首页> 美国卫生研究院文献>Analytical Cellular Pathology : the Journal of the European Society for Analytical Cellular Pathology >Opening the Black Box: the Relationship between Neural Networks and Linear Discriminant Functions
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Opening the Black Box: the Relationship between Neural Networks and Linear Discriminant Functions

机译:打开黑匣子:神经网络与线性判别函数之间的关系

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摘要

Over the last ten years feed‐forward neural networks have become a popular tool for statistical decision making. During this time, they have been applied in many fields, including cytological classification. Neural networks are often treated as a black box, whose inner workings are concealed from the researcher. This is unfortunate, since the inner workings of a neural network can be understood in a manner similar to that of a linear discriminant function, which is the standard tool that researchers use for decision making.This paper discusses feed‐forward neural networks and some methods to improve their performance for classification problems. Their relationship to discriminant functions will be examined for a simple two‐dimensional classification problem.
机译:在过去的十年中,前馈神经网络已成为统计决策的流行工具。在这段时间内,它们已应用于许多领域,包括细胞学分类。神经网络通常被视为黑匣子,其内部工作机制对研究人员而言是隐藏的。这是不幸的,因为可以用类似于线性判别函数的方式来理解神经网络的内部工作,线性判别函数是研究人员用于决策的标准工具。本文讨论了前馈神经网络和一些方法。改善其分类问题的性能。将针对简单的二维分类问题检查它们与判别函数的关系。

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