利用新颖的混合 SDG-LSTM 模型从 Twitter 预测情感,合成竞选口号

Shailesh Sangle, R. Sedamkar
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摘要

研究目标本研究的主要目标包括通过合成从 Twitter 数据中提取的充满情感的标语来增强竞选策略。为此,我们采用了一种新颖的混合 SDG-LSTM 模型,旨在提高政治竞选中的情感预测准确性和传播效果。方法口号的生成过程依赖于从包含情感的推文中得出的情感预测。针对竞选口号提出的情感分析方法包括长短期记忆(LSTM)和门控循环单元(GRU)。我们通过混合 SDG-LSTM 模型引入了一种新方法,该方法利用自扩散引导(SDG)与 LSTM 的结合来提高情感预测的准确性和效率。这种创新方法旨在为分析和生成竞选口号提供一种更稳健、更有效的方法。研究结果对深度学习模型、GRU、LSTM 和混合架构的性能评估揭示了令人信服的结果。GRU 的准确率为 92.98%,令人称赞;LSTM 的准确率为 95.91%,令人印象深刻。值得注意的是,采用 GRU 的混合空间 LSTM 超越了两者,准确率、精确度和召回率均达到了 100%,而且损失极低,仅为 0.0。这些结果凸显了混合模型在情感分析任务中的卓越性能和功效。新颖性:本研究的新颖性体现在引入了混合空间 LSTM 与 GRU 模型,其准确率达到了突破性的 100%,超越了现有模型。这一创新利用了空间注意力机制和 GRU 动态特性的协同融合,标志着情感分析领域高精度预测的重大进步和新基准的建立。关键词标语生成、情感分析、竞选活动、深度学习、LSTM、GRU
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthesis of Slogans with Predicted Sentiment from Twitter using a Novel Hybrid SDG-LSTM Model for Election Campaigns
Objectives: The primary objectives of this study encompass the enhancement of election campaign strategies through the synthesis of sentiment-laden slogans derived from Twitter data. This is achieved by employing a novel Hybrid SDG-LSTM model, aiming to improve sentiment prediction accuracy and communication efficacy in the context of political campaigns. Methods: The process of slogan generation relies on sentiment prediction derived from sentiment-laden tweets. The proposed sentiment analysis methods for election campaign slogans encompass Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU). A novel approach is introduced through the Hybrid SDG-LSTM model, leveraging the combination of Self-Distillation Guidance (SDG) with LSTM to enhance sentiment prediction accuracy and efficiency. This innovative method aims to provide a more robust and effective means of analyzing and generating slogans for election campaigns. Findings: The performance assessment of Deep Learning models, GRU, LSTM, and the Hybrid architecture, unveiled compelling outcomes. GRU showcased a commendable accuracy of 92.98%, while LSTM impressed with 95.91%. Remarkably, the Hybrid Spatial LSTM with GRU surpassed both, achieving perfection with 100% accuracy, precision, recall, and an exceptionally low loss of 0.0. These results underscore the superior performance and efficacy of the Hybrid model in sentiment analysis tasks. Novelty: The novelty of this research is encapsulated in the introduction of the Hybrid Spatial LSTM with GRU model, which demonstrates groundbreaking 100% accuracy, surpassing current models. This innovation capitalizes on the synergistic fusion of spatial attention mechanisms and the dynamic nature of GRU, marking a substantial advancement and establishing a new benchmark for highly accurate predictions in the domain of sentiment analysis. Keywords: ­Slogan Generation, Sentiment Analysis, Election Campaign, Deep Learning, LSTM, GRU
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