Fréchet Sufficient Dimension Reduction for Metric Space-Valued Data via Distance Covariance
收藏Taylor & Francis Group2025-12-22 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Fr_chet_Sufficient_Dimension_Reduction_for_Metric_Space-Valued_Data_via_Distance_Covariance/30933363/1
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资源简介:
We propose a novel Fréchet sufficient dimension reduction (SDR) method based on kernel distance covariance, tailored for metric-space-valued responses such as count data, probability densities, and other complex structures. The method leverages a kernel-based transformation to map metric-space-valued responses into a feature space, enabling efficient dimension reduction. By incorporating kernel distance covariance, the proposed approach offers enhanced flexibility and adaptability for datasets with diverse and non-Euclidean characteristics. The effectiveness of the method is demonstrated through synthetic simulations and several real-world applications. In all cases, the proposed method runs faster and consistently outperforms the existing Fréchet SDR approaches, demonstrating its broad applicability and robustness in addressing complex data challenges.
提供机构:
Zhang, Teng; Li, Kang; Huang, Hsin-Hsiung; Yu, Feng
创建时间:
2025-12-22



