基于惩罚对偶分解的大规模正则化Sumcor GCCA

Charilaos I. Kanatsoulis, Xiao Fu, N. Sidiropoulos, Mingyi Hong
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引用次数: 1

摘要

关联和(SUMCOR)广义典型相关分析(GCCA)旨在通过增强降维视图的两两相似性来生成多视图数据的低维表示。SUMCOR已经应用于各种各样的应用,包括盲分离、多语言词嵌入和跨模态检索。尽管SUMCOR具有np -硬度,但最近的工作已经提出了用于大规模处理它的有效算法。然而,现有的可扩展算法不容易扩展到包含结构正则化和先验信息-这对于存在异常值和建模不匹配的现实应用至关重要。在这项工作中,我们提出了一种新的大规模SUMCOR GCCA计算框架。该算法可以很容易地结合一套经常用于数据分析的结构正则器,具有轻量级更新和低内存复杂性,并且可以很容易地以并行方式实现。该算法还保证收敛到正则化SUMCOR问题的一个Karush-Kuhn-Tucker点。通过精心设计的仿真,验证了所提算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-Scale Regularized Sumcor GCCA via Penalty-Dual Decomposition
The sum-of-correlations (SUMCOR) generalized canonical correlation analysis (GCCA) aims at producing low-dimensional representations of multiview data via enforcing pairwise similarity of the reduced-dimension views. SUMCOR has been applied to a large variety of applications including blind separation, multilingual word embedding, and cross-modality retrieval. Despite the NP-hardness of SUMCOR, recent work has proposed effective algorithms for handling it at very large scale. However, the existing scalable algorithms are not easy to extend to incorporate structural regularization and prior information - which are critical for real-world applications where outliers and modeling mismatches are present. In this work, we propose a new computational framework for large-scale SUMCOR GCCA. The algorithm can easily incorporate a suite of structural regularizers which are frequently used in data analytics, has lightweight updates and low memory complexity, and can be easily implemented in a parallel fashion. The proposed algorithm is also guaranteed to converge to a Karush-Kuhn-Tucker (KKT) point of the regularized SUMCOR problem. Carefully designed simulations are employed to demonstrate the effectiveness of the proposed algorithm.
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