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Why Data Matters for Development? Exploring Data Justice, Micro-Entrepreneurship, Mobile Money and Financial Inclusion

机译:为什么要发展的数据很重要? 探索数据正义,微创,移动货币和金融包容性

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With the widespread extraction of very large datasets, artificial intelligence using machine learning hold the promise to address socio-economic problems such as poverty, environmental safety, food production, security and the spread of disease. These applications entail Big Data for Development in which social problems, poverty, food security and responses to climate disasters can be solved in the most efficient and effective manner. This brave new world of solving pressing problems through machine learning has several dark sides. A data divide is being created that leaves the most vulnerable populations out of the solutions being created while discriminating against those whose data is churned by obscure algorithms. Complex mathematical models together with computing algorithms produce scores that are used to evaluate the lives of the masses. These systems have scaled to enormous proportions, changing lives by affecting credit scores, job prospects and access to healthcare. The promise of fairness, transparency, cost-effectiveness and efficiency gives rise to powerful scoring algorithms that have the power to create mass devastation while discriminating against the most vulnerable. Questions arise as to: What injustices (types of injustice) are created by datafication of development? how can the injustices caused by the extraction, analysis and commoditization of data be alleviated? Who has access to and what is being done with private data? And for whose benefit or purpose is personal data being extracted? Such questions are explored through the contributions in on data justice, the use of ICTs by micro-Entrepreneurs, mobile money and financial inclusion offered through papers in this issue.
机译:随着非常大的数据集的广泛提取,使用机器学习的人工智能使得承诺解决贫困,环境安全,食品生产,安全和疾病传播等社会经济问题。这些应用程序需要大数据进行发展,从而可以以最有效和有效的方式解决对气候灾害的社会问题,贫困,粮食安全和对气候灾害的反应。这勇敢地通过机器学习解决压迫问题的新世界有几个黑暗的侧面。正在创建数据划分,这将使最脆弱的群体留出在判断由模糊算法被搅动的数据的鉴别的同时创建的解决方案。复杂的数学模型与计算算法一起产生用于评估群众的生活的分数。这些系统通过影响信用评分,工作前景和医疗保健来扩大到巨大比例,改变了生命。公平,透明度,成本效益和效率的承诺产生了强大的评分算法,这些算法具有创造大众破坏的能力,同时抵御最脆弱的群体。问题出现:由Data发行创建的不公正(不公正类型)?如何缓解由提取,分析和商品化引起的不公正?谁可以访问和私人数据正在进行的内容?为谁的利益或目的是提取的个人数据?通过关于数据正义的贡献,通过在本问题上通过文件提供的微型企业家,移动资金和金融包容性的贡献来探讨这些问题。

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