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Inductive Conformal Predictor for Sparse Coding Classifiers: Applications to Image Classification

机译:稀疏编码分类器的归纳共形预测器:在图像分类中的应用

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Conformal prediction uses the degree of strangeness (nonconformity) of new data instances to determine the confidence values of new predictions. We propose an inductive conformal predictor for sparse coding classifiers, referred to as ICP-SCC. Our contribution is twofold: first, we present two nonconformity measures that produce reliable confidence values; second, we propose a batch mode active learning algorithm within the conformal prediction framework to improve classification performance by selecting training instances based on two criteria, informativeness and diversity. Experiments conducted on face and object recognition databases demonstrate that ICP-SCC improves the classification accuracy of state-of-the-art dictionary learning algorithms while producing reliable confidence values.
机译:保形预测使用新数据实例的陌生程度(不合格)来确定新预测的置信度值。我们提出了一种用于稀疏编码分类器的归纳共形预测子,称为ICP-SCC。我们的贡献是双重的:首先,我们提出了两种产生合格置信度值的不合格度量;其次,我们在共形预测框架内提出了一种批处理模式的主动学习算法,以通过基于信息性和多样性这两个标准选择训练实例来提高分类性能。在面部和物体识别数据库上进行的实验表明,ICP-SCC在产生可靠的置信度值的同时,提高了最新词典学习算法的分类精度。

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