2022
DOI: 10.48550/arxiv.2205.14526
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Group-wise Reinforcement Feature Generation for Optimal and Explainable Representation Space Reconstruction

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… Show more

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