Gaurav Goswami, Nalini K. Ratha, et al.
AAAI 2018
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 captures the space of given options. A highly efficient exploration strategy is derived through reinforcement learning on past examples.
Gaurav Goswami, Nalini K. Ratha, et al.
AAAI 2018
Nicholas Mastronarde, Deepak S. Turaga, et al.
IEEE Journal on Selected Areas in Communications
Sainyam Galhotra, Udayan Khurana, et al.
ICDM 2019
Jinghui Chen, Saket Sathe, et al.
SDM 2017