Just as user preferences change with time, item reviews also reflect those same preference changes. In a nutshell, if one is to sequentially incorporate review content knowledge into recommender systems, one is naturally led to dynamical models of text. In the present work we leverage the known power of reviews to enhance rating predictions in a way that (i) respects the causality of review generation and (ii) includes, in a bidirectional fashion, the ability of ratings to inform language review models and vice-versa, language representations that help predict ratings end-to-end. Moreover, our representations are time-interval aware and thus yield a continuous-time representation of the dynamics. We provide experiments on real-world datasets and show that our methodology is able to outperform several state-of-the-art models. Source code for all models can be found at [1].
翻译:正如用户的偏好随时间变化而变化,项目审查也反映了同样的偏好变化。简言之,如果将审查内容知识按顺序纳入推荐人系统,就自然会形成动态文本模型。在目前的工作中,我们利用已知的审查力量,提高评级预测,以便(一) 尊重产生审查的因果关系,(二) 以双向方式包括评级能力,以告知语文审查模式,反之,有助于预测最后到最后评级的语文表述。此外,我们的表述是时间间隔意识,从而产生动态的连续时间代表。我们在现实世界数据集上提供实验,并表明我们的方法能够超越若干最先进的模型。所有模型的源代码可以在[1]找到。