论文标题
与网络信息有关的因果分解
Causal Disentanglement with Network Information for Debiased Recommendations
论文作者
论文摘要
推荐系统的目的是通过学习用户和项目表示形式向用户推荐新项目。实际上,这些表示形式高度纠缠,因为它们包含有关多种因素的信息,包括用户的兴趣,项目属性以及混杂因素,例如用户符合性和项目受欢迎程度。考虑到这些纠缠的表示用户偏好的表示可能会导致偏见的建议(例如,当推荐模型推荐流行项目时,即使它们与用户的兴趣不符)。 最近的研究建议通过因果角度对推荐系统进行建模来对Debias进行建模。暴露和评级分别类似于因果推理框架中的治疗和结果。在这种情况下,关键的挑战是考虑隐藏的混杂因素。这些混杂的人没有观察到,因此很难衡量它们。另一方面,由于这些混杂因素会影响曝光和评级,因此必须在产生债券建议时考虑它们。为了更好地近似隐藏的混杂因素,我们建议利用网络信息(即用户社会和用户项目网络),这些信息显示出影响用户如何发现和与项目交互的方式。除了用户一致性之外,在我们的方法中还捕获了混淆的各个方面,例如网络信息中存在的项目流行,借助\ textit {Causal Disentangrement}将学习的表示形式分解为独立因素,这些因素是(a)对物品对用户的曝光建模,(a)对用户的曝光建模,(b)预测收视率和(c)隐藏的混合物,以及(c)Conflocters Contrys Contrys and(b)。在现实世界数据集上的实验验证了建议模型在推荐系统中的有效性。
Recommender systems aim to recommend new items to users by learning user and item representations. In practice, these representations are highly entangled as they consist of information about multiple factors, including user's interests, item attributes along with confounding factors such as user conformity, and item popularity. Considering these entangled representations for inferring user preference may lead to biased recommendations (e.g., when the recommender model recommends popular items even if they do not align with the user's interests). Recent research proposes to debias by modeling a recommender system from a causal perspective. The exposure and the ratings are analogous to the treatment and the outcome in the causal inference framework, respectively. The critical challenge in this setting is accounting for the hidden confounders. These confounders are unobserved, making it hard to measure them. On the other hand, since these confounders affect both the exposure and the ratings, it is essential to account for them in generating debiased recommendations. To better approximate hidden confounders, we propose to leverage network information (i.e., user-social and user-item networks), which are shown to influence how users discover and interact with an item. Aside from the user conformity, aspects of confounding such as item popularity present in the network information is also captured in our method with the aid of \textit{causal disentanglement} which unravels the learned representations into independent factors that are responsible for (a) modeling the exposure of an item to the user, (b) predicting the ratings, and (c) controlling the hidden confounders. Experiments on real-world datasets validate the effectiveness of the proposed model for debiasing recommender systems.