基于支持向量的自适应信道均衡分类

D. Diana, R. Hema, G. N. Kumar, R. Rohith Kumar
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引用次数: 0

摘要

支持向量机是一种新兴的机器学习技术,被认为是实现通信网络非线性均衡的工具。支持向量机的优点是允许发现更少的模型参数,同时比一些早期的系统需要更少的先前信息和启发式假设。支持向量机的优化过程也使用二次规划,这是一种经过充分研究和理解的数学规划范式。对于其他研究者已经利用神经网络研究过的非线性问题,进行了支持向量机模拟。这使得可以比较建议的非线性检测方法首先与其他方法,以评估其可行性。结果表明,支持向量机在非线性问题上优于神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector based classification for Adaptive Channel Equalization
Support vector machine, a newly developed machine learning technology, is suggested as a tool for carrying out nonlinear equalization in communication networks. Support vector machine has the benefit of allowing the discovery of fewer model parameters while requiring less previous information and heuristic assumptions than some earlier systems. A support vector machine's optimization process also uses quadratic programming, a well-researched and well-understood mathematical programming paradigm.On nonlinear topics that have already been researched by other researchers utilizing neural networks, support vector machine simulations are run. This makes it possible to compare the suggested approach for nonlinear detection first to other methods in order to assess its viability. Results demonstrate that support vector machines outperform neural networks on the nonlinear issues studied.
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