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arxiv: 1709.07150 · v1 · pith:4NBGQY26new · submitted 2017-09-21 · 💻 cs.AI · cs.LG· stat.ML

Feature Engineering for Predictive Modeling using Reinforcement Learning

classification 💻 cs.AI cs.LGstat.ML
keywords featureengineeringgivenmodelingprocesserrorexplorationinvolves
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Feature engineering is a crucial step in the process of predictive modeling. It involves the transformation of given feature space, typically using mathematical functions, with the objective of reducing the modeling error for a given target. However, there is no well-defined basis for performing effective feature engineering. It involves domain knowledge, intuition, and most of all, a lengthy process of trial and error. The human attention involved in overseeing this process significantly influences the cost of model generation. We present a new framework to automate feature engineering. It is based on performance driven exploration of a transformation graph, which systematically and compactly enumerates the space of given options. A highly efficient exploration strategy is derived through reinforcement learning on past examples.

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