Group recommender systems facilitate group decision making for a set of individuals (e.g., a group of friends, a team, a corporation, etc.). Many of these systems, however, either assume that (i) user preferences can be elicited (or inferred) and then aggregated into group preferences or (ii) group preferences are partially observed/elicited. We focus on making recommendations for a new group of users whose preferences are unknown, but we are given the decisions/choices of other groups. By formulating this problem as group recommendation from group implicit feedback, we focus on two of its practical instances: group decision prediction and reverse social choice. Given a set of groups and their observed decisions, group decision prediction intends to predict the decision of a new group of users, whereas reverse social choice aims to infer the preferences of those users involved in observed group decisions. These two problems are of interest to not only group recommendation, but also to personal privacy when the users intend to conceal their personal preferences but have participated in group decisions. To tackle these two problems, we propose and study DeepGroup -- a deep learning approach for group recommendation with group implicit data. We empirically assess the predictive power of DeepGroup on various real-world datasets, group conditions (e.g., homophily or heterophily), and group decision (or voting) rules. Our extensive experiments not only demonstrate the efficacy of DeepGroup, but also shed light on the privacy-leakage concerns of some decision making processes.
翻译:集团推荐系统为一组个人(例如,一组朋友、一组团队、公司等)的团体决策提供便利。然而,许多这类系统都假设:(一) 用户偏好可以引来(或推断),然后汇总成群体偏好,或(二) 群体偏好得到部分观察/理解。我们侧重于为一组新的用户提出建议,这些用户的偏爱并不为人所知,但我们得到的是其他群体的决定/选择。通过将这一问题作为群体隐含反馈的团体建议,我们注重两个实际实例:集体决策预测和反向社会选择。鉴于一组群体及其观察到的决定,集团决定的预测旨在预测新用户群体的决定,而反向社会选择的目的是推断参与受观察群体决定的用户的偏好。这两个问题不仅关系到集团建议,而且关系到个人隐私,因为用户打算隐瞒个人偏好,但只参与群体决策。为了解决这两个问题,我们提议并研究深组 -- 以小组建议的深层次学习方法,而不是以群体隐含数据为基础。我们从实学角度评估了集团、甚小的集团决策力。我们从小的深度评估了我们深层集团的决策。