案例2021任务2:使用变压器模型对细粒度社会政治事件进行零射击分类

Benjamin J. Radford
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引用次数: 4

摘要

我们介绍了一种将文本分类为细粒度的社会政治事件类别的方法。这种特殊的方法响应了任务2的所有三个子任务,即在ACL-IJCNLP 2021的CASE研讨会上介绍的社会政治事件的细粒度分类。我们将Task 2定义为文本蕴蕴性:给定输入文本和候选事件类(“查询”),模型预测文本是否描述给定类型的事件。该模型能够正确地对样本内事件类型进行分类,平均f1得分为0.74,但对一些样本外事件类型却很难进行分类。尽管如此,该模型通过在一个完全样本外事件类别上获得0.52的f1分数,显示了对某些社会政治事件的零射击识别的希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CASE 2021 Task 2: Zero-Shot Classification of Fine-Grained Sociopolitical Events with Transformer Models
We introduce a method for the classification of texts into fine-grained categories of sociopolitical events. This particular method is responsive to all three Subtasks of Task 2, Fine-Grained Classification of Socio-Political Events, introduced at the CASE workshop of ACL-IJCNLP 2021. We frame Task 2 as textual entailment: given an input text and a candidate event class (“query”), the model predicts whether the text describes an event of the given type. The model is able to correctly classify in-sample event types with an average F1-score of 0.74 but struggles with some out-of-sample event types. Despite this, the model shows promise for the zero-shot identification of certain sociopolitical events by achieving an F1-score of 0.52 on one wholly out-of-sample event class.
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