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Xuehu Zhu, Qiming Zhang, Lixing Zhu, Jun Zhang & Luoyao Yu. (2022) Specification Testing of Regression Models with Mixed Discrete and Continuous Predictors. Journal of Business & Economic Statistics 0:0, pages 1-15.
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Pierre Masselot, Fateh Chebana, Céline Campagna, Éric Lavigne, Taha B M J Ouarda & Pierre Gosselin. (2023) Constrained groupwise additive index models. Biostatistics 24:4, pages 1066-1084.
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Xuehu Zhu, Jun Lu, Jun Zhang & Lixing Zhu. (2021) Testing for conditional independence: A groupwise dimension reduction‐based adaptive‐to‐model approach. Scandinavian Journal of Statistics 48:2, pages 549-576.
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R. Krishnan, V. A. Samaranayake & S. Jagannathan. (2019) A Multi-Step Nonlinear Dimension-Reduction Approach with Applications to Big Data. IEEE Transactions on Knowledge and Data Engineering 31:12, pages 2249-2261.
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R. Krishnan, V.A. Samaranayake & S. Jagannathan. (2019) A Hierarchical Dimension Reduction Approach for Big Data with Application to Fault Diagnostics. Big Data Research 18, pages 100121.
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Hung Hung & Henry Horng-Shing Lu. (2017) A review on the generalization of sufficient dimension reduction methods with the additional information. Wiley Interdisciplinary Reviews: Computational Statistics 9:4, pages e1401.
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