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.
翻译:由于智能会议学术合作的重要性,各研究人员利用推荐人系统为与会者提出有效建议,最近的研究表明,用户的个性特征可以用作创新实体提出有效建议,然而,涉及智能会议参与者个性的主观观念相当少见,没有引起多少注意。受用户个性和社会特征的启发,我们提出了一种称为“了解参与者的社会和个性建议”的算法(SPARP)。我们的建议方法将参与者之间类似的人际关系和个性特征的计算方法结合起来。SPARP为参加智能会议的参与者的个性和社会特征作了模型。通过将上述建议实体结合起来,SPARP随后建议参与者彼此进行有效合作。我们利用一个相关的数据集对SPARP进行评估。实验结果证实SPARP是可靠的,超越了其他最先进的方法。