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Case-Based Statistical Learning: A Non Parametric Implementation Applied to SPECT Images

机译:基于案例的统计学习:应用于SPECT图像的非参数实现

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In the theory of semi-supervised learning, we have a training set and a unlabeled data that are employed to fit a prediction model or learner with the help of an iterative algorithm such as the expectation-maximization (EM) algorithm. In this paper a novel non-parametric approach of the so called case-based statistical learning in a low-dimensional classification problem is proposed. This supervised model selection scheme analyzes the discrete set of outcomes in the classification problem by hypothesis-testing and makes assumptions on these outcome values to obtain the most likely prediction model at the training stage. A novel prediction model is described in terms of the output scores of a confidence-based support vector machine classifier under class-hypothesis testing. The estimation of the error rates from a well-trained SVM allows us to propose a non-parametric approach avoiding the use of Gaussian density function-based models in the likelihood ratio test.
机译:在半监督学习的理论中,我们有一个训练集和一个未标记的数据,这些数据和数据被用于借助诸如期望最大化(EM)算法之类的迭代算法来拟合预测模型或学习者。在本文中,提出了一种新颖的非参数方法,即在低维分类问题中所谓的基于案例的统计学习。该监督模型选择方案通过假设检验分析分类问题中离散的结果集,并对这些结果值进行假设,以在训练阶段获得最可能的预测模型。根据分类假设测试下基于置信度的支持向量机分类器的输出得分,描述了一种新颖的预测模型。通过训练有素的SVM对错误率的估计使我们能够提出一种非参数方法,从而避免在似然比测试中使用基于高斯密度函数的模型。

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