Enhancing Self-Supervised Learning through Explainable Artificial Intelligence Mechanisms: A Computational Analysis

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Elie Neghawi, Yan Liu
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引用次数: 0

Abstract

Self-supervised learning continues to drive advancements in machine learning. However, the absence of unified computational processes for benchmarking and evaluation remains a challenge. This study conducts a comprehensive analysis of state-of-the-art self-supervised learning algorithms, emphasizing their underlying mechanisms and computational intricacies. Building upon this analysis, we introduce a unified model-agnostic computation (UMAC) process, tailored to complement modern self-supervised learning algorithms. UMAC serves as a model-agnostic and global explainable artificial intelligence (XAI) methodology that is capable of systematically integrating and enhancing state-of-the-art algorithms. Through UMAC, we identify key computational mechanisms and craft a unified framework for self-supervised learning evaluation. Leveraging UMAC, we integrate an XAI methodology to enhance transparency and interpretability. Our systematic approach yields a 17.12% increase in improvement in training time complexity and a 13.1% boost in improvement in testing time complexity. Notably, improvements are observed in augmentation, encoder architecture, and auxiliary components within the network classifier. These findings underscore the importance of structured computational processes in enhancing model efficiency and fortifying algorithmic transparency in self-supervised learning, paving the way for more interpretable and efficient AI models.
通过可解释的人工智能机制加强自我监督学习:计算分析
自监督学习不断推动着机器学习的进步。然而,缺乏统一的计算流程来进行基准测试和评估仍然是一个挑战。本研究对最先进的自监督学习算法进行了全面分析,强调了其基本机制和计算的复杂性。在这一分析的基础上,我们引入了统一模型无关计算(UMAC)流程,专门用于补充现代自监督学习算法。UMAC 是一种与模型无关的全局可解释人工智能(XAI)方法,能够系统地集成和增强最先进的算法。通过 UMAC,我们确定了关键的计算机制,并为自监督学习评估设计了一个统一的框架。利用 UMAC,我们整合了 XAI 方法,以提高透明度和可解释性。我们的系统方法使训练时间复杂度提高了 17.12%,测试时间复杂度提高了 13.1%。值得注意的是,在网络分类器的增强、编码器架构和辅助组件方面都有所改进。这些发现强调了结构化计算过程在提高模型效率和加强自我监督学习算法透明度方面的重要性,为建立更可解释、更高效的人工智能模型铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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