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Appropriate Kernel Functions for Support Vector Machine Learning with Sequences of Symbolic Data

机译:用于支持向量机器学习的适当内核功能,符号数据序列

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In classification problems, machine learning algorithms often make use of the assumption that (dis)similar inputs lead to (dis)similar outputs. In this case, two questions naturally arise: what does it mean for two inputs to be similar and how can this be used in a learning algorithm? In support vector machines, similarity between input examples is implicitly expressed by a kernel function that calculates inner products in the feature space. For numerical input examples the concept of an inner product is easy to define, for discrete structures like sequences of symbolic data however these concepts are less obvious. This article describes an approach to SVM learning for symbolic data that can serve as an alternative to the bag-of-words approach under certain circumstances. This latter approach first transforms symbolic data to vectors of numerical data which are then used as arguments for one of the standard kernel functions. In contrast, we will propose kernels that operate on the symbolic data directly.
机译:在分类问题中,机器学习算法通常利用(DIS)类似的输入导致(DIS)相似输出的假设。在这种情况下,自然出现的两个问题:两个输入是什么意思,两个输入是类似的,并且如何在学习算法中使用?在支持向量机中,输入示例之间的相似性通过计算特征空间中的内部产品的内核函数隐式表达。对于数值输入示例,内部产品的概念易于定义,对于象征性数据的序列,但是这些概念的离散结构不太明显。本文介绍了SVM学习的方法,用于在某些情况下可以用作单词袋方法的替代品。后一种方法首先将符号数据转换为数字数据的向量,然后将其用作标准内核函数之一的参数。相比之下,我们将提出直接在符号数据上运行的内核。

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