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A hierarchical classification method using belief functions

机译:使用置信函数的分层分类方法

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摘要

Classification is one of the most important tasks carried out by intelligent systems. Recent works have proposed deep learning to solve the classification problem. While such techniques achieve a very good performance and reduce the complexity of feature engineering, they require a large amount of data and are extremely computationally expensive to train. This paper presents a new supervised confidence-based classification method for multi-class problems. The method is a hierarchical technique using the belief function theory and feature selection. The method predicts, for a new sample input, a confidence-level for each class. For this purpose, a hierarchical clustering approach is adopted to create a two-level classification problem. A feature selection technique is then carried out at each level to reduce the complexity of the algorithm and enhance the classification performance. The belief function theory is then used to combine all information and to give out decisions, by computing the confidence of the sample being in each class. The proposed method has been tested for indoor localization in a wireless sensors network and for facial image recognition using well-known databases. The obtained results prove the effectiveness of the proposed method and its competence as compared to state-of-the-art methods.
机译:分类是智能系统执行的最重要的任务之一。最近的工作提出了深度学习来解决分类问题。尽管此类技术可实现非常好的性能并降低了要素工程的复杂性,但它们需要大量数据,并且训练起来的计算量非常大。本文提出了一种新的基于监督置信度的多类别问题分类方法。该方法是使用置信函数理论和特征选择的分层技术。对于新的样本输入,该方法可以预测每个类别的置信度。为此,采用了层次聚类方法来创建两级分类问题。然后在每个级别执行特征选择技术,以降低算法的复杂性并提高分类性能。然后,通过计算每个类别中样本的置信度,将信念函数理论用于组合所有信息并做出决策。已针对无线传感器网络中的室内定位以及使用知名数据库的面部图像识别测试了所提出的方法。与最新方法相比,所获得的结果证明了所提方法的有效性及其能力。

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