BERT、RoBERTa和Electra在事实验证中的实证比较

Muchammad Naseer, M. Asvial, R. F. Sari
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引用次数: 8

摘要

我们通过比较3种算法,即BERT、RoBERTa和Electra,回顾了一些事实验证技术的一些特征。这三种算法具有不同的优势,即BERT和RoBERTa使用庞大的数据集预测隐藏的单词,而Electra通过检测文本或句子中被替换的标记来验证事实。为了产生最佳的事实验证结果,需要找到具有良好性能评价值的模型。本研究的绩效模型评价采用F1-Score。实验结果表明,RoBERTa在epoch参数值为5(5)、batch size为32的情况下,准确率和F1-Score分别达到95.4%和95.3%。其次是BERT,当epoch为10 (10),batch size为32时,准确率和F1-Score值相同,结果最好,为94.3%。虽然它提供了一个更短的运行时间,不幸的是,Electra并不优于其他模型的实际验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empirical Comparison of BERT, RoBERTa, and Electra for Fact Verification
We reviewed some features of a number of fact verification techniques by comparing 3 (three) algorithms, namely BERT, RoBERTa, and Electra. These 3 (three) algorithms have different advantages, i.e., BERT and RoBERTa predict hidden words using a huge dataset, and Electra verifies facts by detecting tokens that are replaced in a text or sentence. It is necessary to find the model with a good performance evaluation value to produce the best fact verification results. The evaluation of the performance model in this study uses the F1-Score. Our experimental results show that RoBERTa achieves the best accuracy and F1-Score with a value of 95.4% and 95.3% with the parameter value of epoch of 5 (five) and a batch size of 32. The second position is occupied by BERT, with the best result of accuracy and F1-Score at the same value of 94.3% with the epoch of10 (ten) and a batch size of32. Although it provides a shorter elapsed time, unfortunately, Electra does not outperform other models in fact verification.
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