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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:在半监督学习理论中,我们具有培训集和未标记的数据,该数据是在迭代算法的帮助下适合预测模型或学习者,例如期望最大化(EM)算法。在本文中,提出了一种新的非参数方法,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测试分析了分类问题的离散结果,并对这些结果的假设进行了假设,以获得训练阶段的最可能预测模型。根据类假设检测,根据基于频体的支持向量机分类器的输出分数描述了一种新的预测模型。从训练有素的SVM估计误差率允许我们提出非参数方法,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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