语篇情感感知与情感交际

M. Ishizuka, Alena Neviarouskaya, S. Masum
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引用次数: 18

摘要

除了语义内容外,文本所传达的情感对丰富友好的交际也起着重要作用。这在人类交流中尤其如此。近年来,在我们的生活中,人机和以计算机为媒介的交流所占的比例越来越大。在这种情况下,计算机被期望理解文本中包含的影响或情绪。多年来,我们一直在研究这个问题,即文本情感感知。作为一个相关的主题,文本情感分析已经被研究,其中通常提取关于特定问题或产品的肯定和否定句,用于Web意见挖掘。虽然在这个领域,情感感知和情感分析之间的区别并不一定清楚,但当一个句子被分为积极、消极或中性时,我在这里称之为情感分析。与这种情感分析不同,我们的文本情感感知检测文本中出现的更详细的情感或情绪状态,如快乐、悲伤、愤怒、恐惧、厌恶、惊讶等等。到目前为止,我们基本上已经开发了以下两个这样的模型或系统:(A)第一个使用一套基于文本情感解释的组合性原则实施的规则来检测九种情绪。该过程包括符号提示处理、缩略语的检测和转换、句子解析和词/短语/句子级分析。(B)第二个挑战是识别OCC (Ortony, Clore & Collins)情绪模型中定义的22种情绪类型,OCC (Ortony, Clore & Collins)情绪模型是最全面的情绪模型,它采用了几个认知变量,包括一个与事件或代理人的价值反应有关的变量。在这项研究中,我们展示了如何从文本中的语言成分中计算情感模型的这些认知变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Textual affect sensing and affective communication
In addition to semantic content, affect conveyed by text plays an important role for rich and friendly communication. This is particularly true in human communication. In recent days, the percentage of human-computer and computer-mediated communications is increasing in our life. In this situation, a computer is expected to understand the affects or emotions included in text. We have been working on this problem, i.e., textual affect sensing, for some years. As a related topic, textual sentiment analysis has been studied, where positive and negative sentences are typically extracted for Web opinion mining with respect to a specific issue or product. While the distinction between affect sensing and sentiment analysis is not necessarily clear in this field, I call here sentiment analysis when a sentence is classified into positive, negative or neutral one. Unlike this sort of sentiment analysis, our textual affect sensing detects more detailed affective or emotional states appearing in text, such as happy, sad, anger, fear, disgust, surprise and much more. We basically have developed the following two such models or systems so far: (A) The first one detects nine emotions using a set of rules implemented on the basis of a compositionality principle proposed for textual affect interpretation. This process includes symbolic cue processing, detection and transformation of abbreviations, sentence parsing, and word/phrase/sentence-level analyses. (B) The second one challenged to recognize 22 emotion types defined in the OCC (Ortony, Clore & Collins) emotion model, which is the most comprehensive emotion model and employs several cognitive variables including one relating to valenced reactions of events or agents. In this research, we have shown how these cognitive variables of the emotion model can be computed from linguistic components in text.
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