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Similarity Based Classification

机译:基于相似度的分类

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摘要

We describe general conditions for data classification which can serve as a unifying framework in the study of kernel based Machine Learning Algorithms. Prom these conditions we derive a new algorithm called SBC (for Similarity Based Classification), which has attractive theoretical properties regarding underfitting, overfitting, power of generalization, computational complexity and robustness. Compared to classical algorithms, such as Parzen windows and non-linear Perceptrons, SBC can be seen as an optimized version of them. Finally it is a conceptually simpler and a more efficient alternative to Support Vector Machines for an arbitrary number of classes. Its practical significance is illustrated through a number of benchmark classification problems.
机译:我们描述了数据分类的一般条件,这些条件可以作为基于内核的机器学习算法研究的统一框架。在这些条件下,我们导出了一种称为SBC(用于基于相似性的分类)的新算法,该算法具有关于欠拟合,过度拟合,泛化能力,计算复杂性和鲁棒性的诱人的理论属性。与经典算法(例如Parzen窗口和非线性感知器)相比,SBC可以看作是它们的优化版本。最后,对于任意数量的类,它在概念上是支持向量机的更简单且更有效的替代方法。通过一些基准分类问题可以说明其实际意义。

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