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On Metric Correction and Conditionality of Raw Featureless Data in Machine Learning

机译:在机器学习中原始无味数据的度量校正和条件

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摘要

Recently, raw experimental data in machine learning often appear as direct comparisons between objects (featureless data). Different ways to evaluate difference or similarity of a pair of objects in image and data mining, image analysis, bioinformatics, etc., are usually used in practice. Nevertheless, such comparisons often are not distances or correlations (scalar products) like a correct function defined on a limited set of elements in machine learning. This problem is denoted as metric violations in ill-posed matrices. Therefore, it needs to recover violated metrics and provide optimal conditionality of corresponding matrices of pairwise comparisons for distances and similarities. This is the correct basis for using of modern machine learning algorithms.
机译:最近,机器学习中的原始实验数据通常在对象之间直接比较(无特征数据)。 评估图像和数据挖掘中一对物体的差异或相似性,图像分析,生物信息学等的不同方式通常用于实践中。 然而,这种比较通常不是距离或相关性(标量产品),如在机器学习中的有限元素集上定义的正确功能。 此问题表示为不良矩阵中的度量违规。 因此,它需要恢复违规的指标,并提供对距离和相似性的成对比较的相应矩阵的最佳条件。 这是使用现代机器学习算法的正确基础。

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