An Efficient Optimized DenseNet Model for Aspect-Based Multi-Label Classification

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Algorithms Pub Date : 2023-11-28 DOI:10.3390/a16120548
N. Ayub, Tayyaba, Saddam Hussain, Syed Sajid Ullah, Jawaid Iqbal
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引用次数: 0

Abstract

Sentiment analysis holds great importance within the domain of natural language processing as it examines both the expressed and underlying emotions conveyed through review content. Furthermore, researchers have discovered that relying solely on the overall sentiment derived from the textual content is inadequate. Consequently, sentiment analysis was developed to extract nuanced expressions from textual information. One of the challenges in this field is effectively extracting emotional elements using multi-label data that covers various aspects. This article presents a novel approach called the Ensemble of DenseNet based on Aquila Optimizer (EDAO). EDAO is specifically designed to enhance the precision and diversity of multi-label learners. Unlike traditional multi-label methods, EDAO strongly emphasizes improving model diversity and accuracy in multi-label scenarios. To evaluate the effectiveness of our approach, we conducted experiments on seven distinct datasets, including emotions, hotels, movies, proteins, automobiles, medical, news, and birds. Our initial strategy involves establishing a preprocessing mechanism to obtain precise and refined data. Subsequently, we used the Vader tool with Bag of Words (BoW) for feature extraction. In the third stage, we created word associations using the word2vec method. The improved data were also used to train and test the DenseNet model, which was fine-tuned using the Aquila Optimizer (AO). On the news, emotion, auto, bird, movie, hotel, protein, and medical datasets, utilizing the aspect-based multi-labeling technique, we achieved accuracy rates of 95%, 97%, and 96%, respectively, with DenseNet-AO. Our proposed model demonstrates that EDAO outperforms other standard methods across various multi-label datasets with different dimensions. The implemented strategy has been rigorously validated through experimental results, showcasing its effectiveness compared to existing benchmark approaches.
基于方面的多标签分类的高效优化密集网络模型
情感分析在自然语言处理领域具有重要意义,因为它既能研究评论内容所表达的情感,也能研究评论内容所隐含的情感。此外,研究人员还发现,仅仅依靠从文本内容中获得的整体情感是不够的。因此,情感分析应运而生,目的是从文本信息中提取细微的表达。该领域面临的挑战之一是如何利用涵盖各个方面的多标签数据有效地提取情感元素。本文介绍了一种名为基于 Aquila 优化器的密集网络集合(EDAO)的新方法。EDAO 专为提高多标签学习器的精确度和多样性而设计。与传统的多标签方法不同,EDAO 着重强调在多标签场景中提高模型的多样性和准确性。为了评估我们方法的有效性,我们在七个不同的数据集上进行了实验,包括情感、酒店、电影、蛋白质、汽车、医疗、新闻和鸟类。我们的初始策略包括建立一个预处理机制,以获得精确而精细的数据。随后,我们使用带有词袋(BoW)的 Vader 工具进行特征提取。在第三阶段,我们使用 word2vec 方法创建词关联。改进后的数据还用于训练和测试 DenseNet 模型,并使用 Aquila 优化器 (AO) 对其进行了微调。在新闻、情感、汽车、鸟类、电影、酒店、蛋白质和医疗数据集上,利用基于方面的多重标记技术,我们使用 DenseNet-AO 实现的准确率分别为 95%、97% 和 96%。我们提出的模型表明,在不同维度的多标签数据集上,EDAO 的表现优于其他标准方法。我们通过实验结果严格验证了所实施的策略,并展示了它与现有基准方法相比的有效性。
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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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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