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Evaluation Framework for Cold-Start Techniques in Large-Scale Production Settings

Published: 13 September 2022 Publication History

Abstract

In recommender systems, cold-start issues are situations where no previous events (e.g., ratings), are known for certain users or items. Mitigating cold-start situations is a fundamental problem in almost any recommender system [3, 5]. In real-life, large-scale production systems, the challenge of optimizing the cold-start strategy is even greater. We present an end-to-end framework for evaluating and comparing different cold-start strategies. By applying this framework in Outbrain’s recommender system, we were able to reduce our cold-start costs by half, while supporting both offline and online settings. Our framework solves the pain of benchmarking numerous cold-start techniques using surrogate accuracy metrics on offline datasets - coupled with an extensive, cost-controlled online A/B test. In this abstract, We’ll start with a short introduction to the cold-start challenge in recommender systems. Next, we will explain the motivation for a framework for cold-start techniques. Lastly, we will then describe - step by step - how we used the framework to reduce our exploration by more than 50%.

Supplementary Material

MP4 File (video1971175036.mp4)
Evaluation framework for cold-start techniques in large-scale production. In this session, a framework is proposed for evaluating the long-term impact of cold-starting on recommendation quality measured in terms of prediction accuracy and recommendation relevance. Specifically, we present our approach to solving the problem of comparing different warm-up techniques. We describe how the process of online and offline experimentation and evaluation is done at Outbrain. Industry talk - Presentation video.

References

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Shipra Agrawal and Navin Goyal. 2013. Thompson sampling for contextual bandits with linear payoffs. In International conference on machine learning. PMLR, 127–135.
[2]
Andrea Barraza-Urbina. 2017. The exploration-exploitation trade-off in interactive recommender systems. In Proceedings of the Eleventh ACM Conference on Recommender Systems. 431–435.
[3]
Allison JB Chaney, Brandon M Stewart, and Barbara E Engelhardt. 2018. How algorithmic confounding in recommendation systems increases homogeneity and decreases utility. In Proceedings of the 12th ACM Conference on Recommender Systems. 224–232.
[4]
Amir H Jadidinejad, Craig Macdonald, and Iadh Ounis. 2020. Using Exploration to Alleviate Closed Loop Effects in Recommender Systems. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval. 2025–2028.
[5]
Ivan Maksimov, Rodrigo Rivera-Castro, and Evgeny Burnaev. 2020. Addressing cold start in recommender systems with hierarchical graph neural networks. In 2020 IEEE International Conference on Big Data (Big Data). IEEE, 5128–5137.
[6]
Andrew W Moore. 2001. Information gain. School of Computer Science, Carnegie Mellon University, http://www. cs. cmu. edu/ awm/tutorials(2001).
[7]
Zhichen Zhao, Lei Li, Bowen Zhang, Meng Wang, Yuning Jiang, Li Xu, Fengkun Wang, and Weiying Ma. 2019. What You Look Matters? Offline Evaluation of Advertising Creatives for Cold-start Problem. In Proceedings of the 28th ACM International Conference on Information and Knowledge Management. 2605–2613.

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RecSys '22: Proceedings of the 16th ACM Conference on Recommender Systems
September 2022
743 pages
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Association for Computing Machinery

New York, NY, United States

Publication History

Published: 13 September 2022

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Author Tags

  1. big data
  2. exploration
  3. item cold-start
  4. machine learning
  5. recommendation systems

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