Skip to yearly menu bar Skip to main content


Poster

Explaining Preferences with Shapley Values

Robert Hu · Siu Lun Chau · Jaime Ferrando Huertas · Dino Sejdinovic

Hall J (level 1) #905

Keywords: [ preference learning ] [ kernel ] [ RKHS ] [ Shapley values ] [ interpretability ]


Abstract:

While preference modelling is becoming one of the pillars of machine learning, the problem of preference explanation remains challenging and underexplored. In this paper, we propose \textsc{Pref-SHAP}, a Shapley value-based model explanation framework for pairwise comparison data. We derive the appropriate value functions for preference models and further extend the framework to model and explain \emph{context specific} information, such as the surface type in a tennis game. To demonstrate the utility of \textsc{Pref-SHAP}, we apply our method to a variety of synthetic and real-world datasets and show that richer and more insightful explanations can be obtained over the baseline.

Chat is not available.