通过距离函数增强学习向量量化

Preeti Jorwal, Vijeta Khicha, Vipin Jain
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引用次数: 0

摘要

人工神经网络(Artificial Neural Network, ANN)代表了生物元件神经元之间的科学相似性。这些是计算模型,它们受到生物等效物的轻微刺激。人工智能和人工神经网络是计算机科学中两个相互刺激、相互交织的领域。人工神经网络是近三十年来广泛发展起来的面向人类的信息处理系统。研究人员已经使用人工神经网络来检测不同类型的疾病。在本文中,我们提出了一个混合函数与神经网络用于癌症和糖尿病疾病的检测。该方法对现有的距离函数进行了修改,提出了一种混合距离函数。我们已经将这个改进的距离函数用于疾病检测的监督学习向量量化模型的训练和测试。数据集取自《医学科学》,用于学习和检验。利用MATLAB工具进行各项实验。结果表明,增强的人工神经网络算法在检测癌症和糖尿病疾病方面的性能远远优于现有的人工神经网络。关键词:人工神经网络,人工智能,学习向量量化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancement over Learning Vector Quantization through Distance Function
Artificial Neural Network (ANN) represents the scientific similarity between neuron of biological elements. These are computational models, which lightly stimulated by their biological equivalents. AI and ANNs are two stimulating and intertwined arenas in computer science. ANNs are hominid ready information handling systems that are grown up extensively in last thirty years. Researchers have used ANN for detection of different types of diseases. In this paper, we have proposed a hybrid function used with ANN for detection of cancer and diabetes diseases. Basically, this approach modifies the existing distance function and proposed a hybrid distance function. We have used this modified distance function for training and testing of model in supervised learning vector quantization for detection of diseases. The data sets have been taken form Medical Science for providing learning and examining. The various experiments were performed using MATLAB tool. The results show that the performance of enhanced ANN algorithm is far better than existing ANN for detection of cancer and diabetes diseases. Keywords– Artificial Neural Network, artificial Intelligence, Learning Vector Quantization.
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