SIIRAug 9, 2020

Socially-Aware Conference Participant Recommendation with Personality Traits

arXiv:2008.04653v137 citations
AI Analysis

This addresses the need for effective academic collaboration recommendations at smart conferences, though it appears incremental by hybridizing existing concepts.

The paper tackles the problem of recommending collaboration partners at academic conferences by incorporating personality traits and social characteristics, resulting in a new algorithm (SPARP) that outperforms state-of-the-art methods.

As a result of the importance of academic collaboration at smart conferences, various researchers have utilized recommender systems to generate effective recommendations for participants. Recent research has shown that the personality traits of users can be used as innovative entities for effective recommendations. Nevertheless, subjective perceptions involving the personality of participants at smart conferences are quite rare and haven't gained much attention. Inspired by the personality and social characteristics of users, we present an algorithm called Socially and Personality Aware Recommendation of Participants (SPARP). Our recommendation methodology hybridizes the computations of similar interpersonal relationships and personality traits among participants. SPARP models the personality and social characteristic profiles of participants at a smart conference. By combining the above recommendation entities, SPARP then recommends participants to each other for effective collaborations. We evaluate SPARP using a relevant dataset. Experimental results confirm that SPARP is reliable and outperforms other state-of-the-art methods.

Foundations

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