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Domain Adaptation Using Domain Similarity- and Domain Complexity-Based Instance Selection for Cross-Domain Sentiment Analysis

机译:使用基于域相似度和基于域复杂度的实例选择进行域自适应以进行跨域情感分析

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摘要

We propose an approach to domain adaptation that selects instances from a source domain training set, which are most similar to a target domain. The factor by which the original source domain training set size is reduced is determined automatically by measuring domain similarity between source and target domain as well as their domain complexity variance. Domain similarity is measured as divergence between term unigram distributions. Domain complexity is measured as homogeneity, i.e. self-similarity. We evaluate our approach in a semi-supervised cross-domain document-level polarity classification experiment. Thereby we show, that it yields small but statistically significant improvements over several natural baselines and achieves results competitive to other state-of-the-art domain adaptation schemes.
机译:我们提出一种域自适应方法,该方法从源域训练集中选择与目标域最相似的实例。通过测量源域和目标域之间的域相似性及其域复杂性差异,可以自动确定减少原始源域训练集大小的因素。域相似度以术语字母组合分布之间的差异来衡量。域复杂度被测量为同质性,即自相似性。我们在半监督的跨域文档级极性分类实验中评估了我们的方法。因此,我们表明,与几个自然基准相比,它产生了较小但统计上显着的改进,并取得了与其他最新领域调整方案相比具有竞争力的结果。

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