Impact of Rankings and Personalized Recommendations in Marketplaces
Journal:
arXiv
Published Date:
Jun 3, 2025
Abstract
Individuals often navigate several options with incomplete knowledge of their
own preferences. Information provisioning tools such as public rankings and
personalized recommendations have become central to helping individuals make
choices, yet their value proposition under different marketplace environments
remains unexplored. This paper studies a stylized model to explore the impact
of these tools in two marketplace settings: uncapacitated supply, where items
can be selected by any number of agents, and capacitated supply, where each
item is constrained to be matched to a single agent. We model the agents
utility as a weighted combination of a common term which depends only on the
item, reflecting the item's population level quality, and an idiosyncratic
term, which depends on the agent item pair capturing individual specific
tastes. Public rankings reveal the common term, while personalized
recommendations reveal both terms. In the supply unconstrained settings, both
public rankings and personalized recommendations improve welfare, with their
relative value determined by the degree of preference heterogeneity. Public
rankings are effective when preferences are relatively homogeneous, while
personalized recommendations become critical as heterogeneity increases. In
contrast, in supply constrained settings, revealing just the common term, as
done by public rankings, provides limited benefit since the total common value
available is limited by capacity constraints, whereas personalized
recommendations, by revealing both common and idiosyncratic terms,
significantly enhance welfare by enabling agents to match with items they
idiosyncratically value highly. These results illustrate the interplay between
supply constraints and preference heterogeneity in determining the
effectiveness of information provisioning tools, offering insights for their
design and deployment in diverse settings.