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Automated synthesis of feature functions for pattern detection

机译:自动综合特征功能以进行模式检测

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In pattern detection systems, the general techniques of feature extraction and selection perform linear transformations from primitive feature vectors to new vectors of lower dimensionality. At times, new extracted features might be linear combinations of some primitive features that are not able to provide better classification accuracy. To solve this problem, we propose the integration of genetic programming and the expectation maximization algorithm (GP-EM) to automatically synthesize feature functions based on primitive input features for breast cancer detection. With the Gaussian mixture model, the proposed algorithm is able to perform nonlinear transformations of primitive feature vectors and data modeling simultaneously. Compared to the performance of other algorithms, such us the support vector machine, multi-layer perceptrons, inductive machine learning and logistic regression, which all used the entire primitive feature set, the proposed algorithm achieves a higher recognition rate by using one single synthesized feature function.
机译:在模式检测系统中,特征提取和选择的一般技术会执行从原始特征向量到较低维新向量的线性转换。有时,新提取的特征可能是某些原始特征的线性组合,这些原始特征无法提供更好的分类精度。为解决此问题,我们提出了遗传规划与期望最大化算法(GP-EM)的集成,以基于原始输入特征自动合成特征函数以进行乳腺癌检测。利用高斯混合模型,所提出的算法能够同时执行原始特征向量的非线性变换和数据建模。与支持向量机,多层感知器,归纳式机器学习和逻辑回归等其他算法的性能相比,这些算法都使用了整个原始特征集,因此该算法通过使用一个综合特征即可获得更高的识别率功能。

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