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Approximation of the T. Anderson's Discriminant Function and Estimation of the Posterior Probabilities of Classes. Convergence of the Approximation Method

机译:近似于审查函数的判别函数和估计课程后概率。近似方法的收敛性

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Discriminant function in T. Anderson's definition is a function of regression in feature space. The training set in supervised learning is converted into a set of regression analysis by replacing class numbers with the differences of the corresponding costs of classification errors. The posterior probabilities of classes at points on the boundary between them depend only on the costs of classification errors. This is the basis for the method of obtaining estimates of a posterior probability of classes. It does not require adaptations to discriminant functions such as, for example, the Platt's calibrator. For the heuristic method of approximation of the discriminant function in the range of zero values, the convergence conditions of the algorithm are obtained with increasing the volume of the training set and the length of the iterative process.
机译:T. Anderson定义中的判别函数是特征空间中回归的函数。通过替换类数字,在监督学习中设置的培训被转换为一组回归分析,其中包含相应的分类错误成本的差异。它们在它们之间的边界点上的类别的后验概率仅取决于分类错误的成本。这是获得类别后部概率的估计方法的基础。它不需要适应判别函数,例如Platt的校准器。对于归零值范围内判别函数的近似的启发式方法,利用增加训练集的体积和迭代过程的长度来获得算法的收敛条件。

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