Effects of data complexity on the intelligent diagnostic reasoning

Arash Marzi, H. Marzi
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引用次数: 2

Abstract

The objective was to train several Artificial Neural Networks (ANNs) with different training functions in order to gain an understanding of the effect of dataset complexity on performance. The utilization of varying training functions permitted ANN diversity; and allowing for enhanced diagnostic reasoning in classification. This improvement is achieved by expediting training stage, calibrating classification. The proposed technique is applied to a number of dataset to verify performance improvements. Particular application of the proposed technique is demonstrated by applying methodology for medical diagnostics.
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数据复杂性对智能诊断推理的影响
目的是训练几个具有不同训练函数的人工神经网络(ann),以了解数据集复杂性对性能的影响。利用不同的训练函数允许人工神经网络的多样性;并允许在分类中增强诊断推理。这种改进是通过加快训练阶段,校准分类来实现的。将该技术应用于多个数据集以验证性能改进。提出的技术的具体应用是通过应用方法学医学诊断证明。
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