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A Hybrid System for Probability Estimation in Multiclass Problems Combining SVMs and Neural Networks

机译:SVM和神经网络组合多种多组问题的概率估计混合系统

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This paper addresses the problem of probability estimation in Multiclass classification tasks combining two well-known data mining techniques: Support Vector Machines and Neural Networks. We present an algorithm which uses both techniques in a two-step procedure. The first step employs Support Vector Machines within a One-vs-All reduction from multiclass to binary approach to obtain the distances between each observation and the Support Vectors representing the classes. The second step uses these distances as inputs for a Neural Network, built with an entropy cost function and softmax transfer function for the output layer where class membership is used for training. Consequently, this network estimates probabilities of class membership for new observations. A benchmark using different databases demonstrates that the proposed algorithm is highly competitive with the most recent techniques for multiclass probability estimation.
机译:本文解决了组合两种众所周知的数据挖掘技术的多字符分类任务中概率估计问题:支持向量机和神经网络。我们介绍了一种在两步过程中使用两种技术的算法。第一步采用来自多字符到二进制方法的一对VS-all减少内的支持向量机,以获得表示类的每个观察和支持向量之间的距离。第二步使用这些距离作为神经网络的输入,内置具有熵成本函数和SoftMax传递函数的输出层,其中类成员资格用于培训。因此,该网络估计课程成员资格持有新观察的概率。使用不同数据库的基准表明,该算法具有高竞争力的多种多组概率估计的技术。

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