Instructing and Prompting Large Language Models for Explainable Cross-domain Recommendations
Alessandro Petruzzelli, Cataldo Musto, L. Laraspata, Ivan Rinaldi, Marco de Gemmis, Pasquale Lops, Giovanni Semeraro
Abstract
In this paper, we present a strategy to provide users with explainable cross-domain recommendations (CDR) that exploits large language models (LLMs). Generally speaking, CDR is a task that is hard to tackle, mainly due to data sparsity issues. Indeed, CDR models require a large amount of data labeled in both source and target domains, which are not easy to collect. Accordingly, our approach relies on the intuition that the knowledge that is already encoded in LLMs can be used to more easily bridge the domains and seamlessly provide users with personalized cross-domain suggestions.
Topics & Concepts
Computer scienceDomain (mathematical analysis)Human–computer interactionNatural language processingMathematicsMathematical analysisRecommender Systems and TechniquesTopic ModelingAdvanced Graph Neural Networks