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Joint Modeling of Topics, Citations, and Topical Authority in Academic Corpora

Title
Joint Modeling of Topics, Citations, and Topical Authority in Academic Corpora
Authors
KIM, DONGWOO
Date Issued
2017-07
Publisher
MIT Press
Abstract
Much of scientific progress stems from previously published findings, but searching through the vast sea of scientific publications is difficult. We often rely on metrics of scholarly authority to find the prominent authors but these authority indices do not differentiate authority based on research topics. We present Latent Topical-Authority Indexing (LTAI) for jointly modeling the topics, citations, and topical authority in a corpus of academic papers. Compared to previous models, LTAI differs in two main aspects. First, it explicitly models the generative process of the citations, rather than treating the citations as given. Second, it models each author’s influence on citations of a paper based on the topics of the cited papers, as well as the citing papers. We fit LTAI into four academic corpora: CORA, Arxiv Physics, PNAS, and Citeseer. We compare the performance of LTAI against various baselines, starting with the latent Dirichlet allocation, to the more advanced models including author-link topic model and dynamic author citation topic model. The results show that LTAI achieves improved accuracy over other similar models when predicting words, citations and authors of publications.
URI
https://oasis.postech.ac.kr/handle/2014.oak/101867
DOI
10.1162/tacl_a_00055
ISSN
2307-387X
Article Type
Article
Citation
Transactions of the Association for Computational Linguistics, vol. 5, 2017-07
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