Hybrid Deep Learning CNN-Bidirectional LSTM and Manhattan Distance for Japanese Automated Short Answer Grading: Use case in Japanese Language Studies

A. A. P. Ratna, Prima Dewi Purnamasari, Nadhifa Khalisha Anandra, Dyah Lalita Luhurkinanti
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引用次数: 2

Abstract

This paper discusses the development of an Automatic Essay Grading System (SIMPLE-O) designed using hybrid CNN and Bidirectional LSTM and Manhattan Distance for Japanese language course essay grading. The most stable and best model is trained using hyperparameters with kernel sizes of 5, filters or CNN outputs of 64, a pool size of 4, Bidirectional LSTM units of 50, and a batch size of 64. The deep learning model is trained using the Adam optimizer with a learning rate of 0.001, an epoch of 25, and using an L1 regularization of 0.01. The average error obtained is 29%.
混合深度学习cnn -双向LSTM和曼哈顿距离用于日语自动简答评分:在日语研究中的用例
本文讨论了使用混合CNN和双向LSTM和曼哈顿距离设计的用于日语课程论文评分的自动论文评分系统(SIMPLE-O)的开发。最稳定和最好的模型是使用超参数训练,内核大小为5,过滤器或CNN输出为64,池大小为4,双向LSTM单元为50,批大小为64。深度学习模型使用Adam优化器进行训练,其学习率为0.001,epoch为25,L1正则化为0.01。得到的平均误差为29%。
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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