Litcius/Paper detail

ELIXIR: Learning from User Feedback on Explanations to Improve Recommender Models

Azin Ghazimatin, Soumajit Pramanik, Rishiraj Saha Roy, Gerhard Weikum

202120 citationsDOIOpen Access PDF

Abstract

System-provided explanations for recommendations are an important component towards transparent and trustworthy AI. In state-of-the-art research, this is a one-way signal, though, to improve user acceptance. In this paper, we turn the role of explanations around and investigate how they can contribute to enhancing the quality of generated recommendations themselves. We devise a human-in-the-loop framework, called Elixir, where user feedback on explanations is leveraged for pairwise learning of user preferences. Elixir leverages feedback on pairs of recommendations and explanations to learn user-specific latent preference vectors, overcoming sparseness by label propagation with item-similarity-based neighborhoods. Our framework is instantiated using generalized graph recommendation via Random Walk with Restart. Insightful experiments with a real user study show significant improvements in movie and book recommendations over item-level feedback.

Topics & Concepts

Computer scienceRecommender systemPairwise comparisonQuality (philosophy)PreferenceGraphTrustworthinessComponent (thermodynamics)User modelingHuman–computer interactionCollaborative filteringAsk priceArtificial intelligenceInformation retrievalPreference elicitationMachine learningPreference learningFeature learningUser experience designData scienceWorld Wide WebRecommender Systems and TechniquesAdvanced Graph Neural NetworksExplainable Artificial Intelligence (XAI)