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From Intrinsic to Counterfactual: On the Explainability of Contextualized Recommender Systems
[article]
2021
arXiv
pre-print
With the prevalence of deep learning based embedding approaches, recommender systems have become a proven and indispensable tool in various information filtering applications. However, many of them remain difficult to diagnose what aspects of the deep models' input drive the final ranking decision, thus, they cannot often be understood by human stakeholders. In this paper, we investigate the dilemma between recommendation and explainability, and show that by utilizing the contextual features
arXiv:2110.14844v1
fatcat:e3s7nbxivzhknidbckjek2hx2e