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Learning Lexico-Functional Patterns for First-Person Affect

机译:学习用于第一人称情感的词汇功能模式

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Informal first-person narratives are a unique resource for computational models of everyday events and people's affective reactions to them. People blogging about their day tend not to explicitly say I am happy. Instead they describe situations from which other humans can readily infer their affective reactions. However current sentiment dictionaries are missing much of the information needed to make similar inferences. We build on recent work that models affect in terms of lexical predicate functions and affect on the predicate's arguments. We present a method to learn proxies for these functions from first-person narratives. We construct a novel fine-grained test set, and show that the patterns we learn improve our ability to predict first-person affective reactions to everyday events, from a Stanford sentiment baseline of .67F to .75F.
机译:非正式的第一人称叙述是日常事件和人们对事件的情感反应的计算模型的独特资源。人们写自己的一天的博客往往不会明确表示我很高兴。相反,它们描述了其他人可以从中轻松推断出自己的情感反应的情况。但是,当前的情感词典缺少进行类似推断所需的许多信息。我们以最近的工作为基础,该工作模型会影响词汇谓词功能并影响谓词的参数。我们提出了一种从第一人称叙述中学习这些功能的代理的方法。我们构建了一个新颖的细粒度测试集,并证明了我们学习的模式可以提高我们预测日常事件第一人称情感反应的能力,这些斯坦福情绪基线从.67F到.75F。

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