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Language that Captivates the Audience: Predicting Affective Ratings of TED Talks in a Multi-Label Classification Task

机译:捕获观众的语言:在多标签分类任务中预测TED谈判的情感评级

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The aim of the paper is twofold: (1) to automatically predict the ratings assigned by viewers to 14 categories available for TED talks in a multi-label classification task and (2) to determine what types of features drive classification accuracy for each of the categories. The focus is on features of language usage from five groups pertaining to syntactic complexity, lexical richness, register-based n-gram measures, information-theoretic measures and LIWC-style measures. We show that a Recurrent Neural Network classifier trained exclusively on within-text distributions of such features can reach relatively high levels of overall accuracy (69%) across the 14 categories. We find that features from two groups are strong predictors of the affective ratings across all categories and that there are distinct patterns of language usage for each rating category.
机译:纸张的目的是双重组合:(1)自动预测观众以多标签分类任务的TED会谈分配给14个类别的额定值,以确定每个类型的功能如何为每个特征驱动分类准确性 类别。 重点是来自五组与句法复杂性,词汇丰富,基于寄存器的N-GRAM措施,信息理论措施和LIWC式措施的语言使用的特征。 我们表明,专门验证的经常性神经网络分类器在文本内部分布中培训,可以在14个类别中达到相对较高的整体精度(69%)。 我们发现,来自两组的特征是所有类别的情感评级的强烈预测因子,并且每个评级类别都有明显的语言用法模式。

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