Estimating Error and Bias in Offline Evaluation Results
January 26, 2020 Β· Declared Dead Β· π Conference on Human Information Interaction and Retrieval
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Authors
Mucun Tian, Michael D. Ekstrand
arXiv ID
2001.09455
Category
cs.IR: Information Retrieval
Cross-listed
cs.HC
Citations
11
Venue
Conference on Human Information Interaction and Retrieval
Last Checked
4 months ago
Abstract
Offline evaluations of recommender systems attempt to estimate users' satisfaction with recommendations using static data from prior user interactions. These evaluations provide researchers and developers with first approximations of the likely performance of a new system and help weed out bad ideas before presenting them to users. However, offline evaluation cannot accurately assess novel, relevant recommendations, because the most novel items were previously unknown to the user, so they are missing from the historical data and cannot be judged as relevant. We present a simulation study to estimate the error that such missing data causes in commonly-used evaluation metrics in order to assess its prevalence and impact. We find that missing data in the rating or observation process causes the evaluation protocol to systematically mis-estimate metric values, and in some cases erroneously determine that a popularity-based recommender outperforms even a perfect personalized recommender. Substantial breakthroughs in recommendation quality, therefore, will be difficult to assess with existing offline techniques.
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