Group-wise Reinforcement Feature Generation for Optimal and Explainable Representation Space Reconstruction
Dongjie Wang, Yanjie Fu, Kunpeng Liu, Xiaolin Li, Yan Solihin

TL;DR
This paper introduces a reinforcement learning-based method for automated, explicit, and optimal representation space reconstruction by iteratively generating and selecting features through a cascade of Markov Decision Processes.
Contribution
It proposes a novel group-wise reinforcement generation framework that integrates feature creation and selection for improved representation learning.
Findings
Demonstrates improved feature space reconstruction effectiveness.
Shows enhanced interpretability and explicitness of features.
Achieves better exploration efficiency and reward augmentation.
Abstract
Representation (feature) space is an environment where data points are vectorized, distances are computed, patterns are characterized, and geometric structures are embedded. Extracting a good representation space is critical to address the curse of dimensionality, improve model generalization, overcome data sparsity, and increase the availability of classic models. Existing literature, such as feature engineering and representation learning, is limited in achieving full automation (e.g., over heavy reliance on intensive labor and empirical experiences), explainable explicitness (e.g., traceable reconstruction process and explainable new features), and flexible optimal (e.g., optimal feature space reconstruction is not embedded into downstream tasks). Can we simultaneously address the automation, explicitness, and optimal challenges in representation space reconstruction for a machine…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Adversarial Robustness in Machine Learning · Machine Learning and Data Classification
MethodsFeature Selection
