How to deal with negative preferences in recommender systems: a theoretical framework
Federica Cena, Luca Console, Fabiana Vernero
Abstract
Negative information plays an important role in the way we express our preferences and desires. However, it has not received the same attention as positive feedback in recommender systems. Here we show how negative user preferences can be exploited to generate recommendations. We rely on a logical semantics for the recommendation process introduced in a previous paper and this allows us to single out three main conceptual approaches, as well as a set of variations, for dealing with negative user preferences. The formal framework provides a common ground for analysis and comparison. In addition, we show how existing approaches to recommendation correspond to alternatives in our framework.
Topics & Concepts
Computer scienceRecommender systemSet (abstract data type)Semantics (computer science)Process (computing)Conceptual frameworkInformation retrievalHuman–computer interactionEpistemologyPhilosophyProgramming languageOperating systemRecommender Systems and TechniquesConstraint Satisfaction and OptimizationDecision-Making and Behavioral Economics