Can Explanations Improve Recommendations? Evidence from Prediction-Informed Explanations
Yuyan Wang, Pan Li, Minmin Chen

TL;DR
This paper introduces RecPIE, a framework that integrates explanation generation into recommendation models, improving both interpretability and predictive accuracy through a prediction-informed, feedback loop approach.
Contribution
RecPIE jointly optimizes recommendations and natural-language explanations using LLMs, demonstrating mutual reinforcement between explanations and predictions.
Findings
RecPIE improves recommendation accuracy by 3-4% over baselines.
RecPIE matches top models with only 12% of training data.
Participants preferred RecPIE explanations 61.5% of the time.
Abstract
Recommender systems are central to digital platforms, yet they face a fundamental trade-off between accuracy and explainability. Black-box models achieve strong performance but lack interpretability needed for trust and adoption. Existing explainable AI approaches either treat explanations as post-hoc or at the cost of accuracy. We challenge this view, proposing that explanations, when designed as an integral component of a system and aligned with prediction outcomes, can improve both interpretability and performance. We introduce RecPIE (Recommendation with Prediction-Informed Explanations), a framework that jointly optimizes recommendation predictions and natural-language explanations generated by LLMs. RecPIE embeds explanation generation into the learning loop: predictions guide explanation generation (prediction-informed explanations), which are fed back to refine subsequent…
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