Materialization Optimizations for Feature Selection Workloads

IF 2.2 2区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Ce Zhang, Arun Kumar, C. Ré
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引用次数: 148

Abstract

There is an arms race in the data management industry to support statistical analytics. Feature selection, the process of selecting a feature set that will be used to build a statistical model, is widely regarded as the most critical step of statistical analytics. Thus, we argue that managing the feature selection process is a pressing data management challenge. We study this challenge by describing a feature selection language and a supporting prototype system that builds on top of current industrial R-integration layers. From our interactions with analysts, we learned that feature selection is an interactive human-in-the-loop process, which means that feature selection workloads are rife with reuse opportunities. Thus, we study how to materialize portions of this computation using not only classical database materialization optimizations but also methods that have not previously been used in database optimization, including structural decomposition methods (like QR factorization) and warmstart. These new methods have no analogue in traditional SQL systems, but they may be interesting for array and scientific database applications. On a diverse set of datasets and programs, we find that traditional database-style approaches that ignore these new opportunities are more than two orders of magnitude slower than an optimal plan in this new trade-off space across multiple R backends. Furthermore, we show that it is possible to build a simple cost-based optimizer to automatically select a near-optimal execution plan for feature selection.
特征选择工作负载的物化优化
在数据管理行业中,有一场支持统计分析的军备竞赛。特征选择,即选择一个特征集用于建立统计模型的过程,被广泛认为是统计分析中最关键的一步。因此,我们认为管理特征选择过程是一项紧迫的数据管理挑战。我们通过描述一种特征选择语言和一个建立在当前工业r集成层之上的支持原型系统来研究这一挑战。从我们与分析师的交互中,我们了解到功能选择是一个交互的人在循环过程,这意味着功能选择工作负载充满了重用的机会。因此,我们不仅使用经典的数据库物化优化,而且还使用以前未在数据库优化中使用的方法,包括结构分解方法(如QR分解)和warmstart,来研究如何物化该计算的部分。这些新方法在传统的SQL系统中没有类似的东西,但是对于数组和科学数据库应用程序来说,它们可能很有趣。在不同的数据集和程序中,我们发现忽略这些新机会的传统数据库风格方法比跨多个R后端的新权衡空间中的最佳计划慢两个数量级以上。此外,我们展示了构建一个简单的基于成本的优化器来自动选择一个接近最优的执行计划来进行特征选择是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACM Transactions on Database Systems
ACM Transactions on Database Systems 工程技术-计算机:软件工程
CiteScore
5.60
自引率
0.00%
发文量
15
审稿时长
>12 weeks
期刊介绍: Heavily used in both academic and corporate R&D settings, ACM Transactions on Database Systems (TODS) is a key publication for computer scientists working in data abstraction, data modeling, and designing data management systems. Topics include storage and retrieval, transaction management, distributed and federated databases, semantics of data, intelligent databases, and operations and algorithms relating to these areas. In this rapidly changing field, TODS provides insights into the thoughts of the best minds in database R&D.
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