基于证据理论的异构领域模式分类(Poster)

Zhun-ga Liu, Guanghui Qiu, G. Mercier, Q. Pan
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引用次数: 0

摘要

在模式分类中,在没有训练模式的情况下,存在着一个具有挑战性的问题。在一些实际应用中,在其他相关领域(称为源领域)可能存在一些标记数据,这些标记数据可以帮助解决目标领域的分类问题。这里认为源域和目标域是异构的。提出了一种基于证据理论的异构数据传输分类方法。给出了源域和目标域相应的模式(模式对),建立了源域和目标域之间的联系。对于目标域中的每个模式,由于源域和目标域中的特征不同,很难确定一个精确的映射值。因此,我们利用KNN技术估计源域的映射范围。允许目标模式在作用域中具有不同权重/可靠性的多个映射值。这些映射值可以产生不同的分类结果。证据理论善于结合不确定信息。因此,提出了一种新的加权DS融合方法,将这些分类结果结合起来,用相应的权值对分类结果进行折现,并根据组合结果进行最终的分类决策。本文利用一对异构遥感图像和一些UCI数据集对该方法与其他几种方法的性能进行了测试,结果表明该方法可以有效地提高分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pattern Classification in Heterogeneous Domains Based on Evidence Theory (Poster)
In pattern classification, there exists a challenging problem when there are no training patterns. In some real applications, there may exist some labeled data in other related domain (called source domain), and such labeled data can be helpful to solve the classification problem in target domain. It is considered that the source domain and target domain are heterogeneous here. A new heterogeneous data transfer classification method based on evidence theory is proposed. Some corresponding patterns (pattern pairs) in source domain and target domain are given to build the link of these two domains. For each pattern in target domain, it is hard to determine one exact mapping value in source domain due to the distinct characteristics of these two domains. So we estimate a mapping scope in source domain using KNN technique. The target pattern is allowed to have multiple mapping values in the scope with different weights/reliabilties. These mapping values can produce different classification results. Evidence theory is good at combining the uncertain information. Therefore a new weighted DS fusion method is developed for combining these classification results, which are discounted by the corresponding weights, and the final class decision is made according to the combination result. A pair of heterogeneous remote sensing images and some UCI data sets are used in this paper to test the performance of our method with respect to several other methods, and it shows that the new method can efficiently improve the classification accuracy.
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