A hybrid model for automatic emotion recognition in suicide notes.

Biomedical informatics insights Pub Date : 2012-01-01 Epub Date: 2012-01-30 DOI:10.4137/BII.S8948
Hui Yang, Alistair Willis, Anne de Roeck, Bashar Nuseibeh
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引用次数: 70

Abstract

We describe the Open University team's submission to the 2011 i2b2/VA/Cincinnati Medical Natural Language Processing Challenge, Track 2 Shared Task for sentiment analysis in suicide notes. This Shared Task focused on the development of automatic systems that identify, at the sentence level, affective text of 15 specific emotions from suicide notes. We propose a hybrid model that incorporates a number of natural language processing techniques, including lexicon-based keyword spotting, CRF-based emotion cue identification, and machine learning-based emotion classification. The results generated by different techniques are integrated using different vote-based merging strategies. The automated system performed well against the manually-annotated gold standard, and achieved encouraging results with a micro-averaged F-measure score of 61.39% in textual emotion recognition, which was ranked 1st place out of 24 participant teams in this challenge. The results demonstrate that effective emotion recognition by an automated system is possible when a large annotated corpus is available.

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自杀遗书中自动情绪识别的混合模型。
我们描述了开放大学团队提交给2011年i2b2/VA/辛辛那提医学自然语言处理挑战赛,Track 2自杀遗书情感分析共享任务。这项共享任务的重点是开发自动系统,在句子层面上识别自杀遗书中15种特定情绪的情感文本。我们提出了一个混合模型,该模型结合了许多自然语言处理技术,包括基于词典的关键字识别、基于crf的情感线索识别和基于机器学习的情感分类。使用不同的基于投票的合并策略对不同技术生成的结果进行整合。自动化系统在人工标注的黄金标准下表现良好,在文本情感识别方面取得了令人鼓舞的成绩,微平均F-measure得分为61.39%,在本次挑战赛的24个参赛团队中排名第一。结果表明,当有大量带注释的语料库可用时,自动化系统可以进行有效的情感识别。
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