Explaining recommendations by means of aspect-based transparent memories
Tim Donkers, Timm Kleemann, Jürgen Ziegler
Abstract
Recommender Systems have seen substantial progress in terms of algorithmic sophistication recently. Yet, the systems mostly act as black boxes and are limited in their capacity to explain why an item is recommended. In many cases recommendations methods are employed in scenarios where users not only rate items, but also convey their opinion on various relevant aspects, for instance by the means of textual reviews. Such user-generated content can serve as a useful source for deriving explanatory information to increase system intelligibility and, thereby, the user's understanding.
Topics & Concepts
SophisticationComputer scienceRecommender systemIntelligibility (philosophy)Data scienceInformation retrievalEpistemologyPhilosophySocial scienceSociologyRecommender Systems and TechniquesTopic ModelingExplainable Artificial Intelligence (XAI)