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Cluster-than-Label: Semi-Supervised Approach for Domain Adaptation

机译:优于标签的群集:域自适应的半监督方法

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The performance of a conventional machine learning the model trained on a source domain degrades poorly when they are tested on a different data distribution (target domain). These traditional models deal with this problem by training a new paradigm for the particular different data distribution (target domain). Therefore, training of a new paradigm forthe individual data distribution is computationally expensive. This paper demonstrates that how to adapt to a new data distribution (target domain), utilising the model trained on the source domain and avoiding the cost of re-training and the need for access to the source labelled data. In particular, we introduce an Efficient Semi-supervised Cluster-than-Label Cross-domain Adaptation Algorithm (SCTLCDA) to address the cross-domain adaptation classification problem in which we utilised both labelled and unlabelled data samples in the target domain, as well as completely unlabelled data samples in the source domain. Subsequently, we also describe that our proposed method can manage large datasets and easily lead to cross-domain adaptation problem. The effectiveness and performance of our method are confirmed by experiments on two real-world applications: Cross-domain sentiments and Web-Spam classification problem.
机译:当在不同的数据分布(目标域)上对它们进行测试时,传统的机器学习在源域上训练的模型的性能会降低。这些传统模型通过为特定的不同数据分布(目标域)训练新范式来解决此问题。因此,训练用于个体数据分配的新范例在计算上是昂贵的。本文演示了如何利用在源域上训练的模型来适应新的数据分布(目标域),并且避免了重新训练的成本以及访问源标记数据的需求。特别是,我们引入了一种有效的半监督聚类而非标签跨域自适应算法(SCTLCDA),以解决跨域自适应分类问题,其中我们在目标域中利用了标记和未标记的数据样本,以及源域中完全未标记的数据样本。随后,我们还描述了我们提出的方法可以管理大型数据集,并且容易导致跨域自适应问题。我们的方法的有效性和性能已通过在两个实际应用中的实验得到证实:跨域情感和Web垃圾邮件分类问题。

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