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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Adaptive algorithms for first principal eigenvector computation.
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Adaptive algorithms for first principal eigenvector computation.

机译:用于第一本征特征向量计算的自适应算法。

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摘要

The paper presents a unified framework to derive and analyze 10 different adaptive algorithms, some well-known, to compute the first principal eigenvector of the correlation matrix of a random vector sequence. Since adaptive principal eigenvector algorithms have originated from a diverse set of disciplines, including ad hoc methods, it is necessary to examine them in a unified framework. In a common framework consisting of five steps, we analyze the derivation, convergence, and rate results for many well-known algorithms as well as two new adaptive algorithms. In the process, we offer fresh perspectives on the known algorithms, and derive new results for others. The common framework also allows us to comparatively study the 10 algorithms. Finally, we show experimental results to support our analyses.
机译:本文提出了一个统一的框架,用于导出和分析10种不同的自适应算法(一些众所周知的算法),以计算随机向量序列相关矩阵的第一主要特征向量。由于自适应本征特征向量算法源自各种学科,包括临时方法,因此有必要在统一框架中对其进行研究。在一个由五个步骤组成的通用框架中,我们分析了许多著名算法以及两个新的自适应算法的推导,收敛和速率结果。在此过程中,我们将提供有关已知算法的新观点,并为其他算法得出新结果。通用框架还允许我们比较研究10种算法。最后,我们显示实验结果以支持我们的分析。

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