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Nature-Inspiration on Kernel Machines: Data Mining for Continuous and Discrete Variables

机译:内核机器的自然灵感:连续和离散变量的数据挖掘

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Kernel Machines, like Support Vector Machines, have been frequently used, with considerable success, in situations in which the input variables are given by real values. Furthermore, the nature of this machine learning algorithm allows extending its applications to deal with other kinds of systems with no vectorial information such as facial images, hand written texts, micro-array gene expressions, or protein chains. The behavior of a number of systems could be better explained if artificial infinite-precision variables were replaced by qualitative variables. Hence, the use of ordinal or interval scales on input variables would allow kernels to be denned for nature-inspired systems directly. In this contribution, two new kernels are designed for applying kernel machines to such systems described by qualitative variables (orders of magnitude or intervals). In addition, the structure of the feature space induced by this kernel is also analyzed.
机译:在输入变量由实数值给出的情况下,像支持向量机一样,内核机器也被频繁使用,并且取得了相当大的成功。此外,这种机器学习算法的性质允许扩展其应用程序,以处理没有矢量信息的其他类型的系统,例如面部图像,手写文本,微阵列基因表达或蛋白质链。如果用定性变量代替人工无限精度变量,则可以更好地解释许多系统的行为。因此,在输入变量上使用序数或区间标度将允许直接为自然启发型系统定义内核。在此贡献中,设计了两个新的内核,用于将内核计算机应用于定性变量(数量级或间隔)描述的此类系统。此外,还分析了由该内核引起的特征空间的结构。

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