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Negation scope detection for sentiment analysis: A reinforcement learning framework for replicating human interpretations

机译:否定情绪分析的范围检测:一种复制人类解释的加强学习框架

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摘要

Textual materials represent a rich source of information for improving the decision-making of people, businesses and organizations. However, for natural language processing (NLP), it is difficult to correctly infer the meaning of narrative content in the presence of negations. The reason is that negations can be formulated both explicitly (e.g., by negation words such as "not") or implicitly (e.g., by expressions that invert meanings such as "forbid") and that their use is further domain-specific. Hence, NLP requires a dynamic learning framework for detecting negations and, to this end, we develop a reinforcement learning framework for this task. Formally, our approach takes document-level labels (e.g., sentiment scores) as input and then learns a negation policy based on the document-level labels. In this sense, our approach replicates human perceptions as provided by the document-level labels and achieves a superior prediction performance. Furthermore, it benefits from weak supervision; meaning that the need for granular and thus expensive word-level annotations, as in prior literature, is replaced by document-level annotations. In addition, we propose an approach to interpretability: by evaluating the state-action table, we yield a novel form of statistical inference that allows us to test which linguistic cues act as negations. (C) 2020 Elsevier Inc. All rights reserved.
机译:文本材料代表了改善人员,企业和组织决策的丰富信息来源。然而,对于自然语言处理(NLP),很难正确地推断出否定的叙事内容的含义。原因是否定可以明确地(例如,通过否定词语(例如“不”)或隐含地制定(例如,通过反转含义(例如禁止“)并且其使用是特定于域的表达式的表达式。因此,NLP需要一个动态的学习框架来检测否定,并且为此,我们为此任务开发了一个加强学习框架。正式地,我们的方法将文件级标签(例如,情绪分数)作为输入,然后根据文档级标签学习否定策略。从这个意义上讲,我们的方法将以文档级标签提供的人类看法复制,并实现了卓越的预测性能。此外,它受益于监督薄弱;这意味着需要粒度和因此昂贵的单词级注释,如先前文献,被文档级注释所取代。此外,我们提出了一种可解释性的方法:通过评估国家行动表,我们产生了一种新颖的统计推理,使我们能够测试哪种语言线索作为否定。 (c)2020 Elsevier Inc.保留所有权利。

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