探索噪声诱导技术,加强深度学习模型的弹性

Q3 Engineering
A. Ganie, Samad Dadvadipour
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引用次数: 0

摘要

在人工智能领域,防止过拟合和增强模型泛化至关重要。本研究以自然语言处理任务为重点,探索了创新的噪声诱导正则化技术。受梯度噪声和 Dropout 的启发,本研究探讨了受控噪声、模型复杂性和防止过拟合之间的相互作用。本研究利用长短期存储器和双向长短期存储器架构,研究了噪声诱导正则化对噪声输入数据鲁棒性的影响。通过大量实验,本研究表明,引入受控噪声可以提高模型的泛化能力,尤其是在语言理解方面。这有助于从理论上理解噪声诱导的正则化,从而推动用于自然语言处理的可靠、适应性强的人工智能系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring noise-induced techniques to strengthen deep learning model resilience
In artificial intelligence, combating overfitting and enhancing model generalization is crucial. This research explores innovative noise-induced regularization techniques, focusing on natural language processing tasks. Inspired by gradient noise and Dropout, this study investigates the interplay between controlled noise, model complexity, and overfitting prevention. Utilizing long short-term memory and bidirectional long short term memory architectures, this study examines the impact of noise-induced regularization on robustness to noisy input data. Through extensive experimentation, this study shows that introducing controlled noise improves model generalization, especially in language understanding. This contributes to the theoretical understanding of noise-induced regularization, advancing reliable and adaptable artificial intelligence systems for natural language processing.
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来源期刊
Pollack Periodica
Pollack Periodica Engineering-Civil and Structural Engineering
CiteScore
1.50
自引率
0.00%
发文量
82
期刊介绍: Pollack Periodica is an interdisciplinary, peer-reviewed journal that provides an international forum for the presentation, discussion and dissemination of the latest advances and developments in engineering and informatics. Pollack Periodica invites papers reporting new research and applications from a wide range of discipline, including civil, mechanical, electrical, environmental, earthquake, material and information engineering. The journal aims at reaching a wider audience, not only researchers, but also those likely to be most affected by research results, for example designers, fabricators, specialists, developers, computer scientists managers in academic, governmental and industrial communities.
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