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arxiv: 2210.10621 · v1 · pith:FHQARV6Onew · submitted 2022-10-07 · 💻 cs.IR · cs.AI· cs.LG· stat.ML

CLEAR: Causal Explanations from Attention in Neural Recommenders

classification 💻 cs.IR cs.AIcs.LGstat.ML
keywords attentioncausalcleargraphscounterfactualexplanationsrecommendationrecommenders
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We present CLEAR, a method for learning session-specific causal graphs, in the possible presence of latent confounders, from attention in pre-trained attention-based recommenders. These causal graphs describe user behavior, within the context captured by attention, and can provide a counterfactual explanation for a recommendation. In essence, these causal graphs allow answering "why" questions uniquely for any specific session. Using empirical evaluations we show that, compared to naively using attention weights to explain input-output relations, counterfactual explanations found by CLEAR are shorter and an alternative recommendation is ranked higher in the original top-k recommendations.

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