DOI: 10.1016/J.IPM.2022.102980
关键词:Hotness prediction of scientific topics; Bibliographic Knowledge graph; Co-evolution; Node2vec; PageRank
知网链接:https://schlr.cnki.net/en/Detail/index/GARJ2021_3/SJES7A890F42D1C47B5D749712DD7229AC56
发表期刊:
Information Processing & Management
论文层级:
SCI; WAJCI; EI; SSCI; INSPEC; Scopus;
论文作者:
Huo Chaoguang、Ma Shutian、Liu Xiaozhong/[J]Information Processing & ManagementVolume 59, Issue 4. 2022.
论文摘要:
As a part of innovation in forecasting, scientific topic hotness prediction plays an essential role in dynamic scientific topic assessment and domain knowledge transformation modeling. To improve the topic hotness prediction performance, we propose an innovative model to estimate the co-evolution of scientific topic and bibliographic entities, which leverages a novel dynamic Bibliographic Knowledge Graph (BKG). Then, one can predict the topic hotness by using various kinds of topological entity information, i.e., TopicRank, PaperRank, AuthorRank, and VenueRank, along with pre-trained node embedding, i.e., node2vec embedding, and different pooling techniques. To validate the proposed method, we constructed a new BKG by using 4.5 million PubMed Central publications plus MeSH (Medical Subject Heading) thesaurus and witnessed the essential prediction improvement with extensive experiment outcomes over 10 years observations.
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