面向面向层面阿姆哈拉语新闻情感分析的深度学习模型比较分析

Bekalu Tadele Abeje, Ayodeji Olalekan Salau, Habtamu Abate Ebabu, Aleka Melese Ayalew
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引用次数: 2

摘要

如今,在社交媒体时代,顾客的输入和反馈对企业的服务和产品产生了重大影响。企业在从这些非结构化、无组织、大量和碎片化的数据中提取有意义的信息方面面临着重大挑战。一些关于阿姆哈拉语情感分析(AMSA)的研究工作已经完成,但是他们都没有利用深度学习方法来研究方面层面。这项工作的重点是利用方面层次和混合深度学习方法对阿姆哈拉语文本进行情感分析。数据集以Microsoft Excel格式从Amhara Media Corporation的官方Facebook页面获取。使用评论导出软件以excel格式创建10,000个数据集。使用卷积神经网络(CNN)、长短期记忆(LSTM)、CNN-LSTM和CNN- gru等不同的机器学习技术对数据集进行训练和测试。研究结果表明,LSTM模型的训练准确率为99.10%,优于其他模型,与CNN-GRU模型的训练准确率为99.08%相差很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Deep Learning Models for Aspect Level Amharic News Sentiment Analysis
Nowadays, in the era of social media, customer input and feedback have significant impact on firm’s services and products. Companies face a significant challenge in extracting meaningful information from this unstructured, unorganized, massive, and fragmented data. Some research works has been done on Amharic sentiment analysis (AMSA), however none of them have looked at the aspect level by utilizing a deep learning approach. This work focuses on sentiment analysis of Amharic text utilizing aspect level with a hybrid deep learning approach. The dataset was acquired from Amhara Media Corporation's official Facebook page in Microsoft Excel format. Comment exporter software was used to create a dataset of 10,000 in excel format. Different machine learning techniques such as Convolutional neural network (CNN), Long short-term Memory (LSTM), CNN-LSTM and CNN-GRU were used to train and test the dataset. The result of the study shows that LSTM model performed better than other models with training accuracy of 99.10% having a very little difference from CNN-GRU model with 99.08% training accuracy.
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