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Scoring and Classifying Implicit Positive Interpretations: A Challenge of Class Imbalance

机译:对隐性肯定解释进行评分和分类:班级不平衡的挑战

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This paper reports on a reimplementation of a system on detecting implicit positive meaning from negated statements. In the original regression experiment, different positive interpretations per negation are scored according to their likelihood. We convert the scores to classes and report our results on both the regression and classification tasks. We show that a baseline taking the mean score or most frequent class is hard to beat because of class imbalance in the dataset. Our error analysis indicates that an approach that takes the information structure into account (i.e. which information is new or contrastive) may be promising, which requires looking beyond the syntactic and semantic characteristics of negated statements.
机译:本文报告了一个系统的重新实现,该系统可以从否定语句中检测隐含的肯定含义。在原始回归实验中,每个否定的不同阳性解释根据其可能性评分。我们将分数转换为类,并报告回归和分类任务的结果。我们显示,由于数据集中的班级不平衡,采用平均得分或最频繁班级的基线很难被超越。我们的错误分析表明,考虑到信息结构(即哪些信息是新信息或对比信息)的方法可能很有希望,这需要超越否定语句的句法和语义特征。

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