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T-RECS: A Simulation Tool to Study the Societal Impact of Recommender Systems

Authors :
Lucherini, Eli
Sun, Matthew
Winecoff, Amy
Narayanan, Arvind
Publication Year :
2021

Abstract

Simulation has emerged as a popular method to study the long-term societal consequences of recommender systems. This approach allows researchers to specify their theoretical model explicitly and observe the evolution of system-level outcomes over time. However, performing simulation-based studies often requires researchers to build their own simulation environments from the ground up, which creates a high barrier to entry, introduces room for implementation error, and makes it difficult to disentangle whether observed outcomes are due to the model or the implementation. We introduce T-RECS, an open-sourced Python package designed for researchers to simulate recommendation systems and other types of sociotechnical systems in which an algorithm mediates the interactions between multiple stakeholders, such as users and content creators. To demonstrate the flexibility of T-RECS, we perform a replication of two prior simulation-based research on sociotechnical systems. We additionally show how T-RECS can be used to generate novel insights with minimal overhead. Our tool promotes reproducibility in this area of research, provides a unified language for simulating sociotechnical systems, and removes the friction of implementing simulations from scratch.<br />Comment: 17 pages, 5 figures; updated Figure 2(b) after fixing small bug in replication code (see Github for more details)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2107.08959
Document Type :
Working Paper