知识联盟:一个统一的、分层的隐私保护AI框架

Hongyu Li, D. Meng, Hong Wang, Xiaolin Li
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引用次数: 4

摘要

由于对数据隐私和安全的严格保护和监管,基于集中式数据集的传统机器学习面临着重大挑战,使得人工智能(AI)在许多关键任务和数据敏感的场景(如金融、政府和卫生)中变得不切实际。与此同时,大量的数据集分散在各个行业、组织、组织的不同单位或国际组织的不同分支机构的孤立孤岛中。这些宝贵的数据资源没有得到充分利用。为了推进人工智能理论和应用,我们提出了一个全面的框架(称为知识联盟- KF),通过在保护数据隐私和所有权的同时启用人工智能来应对这些挑战。除了联邦学习和安全多方计算的概念之外,KF由四个层次的联邦组成:(1)信息层,对数据进行低级的统计和计算,满足简单查询、搜索和简单运算的要求;(2)模型层面,支持训练、学习和推理;(3)认知层面,实现在不同层次的抽象和语境下的抽象特征表征;(4)知识层次,融合知识发现、表示和推理。进一步明确了知识联邦与其他相关研究领域的关系和区别。我们已经开发了一个KF的参考实现,称为iBond平台,以提供一个生产质量的KF平台,使金融、保险、营销和政府的工业应用成为可能。iBond平台还将帮助建立KF社区和一个全面的生态系统,并引领一种向安全、隐私保护和负责任的人工智能转变的新范式。据我们所知,知识联合是用于安全多方计算(统计、查询、搜索和低级操作)和学习(训练、表示、发现、推理和推理)的第一个分层统一框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Federation: A Unified and Hierarchical Privacy-Preserving AI Framework
With strict protections and regulations of data privacy and security, conventional machine learning based on centralized datasets is confronted with significant challenges, making artificial intelligence (AI) impractical in many mission-critical and data-sensitive scenarios, such as finance, government, and health. In the meantime, tremendous datasets are scattered in isolated silos in various industries, organizations, different units of an organization, or different branches of an international organization. These valuable data resources are well underused. To advance AI theories and applications, we propose a comprehensive framework (called Knowledge Federation- KF) to address these challenges by enabling AI while preserving data privacy and ownership. Beyond the concepts of federated learning and secure multi-party computation, KF consists of four levels of federation: (1) information level, low-level statistics and computation of data, meeting the requirements of simple queries, searching and simplistic operators; (2) model level, supporting training, learning, and inference; (3) cognition level, enabling abstract feature representation at various levels of abstractions and contexts; (4) knowledge level, fusing knowledge discovery, representation, and reasoning. We further clarify the relationship and differentiation between knowledge federation and other related research areas. We have developed a reference implementation of KF, called iBond Platform, to offer a production-quality KF platform to enable industrial applications in finance, insurance, marketing, and government. The iBond platform will also help establish the KF community and a comprehensive ecosystem and usher in a novel paradigm shift towards secure, privacy-preserving and responsible AI. As far as we know, knowledge federation is the first hierarchical and unified framework for secure multi-party computing (statistics, queries, searching, and low-level operations) and learning (training, representation, discovery, inference, and reasoning).
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