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A New Domain Adaptation Method Based on Rules Discovered from Cross-Domain Features

机译:基于跨域特征发现规则的域自适应新方法

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摘要

Traditional classification methods in machine learning assume that training data and testing data should share the same feature space and have the same data distribution. In real world applications, however, this assumption often does not hold. If there are very few labeled instances in the target domain for training, it is time-consuming to label them manually. In this case, a source domain which has semantic relationships with the target domain but has the different feature space or distribution can be used to assist the classification. In this paper, we propose a new method using rules to help the domain adaptation, which can well represent the knowledge relationships between source domain and target domain. In this algorithm we first discover term-term rules according to the term relationships in target domain to build the knowledge bridge, then we reconstruct the source domain using these rules and get a better classifier to improve the cross-domain classification performance. We conduct several cross-domain data sets and demonstrate that the proposed method is easy to understand and it has a better performance compared to state-of-art transfer algorithms.
机译:机器学习中的传统分类方法假定训练数据和测试数据应共享相同的特征空间,并具有相同的数据分布。但是,在实际应用中,这种假设通常不成立。如果在目标域中用于训练的标记实例很少,那么手动标记它们将很耗时。在这种情况下,可以使用与目标域具有语义关系但具有不同特征空间或分布的源域来辅助分类。在本文中,我们提出了一种使用规则来帮助领域适应的新方法,该方法可以很好地表示源领域和目标领域之间的知识关系。在该算法中,我们首先根据目标域中的术语关系发现术语术语规则,以建立知识桥,然后使用这些规则重构源域,并获得更好的分类器以提高跨域分类性能。我们进行了几个跨域数据集,并证明了与现有的传输算法相比,该方法易于理解,并且具有更好的性能。

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