Zero and Few-shot Learning for Author Profiling

Mara Chinea-Rios, Thomas Müller, Gretel Liz De la Pena Sarrac'en, Francisco Rangel, Marc Franco-Salvador
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引用次数: 8

Abstract

Author profiling classifies author characteristics by analyzing how language is shared among people. In this work, we study that task from a low-resource viewpoint: using little or no training data. We explore different zero and few-shot models based on entailment and evaluate our systems on several profiling tasks in Spanish and English. In addition, we study the effect of both the entailment hypothesis and the size of the few-shot training sample. We find that entailment-based models out-perform supervised text classifiers based on roberta-XLM and that we can reach 80% of the accuracy of previous approaches using less than 50\% of the training data on average.
作者分析的零和少射学习
作者特征分析通过分析语言如何在人群中共享来对作者特征进行分类。在这项工作中,我们从低资源的角度来研究这个任务:使用很少或没有训练数据。我们基于蕴涵探索了不同的零射击和少射击模型,并在西班牙语和英语的几个分析任务中评估了我们的系统。此外,我们还研究了蕴涵假设和少投训练样本大小的影响。我们发现基于蕴涵的模型优于基于roberta-XLM的监督文本分类器,并且平均使用不到50%的训练数据,我们可以达到以前方法的80%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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