TY - JOUR
T1 - An Optimal Transport Approach for Selecting a Representative Subsample with Application in Efficient Kernel Density Estimation
AU - Zhang, Jingyi
AU - Meng, Cheng
AU - Yu, Jun
AU - Zhang, Mengrui
AU - Zhong, Wenxuan
AU - Ma, Ping
N1 - Publisher Copyright:
© 2022 American Statistical Association, Institute of Mathematical Statistics, and Interface Foundation of North America.
PY - 2023
Y1 - 2023
N2 - Subsampling methods aim to select a subsample as a surrogate for the observed sample. Such methods have been used pervasively in large-scale data analytics, active learning, and privacy-preserving analysis in recent decades. Instead of model-based methods, in this article, we study model-free subsampling methods, which aim to identify a subsample, that is, not confined by model assumptions. Existing model-free subsampling methods are usually built upon clustering techniques or kernel tricks. Most of these methods suffer from either a large computational burden or a theoretical weakness. In particular, the theoretical weakness is that the empirical distribution of the selected subsample may not necessarily converge to the population distribution. Such computational and theoretical limitations hinder the broad applicability of model-free subsampling methods in practice. We propose a novel model-free subsampling method by using optimal transport techniques. Moreover, we develop an efficient subsampling algorithm, that is, adaptive to the unknown probability density function. Theoretically, we show the selected subsample can be used for efficient density estimation by deriving the convergence rate for the proposed subsample kernel density estimator. We also provide the optimal bandwidth for the proposed estimator. Numerical studies on synthetic and real-world datasets demonstrate the performance of the proposed method is superior.
AB - Subsampling methods aim to select a subsample as a surrogate for the observed sample. Such methods have been used pervasively in large-scale data analytics, active learning, and privacy-preserving analysis in recent decades. Instead of model-based methods, in this article, we study model-free subsampling methods, which aim to identify a subsample, that is, not confined by model assumptions. Existing model-free subsampling methods are usually built upon clustering techniques or kernel tricks. Most of these methods suffer from either a large computational burden or a theoretical weakness. In particular, the theoretical weakness is that the empirical distribution of the selected subsample may not necessarily converge to the population distribution. Such computational and theoretical limitations hinder the broad applicability of model-free subsampling methods in practice. We propose a novel model-free subsampling method by using optimal transport techniques. Moreover, we develop an efficient subsampling algorithm, that is, adaptive to the unknown probability density function. Theoretically, we show the selected subsample can be used for efficient density estimation by deriving the convergence rate for the proposed subsample kernel density estimator. We also provide the optimal bandwidth for the proposed estimator. Numerical studies on synthetic and real-world datasets demonstrate the performance of the proposed method is superior.
KW - Density estimation
KW - Inverse transform sampling
KW - Optimal transport
KW - Star discrepancy
KW - Subsampling
UR - http://www.scopus.com/inward/record.url?scp=85133453632&partnerID=8YFLogxK
U2 - 10.1080/10618600.2022.2084404
DO - 10.1080/10618600.2022.2084404
M3 - Article
AN - SCOPUS:85133453632
SN - 1061-8600
VL - 32
SP - 329
EP - 339
JO - Journal of Computational and Graphical Statistics
JF - Journal of Computational and Graphical Statistics
IS - 1
ER -