IRLGPFJun 22, 2022

Synthetic Data-Based Simulators for Recommender Systems: A Survey

arXiv:2206.11338v19 citationsh-index: 11
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper for researchers and practitioners in recommender systems.

This survey provides a comprehensive overview of recent trends in modeling and simulation (M&S) of user-recommender system interactions, including a new classification of existing simulators and discussion of their building blocks like synthetic data generation and evaluation methods.

This survey aims at providing a comprehensive overview of the recent trends in the field of modeling and simulation (M&S) of interactions between users and recommender systems and applications of the M&S to the performance improvement of industrial recommender engines. We start with the motivation behind the development of frameworks implementing the simulations -- simulators -- and the usage of them for training and testing recommender systems of different types (including Reinforcement Learning ones). Furthermore, we provide a new consistent classification of existing simulators based on their functionality, approbation, and industrial effectiveness and moreover make a summary of the simulators found in the research literature. Besides other things, we discuss the building blocks of simulators: methods for synthetic data (user, item, user-item responses) generation, methods for what-if experimental analysis, methods and datasets used for simulation quality evaluation (including the methods that monitor and/or close possible simulation-to-reality gaps), and methods for summarization of experimental simulation results. Finally, this survey considers emerging topics and open problems in the field.

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