SIIRLGMLNov 25, 2013

Learning Reputation in an Authorship Network

arXiv:1311.6334v11 citations
Originality Synthesis-oriented
AI Analysis

This incremental work addresses the problem of expert search for users in academia and industry.

The authors tackled the problem of searching for experts in an academic field by combining topic modeling with graph centrality measures and rank aggregation, demonstrating an improvement in mean average precision over a baseline method.

The problem of searching for experts in a given academic field is hugely important in both industry and academia. We study exactly this issue with respect to a database of authors and their publications. The idea is to use Latent Semantic Indexing (LSI) and Latent Dirichlet Allocation (LDA) to perform topic modelling in order to find authors who have worked in a query field. We then construct a coauthorship graph and motivate the use of influence maximisation and a variety of graph centrality measures to obtain a ranked list of experts. The ranked lists are further improved using a Markov Chain-based rank aggregation approach. The complete method is readily scalable to large datasets. To demonstrate the efficacy of the approach we report on an extensive set of computational simulations using the Arnetminer dataset. An improvement in mean average precision is demonstrated over the baseline case of simply using the order of authors found by the topic models.

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