Influence of Recommender Systems on Users: A Dynamical Systems Analysis
Prabhat Lankireddy, Jayakrishnan Nair, D Manjunath

TL;DR
This paper models and analyzes how recommender systems influence user preferences over time, revealing that the exploration-exploitation balance can lead to preference polarization and filter bubbles.
Contribution
It introduces a coupled dynamical system model for user preferences and recommendation algorithms, providing insights into long-term effects and the impact of exploration strategies.
Findings
RS can learn population preferences despite model mismatch
Exploration-exploitation tradeoff influences long-term preferences
More exploitation can cause preference polarization
Abstract
We analyze the unintended effects that recommender systems have on the preferences of users that they are learning. We consider a contextual multi-armed bandit recommendation algorithm that learns optimal product recommendations based on user and product attributes. It is well known that the sequence of recommendations affects user preferences. However, typical learning algorithms treat the user attributes as static and disregard the impact of their recommendations on user preferences. Our interest is to analyze the effect of this mismatch between the model assumption of a static environment and the reality of an evolving environment affected by the recommendations. To perform this analysis, we introduce a model for the coupled evolution of a linear bandit recommendation system and its users, whose preferences are drawn towards the recommendations made by the algorithm. We describe a…
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Taxonomy
TopicsOpinion Dynamics and Social Influence
