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NewsMTSC: A Dataset for (Multi-)Target-dependent Sentiment Classification in Political News Articles

机译:Newsmtsc:政治新闻文章中的(多)目标依赖情绪分类的数据集

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Previous research on target-dependent sentiment classification (TSC) has mostly focused on reviews, social media, and other domains where authors tend to express sentiment explicitly. In this paper, we investigate TSC in news articles, a much less researched TSC domain despite the importance of news as an essential information source in individual and societal decision making. We introduce NewsMTSC, a high-quality dataset for TSC on news articles with key differences compared to established TSC datasets, including, for example, different means to express sentiment, longer texts, and a second test-set to measure the inlluence of multi-target sentences. We also propose a model that uses a BiGRU to interact with multiple embeddings, e.g., from a language model and external knowledge sources. The proposed model improves the performance of the prior state-of-the-art from F1_m = 81.7 to 83.1 (real-world sentiment distribution) and from F1_m = 81.2 to 82.5 (multi-target sentences).
机译:以前关于目标依赖情绪分类(TSC)的研究主要集中在作者倾向于明确表达情绪的评论,社交媒体和其他域名。 在本文中,我们在新闻文章中调查了TSC,尽管新闻作为个人和社会决策中的基本信息来源,但仍有重大研究的TSC领域。 我们介绍了Newsmtsc,一个高质量的数据集,用于TSC的新闻文章,与建立的TSC数据集相比,具有关键差异,包括例如表达情绪,更长的文本和第二个测试集来测量多个 - 的不同方法 目标句子。 我们还提出了一种模型,它使用Bigru与多个嵌入式相互作用,例如,从语言模型和外部知识源进行。 所提出的模型可提高F1_M = 81.7至83.1(真实世界情绪分布)和F1_M = 81.2至82.5(多目标句子)的现有最新的性能。

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