Technical Perspective: Graph Theory for Data Privacy: A New Approach for Complex Data Flows

Elena Ferrari
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Abstract

Nearly all of the world's population now uses online services that request personal information, covering almost every aspect of our lives. The abundance of personal data in digital form has brought incredible benefits to end users, enabling them to access personalized and advanced services based on the analysis of the data collected. This capability has dramatically improved the user experience in various application domains, ranging from healthcare to e-commerce, finance, logistics, and entertainment, to name a few. Numerous technological advancements in the field of big data have enabled this massive processing of personal data, and recent advances in AI data processing capabilities will expand the ways in which service providers will use personal data in the coming years. Machine learning algorithms, powered by AI, will be used to make increasingly accurate predictions about user behavior by uncovering hidden correlations within massive data sets. There is therefore a tension between the desire to fully exploit personal data in such ecosystems and the need to provide strong privacy and transparency guarantees to the individuals whose data is being exploited. Privacy protection is further complicated because data processing is typically not performed in isolation but through pipelines of different services, with each step making inferences about the personal data consumed by the services in subsequent steps.
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技术视角:数据隐私的图论:复杂数据流的新方法
目前,全球几乎所有人口都在使用要求提供个人信息的在线服务,这些服务几乎涵盖了我们生活的方方面面。大量数字形式的个人数据为终端用户带来了难以置信的好处,使他们能够根据对所收集数据的分析,获得个性化的高级服务。这种能力极大地改善了从医疗保健到电子商务、金融、物流和娱乐等各种应用领域的用户体验。大数据领域的众多技术进步促成了对个人数据的大规模处理,而人工智能数据处理能力的最新进展将在未来几年拓展服务提供商使用个人数据的方式。人工智能驱动的机器学习算法将通过发现海量数据集中隐藏的相关性,对用户行为做出越来越准确的预测。因此,既希望在此类生态系统中充分利用个人数据,又需要为数据被利用的个人提供强有力的隐私和透明度保障,这两者之间存在着矛盾。由于数据处理通常不是孤立进行的,而是通过不同服务的流水线进行的,每个步骤都会对服务在后续步骤中使用的个人数据进行推断,因此隐私保护变得更加复杂。
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