Liu Zhun-Ga, Huang Lin-Qing, Zhou Kuang, Denoeux Thierry
IEEE Trans Neural Netw Learn Syst. 2021 May;32(5):2015-2029. doi: 10.1109/TNNLS.2020.2995862. Epub 2021 May 3.
In applications of domain adaptation, there may exist multiple source domains, which can provide more or less complementary knowledge for pattern classification in the target domain. In order to improve the classification accuracy, a decision-level combination method is proposed for the multisource domain adaptation based on evidential reasoning. The classification results obtained from different source domains usually have different reliabilities/weights, which are calculated according to domain consistency. Therefore, the multiple classification results are discounted by the corresponding weights under belief functions framework, and then, Dempster's rule is employed to combine these discounted results. In order to reduce errors, a neighborhood-based cautious decision-making rule is developed to make the class decision depending on the combination result. The object is assigned to a singleton class if its neighborhoods can be (almost) correctly classified. Otherwise, it is cautiously committed to the disjunction of several possible classes. By doing this, we can well characterize the partial imprecision of classification and reduce the error risk as well. A unified utility value is defined here to reflect the benefit of such classification. This cautious decision-making rule can achieve the maximum unified utility value because partial imprecision is considered better than an error. Several real data sets are used to test the performance of the proposed method, and the experimental results show that our new method can efficiently improve the classification accuracy with respect to other related combination methods.
在域适应的应用中,可能存在多个源域,它们可为目标域中的模式分类提供或多或少的互补知识。为了提高分类准确率,提出了一种基于证据推理的多源域适应决策级组合方法。从不同源域获得的分类结果通常具有不同的可靠性/权重,这些可靠性/权重是根据域一致性计算得出的。因此,在信度函数框架下,多个分类结果会被相应的权重折扣,然后采用Dempster规则来组合这些折扣后的结果。为了减少错误,开发了一种基于邻域的谨慎决策规则,根据组合结果进行类别决策。如果对象的邻域能够(几乎)被正确分类,则将该对象分配到一个单元素类中。否则,谨慎地将其归为几个可能类别的析取。通过这样做,我们可以很好地刻画分类的部分不精确性,并降低错误风险。这里定义了一个统一的效用值来反映这种分类的益处。这种谨慎决策规则能够实现最大的统一效用值,因为考虑部分不精确性比犯错误要好。使用几个真实数据集来测试所提方法的性能,实验结果表明,相对于其他相关组合方法,我们的新方法能够有效地提高分类准确率。