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The Institutional Impacts of Algorithmic Distribution: Facebook and the Australian News Media

机译:算法分布的机构影响:Facebook和澳大利亚新闻媒体

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Since changing its algorithm in January 2018 to boost the content of family and friends over other content (including news), Facebook has signaled that it is less interested in news. However, the field is still trying to understand the long-term impacts of this change for news publishers. This is a problem because policymakers and legislators across the world are becoming concerned about the relationship between platforms and publishers. In particular, there are worries that platforms’ ability to make unilateral decisions about how their algorithms operate may harm the economic sustainability of journalism. This article provides some clarity around the relationship between these two parties through a longitudinal study of the Australian news media sector’s relationship with Facebook from 2014 to 2020, with a particular focus on the January 2018 algorithm change. We do this by analyzing Facebook data (2,082,804 posts from CrowdTangle) and external traffic data from 32 major Australian news outlets. These data are contextualized by additional desk research. We identify a range of trends including the decline of news sharing, the collapse in the performance of “social news,” the variable position of social media as a source of referral traffic, and, most critically, the diffused nature of the 2018 algorithm change. Our approach cannot make direct causal inferences. We can only identify trends in on-platform performance and referral traffic, which we then contextualize with industry reportage. However, the data provide vital longitudinal insights into the performance and responses of individual media outlets, news categories, and the Australian media sector as a whole during a critical moment of algorithmic change.
机译:自2018年1月改变其算法以提高家庭和朋友的内容,而不是其他内容(包括新闻),Facebook已经发出了对新闻的感兴趣。然而,该领域仍在努力了解新闻发布商变更的长期影响。这是一个问题,因为世界各地的政策制定者和立法者正在担心平台和出版商之间的关系。特别是,担心平台对他们的算法如何运作的单方面决定的能力可能会损害新闻的经济可持续性。本文通过2014年至2020年从澳大利亚新闻媒体部门与Facebook的关系的纵向研究提供了一些清晰的涵义与Facebook的关系,特别关注2018年1月算法的变化。我们通过分析Facebook数据(来自Crowdtangle的2,082,804个帖子)和来自32个主要的澳大利亚新闻网点的外部交通数据来实现这一点。这些数据由其他桌面研究进行了内容化。我们确定了一系列趋势,包括新闻共享的衰落,“社会新闻”的表现崩溃,社会媒体的可变地位作为推荐交通来源,以及最重视,2018年算法的扩散性质变化。我们的方法无法直接导致因果推论。我们只能识别平台绩效和推荐交通的趋势,从而与行业报告管理进行上下文。然而,在算法变化的关键时刻,这些数据提供了各种媒体网点,新闻类别和澳大利亚媒体扇区的性能和响应的重要纵向见解。

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