分析增强技术对欺骗性评论检测的深度学习模型的影响:比较研究

Anusuya KRİSHNAN, Kennedyraj MARİAFRANCİS
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引用次数: 0

摘要

深度学习已经带来了迷人的应用,其中自然语言处理(NLP)脱颖而出。本研究探讨了数据增强训练策略在推进自然语言处理中的作用。数据增强涉及通过转换创建综合训练数据,这是一个在各种机器学习领域中得到充分探索的研究领域。除了增强模型的泛化能力外,数据增强还解决了一系列挑战,例如有限的训练数据、学习目标的正则化以及通过限制数据使用来保护隐私。本研究的目的是研究数据增强如何提高模型准确性和精确预测,特别是使用基于深度学习的模型。并对未加数据增强的深度学习模型和加数据增强的深度学习模型进行了对比分析。
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Analyzing the Impact of Augmentation Techniques on Deep Learning Models for Deceptive Review Detection: A Comparative Study
Deep Learning has brought forth captivating applications, and among them, Natural Language Processing (NLP) stands out. This study delves into the role of the data augmentation training strategy in advancing NLP. Data augmentation involves the creation of synthetic training data through transformations, and it is a well-explored research area across various machine learning domains. Apart from enhancing a model's generalization capabilities, data augmentation addresses a wide range of challenges, such as limited training data, regularization of the learning objective, and privacy protection by limiting data usage. The objective of this study is to investigate how data augmentation improves model accuracy and precise predictions, specifically using deep learning-based models. Furthermore, the study conducts a comparative analysis between deep learning models without data augmentation and those with data augmentation.
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