Traceable Group-Wise Self-Optimizing Feature Transformation Learning: A Dual Optimization Perspective
Meng Xiao, Dongjie Wang, Min Wu, Kunpeng Liu, Hui Xiong, Yuanchun, Zhou, Yanjie Fu

TL;DR
This paper introduces an advanced, traceable, self-optimizing feature transformation framework that uses reinforcement learning and graph-based representations to automatically improve feature spaces for machine learning tasks.
Contribution
It extends previous work by integrating graph-based state representations and actor-critic optimization to enhance effectiveness and generalization of feature transformation learning.
Findings
Improved feature transformation performance demonstrated through extensive experiments.
Enhanced model convergence speed with actor-critic training.
Better capture of feature interactions using graph-based representations.
Abstract
Feature transformation aims to reconstruct an effective representation space by mathematically refining the existing features. It serves as a pivotal approach to combat the curse of dimensionality, enhance model generalization, mitigate data sparsity, and extend the applicability of classical models. Existing research predominantly focuses on domain knowledge-based feature engineering or learning latent representations. However, these methods, while insightful, lack full automation and fail to yield a traceable and optimal representation space. An indispensable question arises: Can we concurrently address these limitations when reconstructing a feature space for a machine-learning task? Our initial work took a pioneering step towards this challenge by introducing a novel self-optimizing framework. This framework leverages the power of three cascading reinforced agents to automatically…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Topic Modeling · Machine Learning and ELM
Methodsfail · Q-Learning
