Robust machine learning of the complex-valued neurons

Manmohan Shukla, B. Tripathi
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Abstract

Last two decades have witnessed tremendous work in the field of Neurocomputing. A neural network works like a distributed processor which runs parallel. A neural network consists of processing units and the attributes of these units are to acquire knowledge by the virtue of a training process and storing this experimental knowledge in synaptic weights so that it is available for future use. In the present scenario the researchers are developing Artificial Neural Networks (Single / Multilayer) for solving multidimensional problems such as pattern recognition, prediction, optimization, associative memory, control and classifier since these are identified as robust tool various applications. The conventional parameters of Neural Network are generally real numbers and these parameters are only capable to deal with real valued data. But, according to the latest scenario in the field, there is requirement of analysis of high-dimensional data. Therefore, high-dimensional neural networks like CVNN came into the existence. Due to their diversity and abundance it is now becoming difficult to represent Neural Networks in complex domain consequently they started facing representational problems.
复值神经元的鲁棒机器学习
在过去的二十年里,神经计算领域取得了巨大的成就。神经网络就像一个并行运行的分布式处理器。神经网络由处理单元组成,这些处理单元的属性是通过训练过程获取知识,并将这些实验知识存储在突触权重中,以便将来使用。在目前的情况下,研究人员正在开发人工神经网络(单层/多层),以解决多维问题,如模式识别,预测,优化,联想记忆,控制和分类器,因为这些被确定为各种应用的鲁棒工具。神经网络的传统参数一般为实数,这些参数只能处理实数值的数据。但是,根据该领域的最新场景,对高维数据的分析提出了要求。因此,像CVNN这样的高维神经网络出现了。由于神经网络的多样性和丰富性,神经网络在复杂领域的表征变得越来越困难,因此神经网络开始面临表征问题。
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