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RGRecSys

Zohreh Ovaisi, Shelby Heinecke, Jia Li, Yongfeng Zhang, Elena Zheleva, Caiming Xiong

2022Proceedings of the Fifteenth ACM International Conference on Web Search and Data Mining18 citationsDOIOpen Access PDF

Abstract

Robust machine learning is an increasingly important topic that focuses on developing models resilient to various forms of imperfect data. Due to the pervasiveness of recommender systems in online technologies, researchers have carried out several robustness studies focusing on data sparsity and profile injection attacks. Instead, we propose a more holistic view of robustness for recommender systems that encompasses multiple dimensions - robustness with respect to sub-populations, transformations, distributional disparity, attack, and data sparsity. While there are several libraries that allow users to compare different recommender system models, there is no software library for comprehensive robustness evaluation of recommender system models under different scenarios. As our main contribution, we present a robustness evaluation toolkit, Robustness Gym for RecSys (RGRecSys), that allows us to quickly and uniformly evaluate the robustness of recommender system models.

Topics & Concepts

Robustness (evolution)Recommender systemComputer scienceImperfectMachine learningSoftwareArtificial intelligenceData miningChemistryProgramming languageLinguisticsGeneBiochemistryPhilosophySpam and Phishing DetectionAdvanced Bandit Algorithms ResearchMachine Learning and Algorithms
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