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首页> 外文期刊>Social science computer review >Artificial Intelligence and Inclusion: Formerly Gang-Involved Youth as Domain Experts for Analyzing Unstructured Twitter Data
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Artificial Intelligence and Inclusion: Formerly Gang-Involved Youth as Domain Experts for Analyzing Unstructured Twitter Data

机译:人工智能和包容性:曾是帮派青年的领域专家,用于分析非结构化Twitter数据

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摘要

Mining social media data for studying the human condition has created new and unique challenges. When analyzing social media data from marginalized communities, algorithms lack the ability to accurately interpret off-line context, which may lead to dangerous assumptions about and implications for marginalized communities. To combat this challenge, we hired formerly gang-involved young people as domain experts for contextualizing social media data in order to create inclusive, community-informed algorithms. Utilizing data from the Gang Intervention and Computer Science Project-a comprehensive analysis of Twitter data from gang-involved youth in Chicago-we describe the process of involving formerly gang-involved young people in developing a new part-of-speech tagger and content classifier for a prototype natural language processing system that detects aggression and loss in Twitter data. We argue that involving young people as domain experts leads to more robust understandings of context, including localized language, culture, and events. These insights could change how data scientists approach the development of corpora and algorithms that affect people in marginalized communities and who to involve in that process. We offer a contextually driven interdisciplinary approach between social work and data science that integrates domain insights into the training of qualitative annotators and the production of algorithms for positive social impact.
机译:挖掘用于研究人类状况的社交媒体数据带来了新的独特挑战。在分析来自边缘化社区的社交媒体数据时,算法缺乏准确解释脱机上下文的能力,这可能导致对边缘化社区的危险假设和影响。为了应对这一挑战,我们聘请了以前由帮派卷入的年轻人作为领域专家,以对社交媒体数据进行情境化,以创建包容性的,社区知情的算法。利用来自“帮派干预和计算机科学项目”的数据-对来自芝加哥的与帮派有关的年轻人的Twitter数据的全面分析-我们描述了使以前由帮派有关的年轻人参与开发新的词性标记和内容分类器的过程用于检测Twitter数据中的攻击和丢失的原型自然语言处理系统。我们认为,让年轻人成为领域专家可以使人们对背景(包括本地化语言,文化和事件)有更深刻的理解。这些见解可以改变数据科学家如何处理语料库和算法的开发,从而影响边缘化社区的人们以及参与该过程的人员。我们在社会工作和数据科学之间提供了一种上下文相关的跨学科方法,该方法将领域见解整合到定性注释者的培训中,并产生了对社会产生积极影响的算法。

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