Personality-aware recommendation systems have been proven to achieve high accuracy compared to conventional recommendation systems. In addition to that, personality-aware recommendation systems could help alleviate cold start and data sparsity problems. Most of the existing works use Big-Five personality model to represent the user's personality, this is due to the popularity of Big-Five model in the literature of psychology. However, from personality computing perspective, the choice of the most suitable personality model that satisfy the requirements of the recommendation application and the recommended content type still needs further investigation. In this paper, we study and compare four personality-aware recommendation systems based on different personality models, namely Big-Five, Eysenck and HEXACO from the personality traits theory, and Myers-Briggs Type Indicator (MPTI) from the personality types theory. Following that, we propose a hybrid personality model for recommendation that takes advantage of the personality traits models, as well as the personality types models. Through extensive experiments on recommendation dataset, we prove the efficiency of the proposed model, especially in cold start settings.
翻译:与常规建议系统相比,个性意识建议系统已证明能达到与常规建议系统相比的高准确度。此外,个性意识建议系统还有助于缓解寒冷开始和数据宽度问题。大多数现有作品使用大五个个个性模型来代表用户的个性,这是因为心理学文献中流行五大模式。然而,从个性计算角度,选择符合建议应用程序要求的最合适的个性模型以及建议内容类型仍然需要进一步调查。在本文中,我们研究和比较了四个个性意识建议系统,这些系统基于不同的个性模型,即个性特征理论中的大五、艾森克和赫萨科,以及个性类型理论中的Myers-Briggs类型指标(MPTI)。随后,我们提出一个混合的个性模型来提出建议,利用个性特征模型以及个性类型模型。通过对建议数据集的广泛试验,我们证明了拟议模型的效率,特别是在寒冷的环境下。