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An open-source framework for ExpFinder integrating $N$-gram Vector Space Model and $μ$CO-HITS (2103.00917v2)

Published 1 Mar 2021 in cs.IR, cs.MS, and cs.SE

Abstract: Finding experts drives successful collaborations and high-quality product development in academic and research domains. To contribute to the expert finding research community, we have developed ExpFinder which is a novel ensemble model for expert finding by integrating an $N$-gram vector space model ($n$VSM) and a graph-based model ($\mu$CO-HITS). This paper provides descriptions of ExpFinder's architecture, key components, functionalities, and illustrative examples. ExpFinder is an effective and competitive model for expert finding, significantly outperforming a number of expert finding models.

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