Feature Selection as Deep Sequential Generative Learning

Author:

Ying Wangyang1ORCID,Wang Dongjie2ORCID,Chen Haifeng3ORCID,Fu Yanjie1ORCID

Affiliation:

1. Arizona State University, School of Computing and Augmented Intelligence, Tempe, USA

2. Department of Computer Science, University of Kansas, Lawrence, USA

3. NEC Laboratories America Inc, Princeton, USA

Abstract

Feature selection aims to identify the most pattern-discriminative feature subset. In prior literature, filter (e.g., backward elimination) and embedded (e.g., Lasso) methods have hyperparameters (e.g., top-K, score thresholding) and tie to specific models, thus, hard to generalize; wrapper methods search a feature subset in a huge discrete space and is computationally costly. To transform the way of feature selection, we regard a selected feature subset as a selection decision token sequence and reformulate feature selection as a deep sequential generative learning task that distills feature knowledge and generates decision sequences. Our method includes three steps: (1) We develop a deep variational transformer model over a joint of sequential reconstruction, variational, and performance evaluator losses. Our model can distill feature selection knowledge and learn a continuous embedding space to map feature selection decision sequences into embedding vectors associated with utility scores. (2) We leverage the trained feature subset utility evaluator as a gradient provider to guide the identification of the optimal feature subset embedding; (3) We decode the optimal feature subset embedding to autoregressively generate the best feature selection decision sequence with autostop. Extensive experimental results show this generative perspective is effective and generic, without large discrete search space and expert-specific hyperparameters. The code is available at http://tinyurl.com/FSDSGL

Publisher

Association for Computing Machinery (ACM)

Reference54 articles.

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3. Wei Fan, Kunpeng Liu, Hao Liu, Ahmad Hariri, Dejing Dou, and Yanjie Fu. 2021. Autogfs: Automated group-based feature selection via interactive reinforcement learning. In Proceedings of the 2021 SIAM International Conference on Data Mining (SDM). SIAM, 342–350.

4. George Forman et al. 2003. An extensive empirical study of feature selection metrics for text classification. J. Mach. Learn. Res. 3, Mar (2003), 1289–1305.

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