利用迁移学习优化 RMDL,在 MapReduce 框架中进行情感分类

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Konda Adilakshmi;Malladi Srinivas;Anuradha Kodali;V. Srilakshmi
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引用次数: 0

摘要

情感分析的一项核心任务是情感分类,根据用户在社交媒体上的言论或产品评价来了解用户的感受至关重要。由于存在模棱两可的短语、拒绝词和其他因素,情感分类提出了一些具有挑战性的问题。本研究的目标是开发一种基于优化的深度学习模型和基于 MapReduce 框架的混合情感分类方法。评论文档来自一个数据集,在本案例中使用了 MapReduce 方法。MapReduce 是一种用于分析海量数据的软件框架和编程模型,由映射器和还原器两个阶段组成。BERT 标记化和方面术语提取在 mapper 阶段执行,而情感分析则在 reducer 阶段利用带有迁移学习的随机多模态深度学习(RMDL)以及作为预训练模型的 AlexNet 和 ResNet 50 执行。此外,在 RMDL 中还提供了指数库特政治算法(ECPA)作为权重优化算法。ECPA 是通过将指数加权移动平均模型(EWMA)与 coot 算法以及政治优化器(PO)相结合而得到的。所提出的 ECPA_RMDL 模型获得了 90.9% 的精确度、89.7% 的召回率和 89.9% 的 f-measure。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized RMDL with Transfer Learning for Sentiment Classification in the MapReduce Framework
A core task in sentiment analysis is sentiment categorization, and it is crucial to understand user feelings based on their remarks in social media or product evaluations. Due to ambiguous phrases, refusal words, and other factors, categorizing sentiment presents several challenging issues. The objective of this research is to develop a hybrid optimization-based deep learning model and MapReduce framework-based sentiment categorization approach. The review document is taken from a dataset and used in this case with the MapReduce methodology. MapReduce is a software framework and programming model for analyzing massive volumes of data that consists of two phases, mapper and reducer. BERT tokenization and aspect term extraction are executed in the mapper phase, whereas sentiment analysis is performed in the reducer stage utilizing random multimodal deep learning (RMDL) with transfer learning and AlexNet and ResNet 50 as pre-trained models. In addition, the exponential coot political algorithm (ECPA) is offered as an optimization algorithm for weight optimization in RMDL. The ECPA is obtained by combining the exponential weighted moving average model (EWMA) with the coot algorithm, as well as a political optimizer (PO). The proposed ECPA_RMDL model has acquired 90.9% precision, 89.7% recall, and 89.9% f-measure.
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来源期刊
Journal of Web Engineering
Journal of Web Engineering 工程技术-计算机:理论方法
CiteScore
1.80
自引率
12.50%
发文量
62
审稿时长
9 months
期刊介绍: The World Wide Web and its associated technologies have become a major implementation and delivery platform for a large variety of applications, ranging from simple institutional information Web sites to sophisticated supply-chain management systems, financial applications, e-government, distance learning, and entertainment, among others. Such applications, in addition to their intrinsic functionality, also exhibit the more complex behavior of distributed applications.
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