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Affect Analysis Model: novel rule-based approach to affect sensing from text

机译:情感分析模型:一种基于规则的新颖方法来影响文本的感知

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摘要

In this paper, we address the tasks of recognition and interpretation of affect communicated through text messaging in online communication environments. Specifically, we focus on Instant Messaging (IM) or blogs, where people use an informal or garbled style of writing. We introduced a novel rule-based linguistic approach for affect recognition from text. Our Affect Analysis Model (AAM) was designed to deal with not only grammatically and syntactically correct textual input, but also informal messages written in an abbreviated or expressive manner. The proposed rule-based approach processes each sentence in stages, including symbolic cue processing, detection and transformation of abbreviations, sentence parsing and word/phrase/sentence-level analyses. Our method is capable of processing sentences of different complexity, including simple, compound, complex (with complement and relative clauses) and complex-compound sentences. Affect in text is classified into nine emotion categories (or neutral). The strength of the resulting emotional state depends on vectors of emotional words, relations among them, tense of the analysed sentence and availability of first person pronouns. The evaluation of the Affect Analysis Model algorithm showed promising results regarding its capability to accurately recognize fine-grained emotions reflected in sentences from diary-like blog posts (averaged accuracy is up to 77 per cent), fairy tales (averaged accuracy is up to 70.2 per cent) and news headlines (our algorithm outperformed eight other systems on several measures).
机译:在本文中,我们解决了在线交流环境中通过文本消息传递的情感识别和解释任务。具体来说,我们关注即时消息(IM)或博客,人们在其中使用非正式或乱码的写作风格。我们介绍了一种新颖的基于规则的语言方法,用于从文本中识别情感。我们的情感分析模型(AAM)旨在处理语法和句法上正确的文本输入,还处理以缩写或表达方式编写的非正式消息。提出的基于规则的方法分阶段处理每个句子,包括符号提示处理,缩写的检测和转换,句子解析以及词/短语/句子级分析。我们的方法能够处理不同复杂度的句子,包括简单,复合,复杂(带有补语和相对从句)和复杂复合句。文本中的情感分为九种情感类别(或中性)。产生的情绪状态的强度取决于情绪词的向量,它们之间的关系,所分析句子的时态和第一人称代词的可用性。对“情感分析模型”算法的评估显示出令人信服的结果,该算法能够准确识别类似日记的博客文章(平均准确度高达77%),童话(平均准确度高达70.2)中反映的细粒度情感。百分比)和新闻头条(我们的算法在多项指标上优于其他八个系统)。

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  • 来源
    《Natural language engineering》 |2011年第1期|p.95-135|共41页
  • 作者单位

    Department of Information and Communication Engineering, University of Tokyo,Engineering Building 2, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-8656, Japan;

    National Institute of Informatics, 2-1-2 Hitotsubashi, Chiyoda-ku, Tokyo 101-8430, Japan;

    Department of Information and Communication Engineering, University of Tokyo,Engineering Building 2, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-8656, Japan;

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