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Open-Domain Targeted Sentiment Analysis via Span-Based Extraction and Classification

机译:通过基于跨度的提取和分类进行开放域目标情感分析

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Open-domain targeted sentiment analysis aims to detect opinion targets along with their sentiment polarities from a sentence. Prior work typically formulates this task as a sequence tagging problem. However, such formulation suffers from problems such as huge search space and sentiment inconsistency. To address these problems, we propose a span-based extract-then-classify framework, where multiple opinion targets are directly extracted from the sentence under the supervision of target span boundaries, and corresponding polarities are then classified using their span representations. We further investigate three approaches under this framework, namely the pipeline, joint, and collapsed models. Experiments on three benchmark datasets show that our approach consistently outperforms the sequence tagging baseline. Moreover, we find that the pipeline model achieves the best performance compared with the other two models.
机译:开放域目标情感分析旨在从句子中检测观点目标及其情感极性。先前的工作通常将此任务表述为序列标记问题。但是,这样的表述存在诸如巨大的搜索空间和情感不一致之类的问题。为了解决这些问题,我们提出了一种基于跨度的“提取-然后-分类”框架,该框架在目标跨度边界的监督下直接从句子中提取多个意见目标,然后使用其跨度表示对相应的极性进行分类。我们将进一步研究此框架下的三种方法,即管道模型,联合模型和折叠模型。在三个基准数据集上进行的实验表明,我们的方法始终优于序列标记基线。此外,我们发现与其他两个模型相比,管道模型实现了最佳性能。

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