Measuring Commonality in Recommendation of Cultural Content: Recommender Systems to Enhance Cultural Citizenship
Andres Ferraro, Gustavo Ferreira, Fernando Diaz, Georgina Born

TL;DR
This paper introduces a new metric called commonality to measure how recommendation systems promote shared cultural experiences across user populations, emphasizing cultural citizenship and diversity.
Contribution
It proposes the commonality metric as a novel way to evaluate cultural content recommendations, complementing existing metrics and focusing on societal impact.
Findings
Commonality captures properties of system behavior not reflected by traditional metrics.
Empirical comparison shows commonality's effectiveness in assessing cultural diversity.
Results suggest non-personalized interventions can enhance cultural citizenship.
Abstract
Recommender systems have become the dominant means of curating cultural content, significantly influencing the nature of individual cultural experience. While the majority of research on recommender systems optimizes for personalized user experience, this paradigm does not capture the ways that recommender systems impact cultural experience in the aggregate, across populations of users. Although existing novelty, diversity, and fairness studies probe how systems relate to the broader social role of cultural content, they do not adequately center culture as a core concept and challenge. In this work, we introduce commonality as a new measure that reflects the degree to which recommendations familiarize a given user population with specified categories of cultural content. Our proposed commonality metric responds to a set of arguments developed through an interdisciplinary dialogue…
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Taxonomy
Methodstravel james
