大规模不确定性管理系统:学习和利用您的数据

S. Babu, S. Guha, Kamesh Munagala
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引用次数: 0

摘要

数据库社区在捕获、表示和查询不确定数据方面取得了快速进展。概率数据库将派生元组中的固有不确定性捕获为概率估计。数据采集和流系统可以生成非常大且随时间变化的数据集的简洁摘要。本教程介绍了利用不确定数据的自然下一步:我们如何有效和定量地确定要学习什么、如何学习以及学习多少,以便根据可用的不精确信息做出正确的决策。本教程中的材料来自一系列领域,包括数据库系统、控制和信息论、运筹学、凸优化和统计学习。本教程的重点是在数据库上下文中施加的自然约束,以及从优化的角度来看对不精确信息的需求。我们既展望过去,也展望未来;讨论可以作为数据库研究人员和从业者指南的通用工具和技术,并列举未来的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-scale uncertainty management systems: learning and exploiting your data
The database community has made rapid strides in capturing, representing, and querying uncertain data. Probabilistic databases capture the inherent uncertainty in derived tuples as probability estimates. Data acquisition and stream systems can produce succinct summaries of very large and time-varying datasets. This tutorial addresses the natural next step in harnessing uncertain data: How can we efficiently and quantifiably determine what, how, and how much to learn in order to make good decisions based on the imprecise information available. The material in this tutorial is drawn from a range of fields including database systems, control and information theory, operations research, convex optimization, and statistical learning. The focus of the tutorial is on the natural constraints that are imposed in a database context and the demands of imprecise information from an optimization point of view. We look both into the past as well as into the future; to discuss general tools and techniques that can serve as a guide to database researchers and practitioners, and to enumerate the challenges that lie ahead.
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