Evaluating Podcast Recommendations with Profile-Aware LLM-as-a-Judge
By: Francesco Fabbri , Gustavo Penha , Edoardo D'Amico and more
Potential Business Impact:
AI judges podcast picks like a person.
Evaluating personalized recommendations remains a central challenge, especially in long-form audio domains like podcasts, where traditional offline metrics suffer from exposure bias and online methods such as A/B testing are costly and operationally constrained. In this paper, we propose a novel framework that leverages Large Language Models (LLMs) as offline judges to assess the quality of podcast recommendations in a scalable and interpretable manner. Our two-stage profile-aware approach first constructs natural-language user profiles distilled from 90 days of listening history. These profiles summarize both topical interests and behavioral patterns, serving as compact, interpretable representations of user preferences. Rather than prompting the LLM with raw data, we use these profiles to provide high-level, semantically rich context-enabling the LLM to reason more effectively about alignment between a user's interests and recommended episodes. This reduces input complexity and improves interpretability. The LLM is then prompted to deliver fine-grained pointwise and pairwise judgments based on the profile-episode match. In a controlled study with 47 participants, our profile-aware judge matched human judgments with high fidelity and outperformed or matched a variant using raw listening histories. The framework enables efficient, profile-aware evaluation for iterative testing and model selection in recommender systems.
Similar Papers
Do LLM-judges Align with Human Relevance in Cranfield-style Recommender Evaluation?
Information Retrieval
Lets computers judge movie recommendations fairly.
Evaluating and Mitigating LLM-as-a-judge Bias in Communication Systems
Artificial Intelligence
Makes AI judges fairer and more trustworthy.
LLM-as-a-Judge: Rapid Evaluation of Legal Document Recommendation for Retrieval-Augmented Generation
Computation and Language
Lets computers judge legal AI work fairly.