Trespassing the gates of research: identifying algorithmic mechanisms that can cause distortions and biases in academic social media

Luciana Monteiro Krebs, B. Zaman, Sonia Elisa Caregnato, D. Geerts, Vicente Grassi-Filho, N. Htun
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引用次数: 3

Abstract

PurposeThe use of recommender systems is increasing on academic social media (ASM). However, distinguishing the elements that may be influenced and/or exert influence over content that is read and disseminated by researchers is difficult due to the opacity of the algorithms that filter information on ASM. In this article, the purpose of this paper is to investigate how algorithmic mediation through recommender systems in ResearchGate may uphold biases in scholarly communication.Design/methodology/approachThe authors used a multi-method walkthrough approach including a patent analysis, an interface analysis and an inspection of the web page code.FindingsThe findings reveal how audience influences on the recommendations and demonstrate in practice the mutual shaping of the different elements interplaying within the platform (artefact, practices and arrangements). The authors show evidence of the mechanisms of selection, prioritization, datafication and profiling. The authors also substantiate how the algorithm reinforces the reputation of eminent researchers (a phenomenon called the Matthew effect). As part of defining a future agenda, we discuss the need for serendipity and algorithmic transparency.Research limitations/implicationsAlgorithms change constantly and are protected by commercial secrecy. Hence, this study was limited to the information that was accessible within a particular period. At the time of publication, the platform, its logic and its effects on the interface may have changed. Future studies might investigate other ASM using the same approach to distinguish potential patterns among platforms.Originality/valueContributes to reflect on algorithmic mediation and biases in scholarly communication potentially afforded by recommender algorithms. To the best of our knowledge, this is the first empirical study on automated mediation and biases in ASM.
突破研究的大门:识别可能导致学术社交媒体扭曲和偏见的算法机制
推荐系统在学术社交媒体(ASM)上的使用越来越多。然而,由于ASM信息过滤算法的不透明性,区分可能对研究人员阅读和传播的内容产生影响和/或施加影响的因素是困难的。在本文中,本文的目的是研究通过ResearchGate推荐系统的算法中介如何在学术交流中维护偏见。设计/方法/方法作者使用了一种多方法演练方法,包括专利分析、接口分析和对网页代码的检查。这些发现揭示了受众对建议的影响,并在实践中展示了平台内相互作用的不同元素(人工制品、实践和安排)的相互塑造。作者展示了选择,优先级,数据化和分析的机制的证据。作者还证实了该算法是如何增强杰出研究人员的声誉的(一种被称为马太效应的现象)。作为确定未来议程的一部分,我们讨论了对意外发现和算法透明度的需求。研究局限/启示算法不断变化,受商业保密保护。因此,这项研究仅限于在特定时期内可获得的信息。在发布时,平台、它的逻辑和它对界面的影响可能已经改变。未来的研究可能会使用相同的方法来研究其他ASM,以区分平台之间的潜在模式。原创性/价值有助于反思推荐算法可能提供的学术交流中的算法中介和偏见。据我们所知,这是ASM中自动中介和偏见的第一次实证研究。
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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