金字塔:利用计数特征增强大数据保护的选择性

Mathias Lécuyer, Riley Spahn, Roxana Geambasu, Tzu-Kuo Huang, S. Sen
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引用次数: 10

摘要

对于越来越多的收集、储存和货币化数据的组织来说,保护大量数据是一项艰巨的挑战。区分实际需要的数据和“以防万一”收集的数据的能力将帮助这些组织限制后者遭受攻击的风险。一种自然的方法可能是监视数据的使用,并在可访问的存储中仅保留正在使用的数据的工作集,未使用的数据可以被驱逐到高度保护的存储中。然而,今天的许多大数据应用程序依赖于机器学习(ML)工作负载,这些工作负载通过访问整个数据存储来定期进行再训练,从而暴露在攻击之下。训练集最小化方法,如计数特征化,通常用于限制训练ML工作负载所需的数据,以提高性能或可扩展性。我们提出金字塔,一个有限暴露的数据管理系统,建立在计数功能,以加强数据保护。因此,Pyramid独特地引入了利用训练集最小化方法将严谨性和选择性灌输到大数据管理中的想法和概念验证。我们将Pyramid整合到Spark Velox中,这是一个基于ml的目标定位和个性化框架。我们在三个应用程序上对其进行了评估,并表明金字塔在训练不到1%的原始数据时接近了最先进的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pyramid: Enhancing Selectivity in Big Data Protection with Count Featurization
Protecting vast quantities of data poses a daunting challenge for the growing number of organizations that collect, stockpile, and monetize it. The ability to distinguish data that is actually needed from data collected "just in case" would help these organizations to limit the latter's exposure to attack. A natural approach might be to monitor data use and retain only the working-set of in-use data in accessible storage, unused data can be evicted to a highly protected store. However, many of today's big data applications rely on machine learning (ML) workloads that are periodically retrained by accessing, and thus exposing to attack, the entire data store. Training set minimization methods, such as count featurization, are often used to limit the data needed to train ML workloads to improve performance or scalability. We present Pyramid, a limited-exposure data management system that builds upon count featurization to enhance data protection. As such, Pyramid uniquely introduces both the idea and proof-of-concept for leveraging training set minimization methods to instill rigor and selectivity into big data management. We integrated Pyramid into Spark Velox, a framework for ML-based targeting and personalization. We evaluate it on three applications and show that Pyramid approaches state-of-the-art models while training on less than 1% of the raw data.
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