正在进行的工作:使用Transformer模型计算短文本的句子相似度

V. Ramnarain-Seetohul, V. Bassoo, Yasmine Rosunally
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引用次数: 0

摘要

自然语言处理领域正因变压器而发生革命性的变化。后者是基于一种已经预先训练的新型神经网络框架。因此,不再需要大型数据集来训练模型。该框架适用于需要大量标记数据的自动评估系统(AAS)。数据集越大,AAS的精度越高。在这篇正在进行的论文中,已经建立了一个AAS的原型,其中使用了两个变压器模型,即来自拥抱脸的句子变压器和OpenAI GPT-3模型。转换模型生成学生答案和来自德克萨斯州数据集的参考答案之间的相似性指数。然后用相似度指数计算学生的分数。使用二次加权kappa度量来评估原型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Work-in-Progress: Computing Sentence Similarity for Short Texts using Transformer models
The field of natural language processing is being revolutionized with transformers. The latter is based on a novel type of neural network framework that is already pre-trained. Hence, large datasets to train models are no longer required. This framework is suitable for automated assessment systems (AAS), where a large number of labeled data is needed. The larger the dataset, the higher the accuracy of the AAS. In this work-in-progress paper, a prototype for an AAS has been built where two transformer models, namely the Sentence-Transformers from hugging face and the OpenAI GPT-3 models have been used. The transformer models generate the similarity index between students’ answers and reference answers from the Texas dataset. Then the similarity index is used to compute marks for students. The performance of the prototype is evaluated using the quadratic weighted kappa metric.
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