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Developing an Efficient Deep Learning-Based Trusted Model for Pervasive Computing Using an LSTM-Based Classification Model

机译:使用基于LSTM的分类模型开发普遍计算的高效深入学习的可信模型

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摘要

Mobile and pervasive computing is one of the recent paradigms available in the area of information technology. The role of pervasive computing is foremost in the field where it provides the ability to distribute computational services to the surroundings where people work and leads to issues such as trust, privacy, and identity. To provide an optimal solution to these generic problems, the proposed research work aims to implement a deep learning-based pervasive computing architecture to address these problems. Long short-term memory architecture is used during the development of the proposed trusted model. The applicability of the proposed model is validated by comparing its performance with the generic back-propagation neural network. This model results with an accuracy rate of 93.87% for the LSTM-based model much better than 85.88% for the back-propagation-based deep model. The obtained results reflect the usefulness and applicability of such an approach and the competitiveness against other existing ones.
机译:移动和普遍的计算是最近在信息技术领域可用的近期范式之一。普遍计算的作用是该领域的最重要的,它提供了将计算服务分发给人们工作的周围环境并导致诸如信任,隐私和身份之类的问题的能力。为了为这些通用问题提供最佳解决方案,所提出的研究工作旨在实现基于深度学习的普遍计算架构,以解决这些问题。在拟议的可信模型的开发期间使用长短期内存架构。通过将其性能与通用背传播神经网络进行比较,验证了所提出的模型的适用性。对于基于后传播的深度模型的基于LSTM的模型,这种模型的准确率为93.87%,对于基于LSTM的模型优于85.88%。所获得的结果反映了这种方法的有用性和适用性以及对其他现有现有的竞争力。

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