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arxiv: 2111.09963 · v2 · pith:A5VTDP6Snew · submitted 2021-11-18 · 💻 cs.IR · cs.AI· cs.LG

Beyond NDCG: behavioral testing of recommender systems with RecList

classification 💻 cs.IR cs.AIcs.LG
keywords systemsreclistrecommendertestingbehavioralactualalgorithmsanalysis
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As with most Machine Learning systems, recommender systems are typically evaluated through performance metrics computed over held-out data points. However, real-world behavior is undoubtedly nuanced: ad hoc error analysis and deployment-specific tests must be employed to ensure the desired quality in actual deployments. In this paper, we propose RecList, a behavioral-based testing methodology. RecList organizes recommender systems by use case and introduces a general plug-and-play procedure to scale up behavioral testing. We demonstrate its capabilities by analyzing known algorithms and black-box commercial systems, and we release RecList as an open source, extensible package for the community.

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