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Odor detection and recognition with Support Vector Machines

机译:支持向量机用于气味检测和识别

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摘要

Pattern recognition techniques have widely been used in the context of odor recognition. The recognition of mixtures and simple odors as separate clusters is an untractable problem with some of the classical supervised methods. Recently a new paradigm has been introduced in which the detection problem can be seen as a learning from examples problem. In this paper we investigate odor recognition in this new perspective and in particular by using a novel learning scheme known as Support Vector Machines (SVM) which guarantees high generalization ability on the test set. We illustrate the basics of the theory of SVM and show its performance in comparison with Radial Basis network and the error backpropagation training method. The leave-one-out procedure has been used for all classifiers, in order to finding the near-optimal SVM parameter and both to reduce the generalization error and to avoid outliers.
机译:模式识别技术已广泛用于气味识别。对于某些经典的监督方法,将混合物和简单气味识别为单独的簇是一个难以解决的问题。最近,引入了新的范例,其中检测问题可以看作是对示例问题的学习。在本文中,我们将以这种新视角研究气味识别,尤其是通过使用一种称为支持向量机(SVM)的新颖学习方案,该方案可确保对测试集具有很高的泛化能力。我们阐述了支持向量机理论的基础,并与径向基网络和误差反向传播训练方法进行了比较。留一法程序已用于所有分类器,以便找到接近最佳的SVM参数,并且既可以减少泛化误差,又可以避免离群值。

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