A Relational Framework for Classifier Engineering

Author:

Kimelfeld Benny1,Ré Christopher2

Affiliation:

1. Technion -- Israel Institute of Technology, Haifa, Israel

2. Stanford University, Stanford, CA

Abstract

In the design of analytical procedures and machine learning solutions, a critical and time-consuming task is that of feature engineering, for which various recipes and tooling approaches have been developed. In this article, we embark on the establishment of database foundations for feature engineering. We propose a formal framework for classification in the context of a relational database. The goal of this framework is to open the way to research and techniques to assist developers with the task of feature engineering by utilizing the database’s modeling and understanding of data and queries and by deploying the well-studied principles of database management. As a first step, we demonstrate the usefulness of this framework by formally defining three key algorithmic challenges. The first challenge is that of separability, which is the problem of determining the existence of feature queries that agree with the training examples. The second is that of evaluating the VC dimension of the model class with respect to a given sequence of feature queries. The third challenge is identifiability, which is the task of testing for a property of independence among features that are represented as database queries. We give preliminary results on these challenges for the case where features are defined by means of conjunctive queries, and, in particular, we study the implication of various traditional syntactic restrictions on the inherent computational complexity.

Funder

DEFT

MEMEX and SIMPLEX

DARPA's projects XDATA

Publisher

Association for Computing Machinery (ACM)

Subject

Information Systems

Reference49 articles.

1. Varun Aggarwal and Sassoon Kosian. 2011. Feature Selection and Dimension Reduction Techniques in SAS. Varun Aggarwal and Sassoon Kosian. 2011. Feature Selection and Dimension Reduction Techniques in SAS.

2. Exact learning of read-twice DNF formulas

3. An integrated development environment for faster feature engineering

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