Research Scholar Interest Mining Method based on Load Centrality
Yang Jiang, Zhe Xue, Ang Li

TL;DR
This paper introduces a load centrality-based algorithm to accurately mine researchers' interests from their papers and patents, aiding in understanding scientific collaboration and research focus areas.
Contribution
It proposes a novel interest mining algorithm using load centrality, integrating topic graphs and keyword analysis to better understand researcher interests.
Findings
Effective extraction of researcher interests from publication data
Improved accuracy over traditional interest mining methods
Enhanced understanding of scientific collaboration networks
Abstract
In the era of big data, it is possible to carry out cooperative research on the research results of researchers through papers, patents and other data, so as to study the role of researchers, and produce results in the analysis of results. For the important problems found in the research and application of reality, this paper also proposes a research scholar interest mining algorithm based on load centrality (LCBIM), which can accurately solve the problem according to the researcher's research papers and patent data. Graphs of creative algorithms in various fields of the study aggregated ideas, generated topic graphs by aggregating neighborhoods, used the generated topic information to construct with similar or similar topic spaces, and utilize keywords to construct one or more topics. The regional structure of each topic can be used to closely calculate the weight of the centrality…
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Taxonomy
TopicsAdvanced Technologies in Various Fields · E-commerce and Technology Innovations
