{"title":"深度学习架构的宣言--面向方面级情感分析,提取客户批评意见","authors":"N. Kushwaha, B. Singh, S. Agrawal","doi":"10.4108/eetsis.5698","DOIUrl":null,"url":null,"abstract":"Sentiment analysis, a critical task in natural language processing, aims to automatically identify and classify the sentiment expressed in textual data. Aspect-level sentiment analysis focuses on determining sentiment at a more granular level, targeting specific aspects or features within a piece of text. In this paper, we explore various techniques for sentiment analysis, including traditional machine learning approaches and state-of-the-art deep learning models. Additionally, deep learning techniques has been utilized to identifying and extracting specific aspects from text, addressing aspect-level ambiguity, and capturing nuanced sentiments for each aspect. These datasets are valuable for conducting aspect-level sentiment analysis. In this article, we explore a language model based on pre-trained deep neural networks. This model can analyze sequences of text to classify sentiments as positive, negative, or neutral without explicit human labeling. To evaluate these models, data from Twitter's US airlines sentiment database was utilized. Experiments on this dataset reveal that the BERT, RoBERTA and DistilBERT model outperforms than the ML based model in accuracy and is more efficient in terms of training time. Notably, our findings showcase significant advancements over previous state-of-the-art methods that rely on supervised feature learning, bridging existing gaps in sentiment analysis methodologies. Our findings shed light on the advancements and challenges in sentiment analysis, offering insights for future research directions and practical applications in areas such as customer feedback analysis, social media monitoring, and opinion mining.","PeriodicalId":155438,"journal":{"name":"ICST Transactions on Scalable Information Systems","volume":"49 4","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Manifesto of Deep Learning Architecture for Aspect Level Sentiment Analysis to extract customer criticism\",\"authors\":\"N. Kushwaha, B. Singh, S. Agrawal\",\"doi\":\"10.4108/eetsis.5698\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Sentiment analysis, a critical task in natural language processing, aims to automatically identify and classify the sentiment expressed in textual data. Aspect-level sentiment analysis focuses on determining sentiment at a more granular level, targeting specific aspects or features within a piece of text. In this paper, we explore various techniques for sentiment analysis, including traditional machine learning approaches and state-of-the-art deep learning models. Additionally, deep learning techniques has been utilized to identifying and extracting specific aspects from text, addressing aspect-level ambiguity, and capturing nuanced sentiments for each aspect. These datasets are valuable for conducting aspect-level sentiment analysis. In this article, we explore a language model based on pre-trained deep neural networks. This model can analyze sequences of text to classify sentiments as positive, negative, or neutral without explicit human labeling. To evaluate these models, data from Twitter's US airlines sentiment database was utilized. Experiments on this dataset reveal that the BERT, RoBERTA and DistilBERT model outperforms than the ML based model in accuracy and is more efficient in terms of training time. Notably, our findings showcase significant advancements over previous state-of-the-art methods that rely on supervised feature learning, bridging existing gaps in sentiment analysis methodologies. 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引用次数: 0
摘要
情感分析是自然语言处理中的一项重要任务,旨在自动识别文本数据中表达的情感并对其进行分类。方面级情感分析侧重于在更细的层面上确定情感,针对的是文本中的特定方面或特征。本文探讨了情感分析的各种技术,包括传统的机器学习方法和最先进的深度学习模型。此外,我们还利用深度学习技术来识别和提取文本中的特定方面,解决方面层面的模糊性问题,并捕捉每个方面的细微情感。这些数据集对于进行方面级情感分析非常有价值。在本文中,我们将探讨一种基于预训练深度神经网络的语言模型。该模型可以分析文本序列,将情感分类为正面、负面或中性,而无需明确的人工标注。为了评估这些模型,我们使用了 Twitter 美国航空公司情感数据库中的数据。在该数据集上进行的实验表明,BERT、RoBERTA 和 DistilBERT 模型在准确性上优于基于 ML 的模型,而且在训练时间上更有效。值得注意的是,我们的研究结果表明,与以前依赖于监督特征学习的最先进方法相比,我们的研究取得了重大进步,弥补了情感分析方法中的现有差距。我们的研究结果揭示了情感分析的进步与挑战,为未来的研究方向以及客户反馈分析、社交媒体监测和意见挖掘等领域的实际应用提供了启示。
Manifesto of Deep Learning Architecture for Aspect Level Sentiment Analysis to extract customer criticism
Sentiment analysis, a critical task in natural language processing, aims to automatically identify and classify the sentiment expressed in textual data. Aspect-level sentiment analysis focuses on determining sentiment at a more granular level, targeting specific aspects or features within a piece of text. In this paper, we explore various techniques for sentiment analysis, including traditional machine learning approaches and state-of-the-art deep learning models. Additionally, deep learning techniques has been utilized to identifying and extracting specific aspects from text, addressing aspect-level ambiguity, and capturing nuanced sentiments for each aspect. These datasets are valuable for conducting aspect-level sentiment analysis. In this article, we explore a language model based on pre-trained deep neural networks. This model can analyze sequences of text to classify sentiments as positive, negative, or neutral without explicit human labeling. To evaluate these models, data from Twitter's US airlines sentiment database was utilized. Experiments on this dataset reveal that the BERT, RoBERTA and DistilBERT model outperforms than the ML based model in accuracy and is more efficient in terms of training time. Notably, our findings showcase significant advancements over previous state-of-the-art methods that rely on supervised feature learning, bridging existing gaps in sentiment analysis methodologies. Our findings shed light on the advancements and challenges in sentiment analysis, offering insights for future research directions and practical applications in areas such as customer feedback analysis, social media monitoring, and opinion mining.