王才兴助理教授
办公地址:南京市江宁区苏源大道79号文科综合楼 必威betway西汉姆
邮箱:wangcaixing96@gmail.com
基本信息

主要研究方向包括统计机器学习、非参数方法、分位数回归等。

研究领域

主要研究方向包括统计机器学习、非参数方法、分位数回归等。

奖励与荣誉
项目经历
代表论文成果

Journal Papers (∗ and † refer to corresponding author and equal contributions (or Alphabet ordering))

1. Xingdong Feng†, Xin He*†, Yuling Jiao†, Lican Kang*†, Caixing Wang†. Deep nonparametric quantile regression under covariate shift. Journal of Machine Learning Research 25 (385), 1-50.

2. Caixing Wang, Tao Li, Xinyi Zhang, Xingdong Feng, Xin He*. Communication efficient nonparametric quantile regression via random features. Journal of Computational and Graphical Statistics, 2024, 33(4), 1175–1184.

3. Xingdong Feng*, Qiaochu Liu, Caixing Wang. Statistics  Probability Letters 192, 109680, 2023.


Conference Papers

1. Caixing Wang, Xingdong Feng*. Optimal kernel quantile learning with random features. International Conference on Machine Learning, 2024, 235: 50419-50452, spotlight.

2. Caixing Wang*, Ziliang Shen. Distributed high-dimensional quantile regression: estimation efficiency and support recovery. International Conference on Machine Learning , 2024, 235: 51415-51441, spotlight.

3. Chao Wang, Xin He*, Xin Bing, Caixing Wang∗. Towards theoretical understanding of learning large-scale dependent data via random features. International Conference on Machine Learning, 2024, 235: 50118-50142, spotlight.

4. Xingdong Feng†, Xin He†, Caixing Wang∗†, Chao Wang†, Jingnan Zhang†. Towards a unified analysis of kernel-based methods under covariate shift. Advances in Neural Information Processing Systems, 2023, 36: 73839-73851, poster.


Preprints

1. Chao Wang†, Caixing Wang†, Xin He, Xingdong Feng. Transfer Learning for Kernel-based Regression. Journal of American Statistical Association, major revision.

2. Caixing Wang, Ziliang Shen, Shaoli Wang, Xingdong Feng. Estimation and inference on distributed high-dimensional quantile regression: double-smoothing and debiasing. Under review.

3. Qiang Heng, Caixing Wang*. Inertial quadratic majorization minimization with application to kernel regularized learning. Under review.

4. Fang Chen, Caixing Wang*. Estimation of conditional extremiles in reproducing kernel Hilbert spaces with application to large commercial banks data. Under review.

5. Ziliang Shen†, Caixing Wang†, Shaoli Wang†, Yibo Yan†. High-dimensional differentially private quantile regression: distributed estimation and statistical inference. Under review.



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