is mapped to feature embedding of the comprising papers. On top of its own topics carried in its content, each paper learns topics from its neighbors and revise its embedding accordingly. Our empirical studies over real-life scientific literature has proved the necessity and effectiveness of our proposed approach.
Document ID
20220002317
Acquisition Source
Goddard Space Flight Center
Document Type
Conference Paper
Authors
Jia Zhang
(Southern Methodist University Dallas, Texas, United States)
Junhao Shen
(Southern Methodist University Dallas, Texas, United States)
Beichen Hu
(Southern Methodist University Dallas, Texas, United States)
Rahul Ramachandran
(Marshall Space Flight Center Redstone Arsenal, Alabama, United States)
Tsengdar J Lee
(National Aeronautics and Space Administration Washington D.C., District of Columbia, United States)
Kwo-sen Kuo
(University of Maryland, Baltimore County Baltimore, Maryland, United States)
Manil Maskey
(Marshall Space Flight Center Redstone Arsenal, Alabama, United States)
Seungwon Lee
(Jet Propulsion Lab La Cañada Flintridge, California, United States)
Date Acquired
February 10, 2022
Subject Category
Documentation And Information Science
Meeting Information
Meeting: 2021 IEEE International Conference on Smart Data Services (SMDS)
Location: Virtual
Country: US
Start Date: September 5, 2021
End Date: September 10, 2021
Sponsors: Institute of Electrical and Electronics Engineers
Funding Number(s)
CONTRACT_GRANT: NNX17AE79A
WBS: 929099
CONTRACT_GRANT: 80NM0018D0004P00002
CONTRACT_GRANT: SPEC5722
CONTRACT_GRANT: 80NSSC21K0253
CONTRACT_GRANT: 80NSSC21K0576
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
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