面向大数据的分布式计算与推理

IF 7.4 1区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Ling Zhou, Ziyang Gong, Pengcheng Xiang
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引用次数: 0

摘要

由于计算设施的限制或数据隐私的考虑,数据分布在不同的站点上。传统的集中式方法——即所有数据集在一个中央计算设施中存储和处理——在实践中并不适用。因此,有必要开发具有良好推理或预测准确性的分布式学习方法,同时保持个人数据的自由或遵守保护隐私的政策和法规。在本文中,我们介绍了分布式学习的基本思想,并对各种分布式学习方法进行了选择性回顾,这些方法根据其统计准确性、计算效率、异质性和隐私性进行了分类。这种分类有助于从不同方面评估新提出的方法。此外,我们还提供了涵盖不同统计学习框架下统计等效性和计算效率的现有理论结果的最新描述。最后,我们提供了现有的软件实现和基准数据集,并讨论了未来的研究机会。预计《统计年鉴及其应用》第11卷的最终在线出版日期为2024年3月。修订后的估计数请参阅http://www.annualreviews.org/page/journal/pubdates。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Computing and Inference for Big Data
Data are distributed across different sites due to computing facility limitations or data privacy considerations. Conventional centralized methods—those in which all datasets are stored and processed in a central computing facility—are not applicable in practice. Therefore, it has become necessary to develop distributed learning approaches that have good inference or predictive accuracy while remaining free of individual data or obeying policies and regulations to protect privacy. In this article, we introduce the basic idea of distributed learning and conduct a selected review on various distributed learning methods, which are categorized by their statistical accuracy, computational efficiency, heterogeneity, and privacy. This categorization can help evaluate newly proposed methods from different aspects. Moreover, we provide up-to-date descriptions of the existing theoretical results that cover statistical equivalency and computational efficiency under different statistical learning frameworks. Finally, we provide existing software implementations and benchmark datasets, and we discuss future research opportunities.Expected final online publication date for the Annual Review of Statistics and Its Application, Volume 11 is March 2024. Please see http://www.annualreviews.org/page/journal/pubdates for revised estimates.
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来源期刊
Annual Review of Statistics and Its Application
Annual Review of Statistics and Its Application MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-STATISTICS & PROBABILITY
CiteScore
13.40
自引率
1.30%
发文量
29
期刊介绍: The Annual Review of Statistics and Its Application publishes comprehensive review articles focusing on methodological advancements in statistics and the utilization of computational tools facilitating these advancements. It is abstracted and indexed in Scopus, Science Citation Index Expanded, and Inspec.
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