DeepGroup: Representation Learning for Group Recommendation with Implicit Feedback
Sarina Sajadi Ghaemmaghami, Amirali Salehi-Abari

TL;DR
DeepGroup is a deep learning model designed for group recommendation using implicit feedback, capable of predicting group decisions and inferring individual preferences while addressing privacy concerns.
Contribution
This paper introduces DeepGroup, a novel deep learning framework for group recommendation from implicit data, focusing on group decision prediction and reverse social choice.
Findings
DeepGroup achieves high accuracy on real-world datasets.
The model reveals privacy risks in group decision processes.
Performance varies with group homophily and voting rules.
Abstract
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…
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Taxonomy
TopicsRecommender Systems and Techniques · Privacy-Preserving Technologies in Data · Human Mobility and Location-Based Analysis
