TY - JOUR
T1 - A distributed minimum average variance estimation for sufficient dimension reduction
AU - Dai, Shuang
AU - Ming, Jingsi
AU - Yu, Zhou
N1 - Publisher Copyright:
© (2025), (International Press). All rights reserved.
PY - 2025
Y1 - 2025
N2 - Minimum average variance estimation (MAVE) is a powerful method to estimate the dimension reduction directions of the central mean subspace. However, when analyzing the Boeing 737 data with more than 600000 samples, the classical MAVE method would suffer from significant computational burden. To address this issue, we introduce a distributed minimum average variance estimation (distMAVE) methodology for sufficient dimension reduction by adopting a distributed computing system. The proposed distMAVE method is able to handle large datasets and make a balance between estimation accuracy and computation efficiency. The asymptotic properties of the distributed estimators are proved, and a practical algorithm is provided for implementation. In addition to the theoretical results, we also demonstrate the effectiveness of the distMAVE method through simulation studies and Boeing 737 dataset.
AB - Minimum average variance estimation (MAVE) is a powerful method to estimate the dimension reduction directions of the central mean subspace. However, when analyzing the Boeing 737 data with more than 600000 samples, the classical MAVE method would suffer from significant computational burden. To address this issue, we introduce a distributed minimum average variance estimation (distMAVE) methodology for sufficient dimension reduction by adopting a distributed computing system. The proposed distMAVE method is able to handle large datasets and make a balance between estimation accuracy and computation efficiency. The asymptotic properties of the distributed estimators are proved, and a practical algorithm is provided for implementation. In addition to the theoretical results, we also demonstrate the effectiveness of the distMAVE method through simulation studies and Boeing 737 dataset.
KW - Central mean subspace
KW - Distributed computing
KW - Minimum average variance estimation
KW - Sufficient dimension reduction
UR - https://www.scopus.com/pages/publications/85216245075
U2 - 10.4310/SII.250118021553
DO - 10.4310/SII.250118021553
M3 - 文章
AN - SCOPUS:85216245075
SN - 1938-7989
VL - 18
SP - 315
EP - 332
JO - Statistics and its Interface
JF - Statistics and its Interface
IS - 3
ER -