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TSA-CNN-AOA:使用通过算术优化算法优化的卷积神经网络进行推特情感分析。

TSA-CNN-AOA: Twitter sentiment analysis using CNN optimized via arithmetic optimization algorithm.

作者信息

Aslan Serpil, Kızıloluk Soner, Sert Eser

机构信息

Department of Software Engineering, Faculty of Engineering and Natural Sciences, Malatya Turgut Ozal University, 44210 Malatya, Turkey.

Department of Computer Engineering, Faculty of Engineering and Natural Sciences, Malatya Turgut Ozal University, 44210 Malatya, Turkey.

出版信息

Neural Comput Appl. 2023;35(14):10311-10328. doi: 10.1007/s00521-023-08236-2. Epub 2023 Jan 20.

Abstract

COVID-19, a novel virus from the coronavirus family, broke out in Wuhan city of China and spread all over the world, killing more than 5.5 million people. The speed of spreading is still critical as an infectious disease, and it causes more and more deaths each passing day. COVID-19 pandemic has resulted in many different psychological effects on people's mental states, such as anxiety, fear, and similar complex feelings. Millions of people worldwide have shared their opinions on COVID-19 on several social media websites, particularly on Twitter. Therefore, it is likely to minimize the negative psychological impact of the disease on society by obtaining individuals' views on COVID-19 from social media platforms, making deductions from their statements, and identifying negative statements about the disease. In this respect, Twitter sentiment analysis (TSA), a recently popular research topic, is used to perform data analysis on social media platforms such as Twitter and reach certain conclusions. The present study, too, proposes TSA using convolutional neural network optimized via arithmetic optimization algorithm (TSA-CNN-AOA) approach. Firstly, using a designed API, 173,638 tweets about COVID-19 were extracted from Twitter between July 25, 2020, and August 30, 2020 to create a database. Later, significant information was extracted from this database using FastText Skip-gram. The proposed approach benefits from a designed convolutional neural network (CNN) model as a feature extractor. Thanks to arithmetic optimization algorithm (AOA), a feature selection process was also applied to the features obtained from CNN. Later, K-nearest neighbors (KNN), support vector machine, and decision tree were used to classify tweets as positive, negative, and neutral. In order to measure the TSA performance of the proposed method, it was compared with different approaches. The results demonstrated that TSA-CNN-AOA (KNN) achieved the highest tweet classification performance with an accuracy rate of 95.098. It is evident from the experimental studies that the proposed approach displayed a much higher TSA performance compared to other similar approaches in the existing literature.

摘要

新冠病毒肺炎(COVID-19)是一种来自冠状病毒家族的新型病毒,在中国武汉市爆发并蔓延至全球,导致超过550万人死亡。作为一种传染病,其传播速度仍然至关重要,且每天造成的死亡人数越来越多。COVID-19大流行对人们的心理状态产生了许多不同的影响,如焦虑、恐惧和类似的复杂情绪。全球数百万人在多个社交媒体网站上,特别是在推特上分享了他们对COVID-19的看法。因此,通过从社交媒体平台获取个人对COVID-19的看法、从他们的陈述中进行推断并识别有关该疾病的负面陈述,有可能将该疾病对社会的负面心理影响降至最低。在这方面,推特情感分析(TSA)作为一个最近流行的研究课题,被用于对推特等社交媒体平台进行数据分析并得出某些结论。本研究也提出了使用通过算术优化算法优化的卷积神经网络的TSA(TSA-CNN-AOA)方法。首先,使用设计的应用程序编程接口(API),从2020年7月25日至2020年8月30日期间从推特上提取了173,638条关于COVID-19的推文,以创建一个数据库。随后,使用快速文本跳字模型(FastText Skip-gram)从该数据库中提取重要信息。所提出的方法受益于一个设计的卷积神经网络(CNN)模型作为特征提取器。由于算术优化算法(AOA),还对从CNN获得的特征进行了特征选择过程。随后,使用K近邻(KNN)、支持向量机和决策树将推文分类为正面、负面和中性。为了衡量所提出方法的TSA性能,将其与不同方法进行了比较。结果表明,TSA-CNN-AOA(KNN)以95.098的准确率实现了最高的推文分类性能。从实验研究中可以明显看出,与现有文献中的其他类似方法相比,所提出的方法显示出更高的TSA性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/051f/9867606/6e1565ae0125/521_2023_8236_Fig1_HTML.jpg

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