Data-Centric AI: Deep Generative Differentiable Feature Selection via Discrete Subsetting as Continuous Embedding Space Optimization
Feature Selection (FS), such as filter, wrapper, and embedded methods, aims to find the optimal feature subset for a given downstream task. However, in many real-world practices, 1) the criteria of FS vary across domains; 2) FS is brittle when data is a high-dimensional and small sample size. Can selected feature subsets be more generalized, accurate, and input dimensionality agnostic? We generalize this problem into a deep differentiable feature selection task and propose a new perspective: discrete feature subsetting as continuous embedding space optimization. We develop a generic and principled framework including a deep feature subset encoder, accuracy evaluator, decoder, and gradient ascent optimizer. This framework implements four steps: 1) features-accuracy training data preparation; 2) deep feature subset embedding; 3) gradient-optimized search; 4) feature subset reconstruction. We develop new technical insights: reinforcement as a training data generator, ensembles of diverse peer and exploratory feature selector knowledge for generalization, an effective embedding from feature subsets to continuous space along with joint optimizing reconstruction and accuracy losses to select accurate features. Experimental results demonstrate the effectiveness of the proposed method.
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