Litcius/Paper detail

Bundle MCR: Towards Conversational Bundle Recommendation

Zhankui He, Handong Zhao, Tong Yu, Sung-Chul Kim, Fan Du, Julian McAuley

202215 citationsDOIOpen Access PDF

Abstract

Bundle recommender systems recommend sets of items (e.g., pants, shirt, and shoes) to users, but they often suffer from two issues: significant interaction sparsity and a large output space. In this work, we extend multi-round conversational recommendation (MCR) to alleviate these issues. MCR—which uses a conversational paradigm to elicit user interests by asking user preferences on tags (e.g., categories or attributes) and handling user feedback across multiple rounds—is an emerging recommendation setting to acquire user feedback and narrow down the output space, but has not been explored in the context of bundle recommendation.

Topics & Concepts

BundleComputer scienceContext (archaeology)Task (project management)Space (punctuation)Recommender systemConversationHuman–computer interactionInformation retrievalEngineeringBiologyComposite materialSystems engineeringLinguisticsPhilosophyMaterials scienceOperating systemPaleontologyRecommender Systems and TechniquesTopic ModelingSentiment Analysis and Opinion Mining