A hybrid system for emotion extraction from suicide notes.

Biomedical informatics insights Pub Date : 2012-01-01 Epub Date: 2012-01-30 DOI:10.4137/BII.S8981
Azadeh Nikfarjam, Ehsan Emadzadeh, Graciela Gonzalez
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引用次数: 15

Abstract

The reasons that drive someone to commit suicide are complex and their study has attracted the attention of scientists in different domains. Analyzing this phenomenon could significantly improve the preventive efforts. In this paper we present a method for sentiment analysis of suicide notes submitted to the i2b2/VA/Cincinnati Shared Task 2011. In this task the sentences of 900 suicide notes were labeled with the possible emotions that they reflect. In order to label the sentence with emotions, we propose a hybrid approach which utilizes both rule based and machine learning techniques. To solve the multi class problem a rule-based engine and an SVM model is used for each category. A set of syntactic and semantic features are selected for each sentence to build the rules and train the classifier. The rules are generated manually based on a set of lexical and emotional clues. We propose a new approach to extract the sentence's clauses and constitutive grammatical elements and to use them in syntactic and semantic feature generation. The method utilizes a novel method to measure the polarity of the sentence based on the extracted grammatical elements, reaching precision of 41.79 with recall of 55.03 for an f-measure of 47.50. The overall mean f-measure of all submissions was 48.75% with a standard deviation of 7%.

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从遗书中提取情感的混合系统。
驱使人们自杀的原因很复杂,他们的研究吸引了不同领域科学家的注意。分析这一现象可以大大提高预防工作。在本文中,我们提出了一种对提交给i2b2/VA/Cincinnati共享任务2011的遗书进行情绪分析的方法。在这项任务中,900封遗书的句子被贴上了它们可能反映的情绪的标签。为了用情感标记句子,我们提出了一种混合方法,该方法利用了基于规则和机器学习技术。为了解决多类问题,对每个类别使用基于规则的引擎和支持向量机模型。为每个句子选择一组语法和语义特征来构建规则并训练分类器。规则是基于一组词汇和情感线索手动生成的。我们提出了一种提取句子分句和构成语法元素并将其用于句法和语义特征生成的新方法。该方法采用了一种基于提取的语法元素来测量句子极性的新方法,准确率达到41.79,召回率为55.03,f-measure为47.50。所有提交的总体平均f-measure为48.75%,标准差为7%。
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