Fairness and diversity in the recommendation and ranking of participatory media content

Muskaan, Mehak Preet Dhaliwal, Aaditeshwar Seth
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引用次数: 9

Abstract

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.
参与性媒体内容推荐和排名的公平性和多样性
在线参与式媒体平台允许用户之间进行一对多的交流,看到大量用户生成的内容,因此面临着能够向用户推荐这些内容的子集的问题。我们解决了推荐和排名这些内容的问题,这样关于一个话题的不同观点就能以公平和多样化的方式曝光。我们的模型是在一个基于语音的参与式媒体平台的背景下建立的,该平台运行在印度中部农村地区,面向低收入和文化水平较低的社区,该平台通过电话向用户播放音频信息,并允许他们贡献自己的信息。在本文中,我们描述了我们的模型,并使用来自平台的调用日志对其进行评估,以比较我们模型的公平性和多样性性能与目前遵循的手动编辑过程。我们的模型是通用的,也可以适用于其他参与式媒体平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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