Fairness and Diversity in the Recommendation and Ranking of Participatory Media Content
This addresses fairness and diversity in content recommendation for low-income, less-literate communities using participatory media, but it is incremental as it adapts existing models to a specific context.
The paper tackles the problem of recommending and ranking user-generated content on participatory media platforms to ensure fair and diverse exposure of different viewpoints, evaluating models on a voice-based platform in rural India and showing performance comparable to manual editorial processes.
Online participatory media platforms that enable one-to-many communication among users, see a significant amount of user generated content and consequently face a problem of being able to recommend a subset of this content to its users. We address the problem of recommending and ranking this content such that different viewpoints about a topic get exposure in a fair and diverse manner. We build our model in the context of a voice-based participatory media platform running in rural central India, for low-income and less-literate communities, that plays audio messages in a ranked list to users over a phone call and allows them to contribute their own messages. In this paper, we describe our model and evaluate it using call-logs from the platform, to compare the fairness and diversity performance of our model with the manual editorial processes currently being followed. Our models are generic and can be adapted and applied to other participatory media platforms as well.