随机生成的非线性模式识别变换

T. Calvert, T. Young
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引用次数: 14

摘要

在许多数学和工程问题中,应用变换后的解会更简单。提出了在信息处理问题中寻找离散数据变换的一般方法。该方法的主要特点是数据受约束的随机摄动,这确保了在变换空间中,问题在某种意义上更简单,并且保留了数据的局部结构。讨论了该技术在模式识别中的应用,其中对特征空间进行了变换,使得在原始空间中不可线性分离的类在变换后的空间中可以线性分离。该变换极大地简化了问题,并允许应用成熟的线性判别技术。该应用程序通过描述的许多示例进行了实现和测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Randomly Generated Nonlinear Transformations for Pattern Recognition
In many mathematical and engineering problems the solution is simpler after a transformation has been applied. A general method is proposed to find suitable transformations for discrete data in information processing problems. The main feature of the method is random perturbation of the data subject to constraints which ensure that, in the transformed space, the problem is in some sense simpler and that the local structure of the data is preserved. An application of this technique to pattern recognition is discussed where a transformation is found for the feature space such that classes, which are not linearly separable in the original space, become so in the transformed space. The transformation considerably simplifies the problem and allows well-developed linear discriminant techniques to be applied. This application was implemented and tested with a number of examples which are described.
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