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使用增强型大猩猩部队优化算法优化的卷积神经网络对推文进行情感分析。

Sentiment analysis of tweets employing convolutional neural network optimized by enhanced gorilla troops optimization algorithm.

作者信息

Li Fang, Li Jialing, Abza Francis

机构信息

Global Business School, Chongqing College Of International Business And Economics, Chongqing, 401520, China.

School of Artificial intellegence, Chongqing Youth Vocational & Technical College, Chongqing, 401320, China.

出版信息

Sci Rep. 2025 Jan 4;15(1):795. doi: 10.1038/s41598-025-85392-6.

Abstract

Sentiment analysis has become a difficult and important task in the current world. Because of several features of data, including abbreviations, length of tweet, and spelling error, there should be some other non-conventional methods to achieve the accurate results and overcome the current issue. In other words, because of those issues, conventional approaches cannot perform well and accomplish results with high efficiency. Emotional feelings, such as fear, anxiety, or traumas, often stem from many psychological issues experienced during childhood that can persist throughout life. In addition, people discuss and share their ideas on social media, often unconsciously representing their hidden emotions in the comments. This study is about sentiment analysis of tweets shared by several people. In fact, sentiment analysis can determine whether the shared comments and tweets are positive or negative. The paper introduces the use of a Convolutional Neural Network (CNN), a kind of neural network, optimized by the Enhanced Gorilla Troops Optimization Algorithm (CNN-EGTO). Two datasets provided by the SemEval-2016 are used to evaluate the system, while the polarity of tweets were manually determined. It was determined by the findings of the present study that the suggested model could approximately achieve the values of 98%, 95%, 98%, and 96.47% for accuracy, precision, recall, and F1-score, respectively, for positive polarity. In addition, the suggested model could gain the values of 97, 96, 98, and 97.49 for precision, recall, accuracy, and F1-score, respectively, for negative polarity. Consequently, it was found that the suggested model could outperform the other models by considering their performance and efficiency. These values of performance metrics represent that the suggested model could determine the polarity of sentence, positive or negative, with great efficiency.

摘要

情感分析在当今世界已成为一项困难而重要的任务。由于数据的几个特征,包括缩写、推文长度和拼写错误,应该有一些其他非传统方法来获得准确结果并克服当前问题。换句话说,由于这些问题,传统方法无法很好地执行并高效完成结果。诸如恐惧、焦虑或创伤等情绪感受通常源于童年时期经历的许多心理问题,这些问题可能会持续一生。此外,人们在社交媒体上讨论和分享他们的想法,常常在评论中不自觉地表达出他们隐藏的情绪。本研究是关于几个人分享的推文的情感分析。事实上,情感分析可以确定所分享的评论和推文是正面还是负面的。本文介绍了使用卷积神经网络(CNN),一种神经网络,通过增强型大猩猩部队优化算法(CNN-EGTO)进行优化。使用SemEval-2016提供的两个数据集来评估该系统,同时推文的极性是手动确定的。本研究的结果表明,对于积极极性,所建议的模型在准确率、精确率、召回率和F1分数方面分别可以近似达到98%、95%、98%和96.47%的值。此外,对于消极极性,所建议的模型在精确率、召回率、准确率和F1分数方面分别可以获得97、96、98和97.49的值。因此,发现所建议的模型通过考虑其性能和效率可以优于其他模型。这些性能指标值表明所建议的模型可以高效地确定句子的极性,是正面还是负面。

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