Materialization Optimizations for Feature Selection Workloads

Author:

Zhang Ce1,Kumar Arun2,Ré Christopher1

Affiliation:

1. Stanford University, Stanford, CA

2. University of Wisconsin--Madison

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.

Funder

Defense Advanced Research Projects Agency (DARPA) XDATA

Google

Office of Naval Research

DEFT

Toshiba

DARPA's MEMEX program and SIMPLEX program

National Science Foundation (NSF) CAREER

National Institute of Biomedical Imaging and Bioengineering

trans-NIH Big Data to Knowledge

Sloan Research Fellowship

Moore Foundation

American Family Insurance

National Institutes of Health

Microsoft Jim Gray Systems Lab

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems

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