Title of article
Accuracy of inter-researcher similarity measures based on topical and social clues
Author/Authors
Guillaume Cabanac، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
24
From page
597
To page
620
Abstract
Scientific literature recommender systems (SLRSs) provide papers to researchers according to their scientific interests. Systems rely on inter-researcher similarity measures that are usually computed according to publication contents (i.e., by extracting paper topics and citations). We highlight two major issues related to this design. The required full-text access and processing are expensive and hardly feasible. Moreover, clues about meetings, encounters, and informal exchanges between researchers (which are related to a social dimension) were not exploited to date. In order to tackle these issues, we propose an original SLRS based on a threefold contribution. First, we argue the case for defining inter-researcher similarity measures building on publicly available metadata. Second, we define topical and social measures that we combine together to issue socio-topical recommendations. Third, we conduct an evaluation with 71 volunteer researchers to check researchers’ perception against socio-topical similarities. Experimental results show a significant 11.21% accuracy improvement of socio-topical recommendations compared to baseline topical recommendations.
Journal title
Scientometrics
Serial Year
2011
Journal title
Scientometrics
Record number
1015993
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