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Projecting Embeddings for Domain Adaptation: Joint Modeling of Sentiment Analysis in Diverse Domains

机译:投影嵌入的领域适应:不同领域中情感分析的联合建模

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Domain adaptation for sentiment analysis is challenging due to the fact that supervised classifiers are very sensitive to changes in domain. The two most prominent approaches to this problem are structural correspondence learning and autoencoders. However, they either require long training times or suffer greatly on highly divergent domains. Inspired by recent advances in cross-lingual sentiment analysis, we provide a novel perspective and cast the domain adaptation problem as an embedding projection task. Our model takes as input two mono-domain embedding spaces and learns to project them to a bi-domain space, which is jointly optimized to (1) project across domains and to (2) predict sentiment. We perform domain adaptation experiments on 20 source-target domain pairs for sentiment classification and report novel state-of-the-art results on 11 domain pairs, including the Amazon domain adaptation datasets and SemEval 2013 and 2016 datasets. Our analysis shows that our model performs comparably to state-of-the-art approaches on domains that are similar, while performing significantly better on highly divergent domains.
机译:由于监督分类器对领域的变化非常敏感,因此用于情感分析的领域自适应具有挑战性。解决此问题的两个最突出的方法是结构对应学习和自动编码器。但是,他们要么需要很长的培训时间,要么在高度分歧的领域遭受很大的痛苦。受到跨语言情感分析最新进展的启发,我们提供了一个新颖的观点,并将领域适应问题转化为嵌入投影任务。我们的模型将两个单域嵌入空间作为输入,并学习将它们投影到一个双域空间,该空间被联合优化以(1)跨域投影和(2)预测情感。我们对20个来源-目标领域对进行了领域适应性实验,以进行情感分类,并报告了11个领域对的最新技术成果,包括Amazon领域适应性数据集以及SemEval 2013和2016数据集。我们的分析表明,我们的模型在相似域上的性能与最新方法相当,而在高度分歧的域上的性能要好得多。

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