利用先验知识和认知模型改进深度学习:增强可解释性、对抗鲁棒性和零概率学习的综述

IF 2.1 3区 心理学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Fuseini Mumuni , Alhassan Mumuni
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引用次数: 0

摘要

我们回顾了当前和新兴的知识告知和大脑启发的认知系统,用于实现对抗性防御,可解释的人工智能(XAI)以及零射击或少射击学习。数据驱动的深度学习模型在许多应用中取得了卓越的表现,并展示了超越人类专家的能力。然而,它们无法利用领域知识导致了实际应用中严重的性能限制。特别是,深度学习系统容易受到对抗性攻击,这可能会诱使它们做出明显错误的决定。此外,复杂的数据驱动模型通常缺乏可解释性或可解释性,即它们的决策不能被人类主体理解。此外,模型通常是在具有封闭世界假设的标准数据集上训练的。因此,在实际的开放世界环境中,他们很难在推理过程中推广到看不见的情况,从而提出了零次或几次泛化问题。虽然存在许多传统的解决方案,但明确的领域知识,大脑启发的神经网络和认知架构为缓解这些问题提供了强大的新维度。先验知识以适当的形式表示,并纳入深度学习框架以提高性能。大脑启发认知方法使用模拟人类思维的计算模型来增强人工代理和自主机器人的智能行为。最终,这些模型实现了更好的可解释性、更高的对抗性鲁棒性和数据效率学习,并可以反过来为认知科学和神经科学提供见解——也就是说,加深人类对大脑如何工作以及如何处理这些问题的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving deep learning with prior knowledge and cognitive models: A survey on enhancing explainability, adversarial robustness and zero-shot learning

We review current and emerging knowledge-informed and brain-inspired cognitive systems for realizing adversarial defenses, eXplainable Artificial Intelligence (XAI), and zero-shot or few-shot learning. Data-driven machine learning models have achieved remarkable performance and demonstrated capabilities surpassing humans in many applications. Yet, their inability to exploit domain knowledge leads to serious performance limitations in practical applications. In particular, deep learning systems are exposed to adversarial attacks, which can trick them into making glaringly incorrect decisions. Moreover, complex data-driven models typically lack interpretability or explainability, i.e., their decisions cannot be understood by human subjects. Furthermore, models are usually trained on standard datasets with a closed-world assumption. Hence, they struggle to generalize to unseen cases during inference in practical open-world environments, thus, raising the zero- or few-shot generalization problem. Although many conventional solutions exist, explicit domain knowledge, brain-inspired neural networks and cognitive architectures offer powerful new dimensions towards alleviating these problems. Prior knowledge is represented in appropriate forms like mathematical relations, logic rules, knowledge graphs, and large language models (LLMs). and incorporated in deep learning frameworks to improve performance. Brain-inspired cognition methods use computational models that mimic the human brain to enhance intelligent behavior in artificial agents and autonomous robots. Ultimately, these models achieve better explainability, higher adversarial robustness and data-efficient learning, and can, in turn, provide insights for cognitive science and neuroscience—that is, to deepen human understanding on how the brain works in general, and how it handles these problems.

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来源期刊
Cognitive Systems Research
Cognitive Systems Research 工程技术-计算机:人工智能
CiteScore
9.40
自引率
5.10%
发文量
40
审稿时长
>12 weeks
期刊介绍: Cognitive Systems Research is dedicated to the study of human-level cognition. As such, it welcomes papers which advance the understanding, design and applications of cognitive and intelligent systems, both natural and artificial. The journal brings together a broad community studying cognition in its many facets in vivo and in silico, across the developmental spectrum, focusing on individual capacities or on entire architectures. It aims to foster debate and integrate ideas, concepts, constructs, theories, models and techniques from across different disciplines and different perspectives on human-level cognition. The scope of interest includes the study of cognitive capacities and architectures - both brain-inspired and non-brain-inspired - and the application of cognitive systems to real-world problems as far as it offers insights relevant for the understanding of cognition. Cognitive Systems Research therefore welcomes mature and cutting-edge research approaching cognition from a systems-oriented perspective, both theoretical and empirically-informed, in the form of original manuscripts, short communications, opinion articles, systematic reviews, and topical survey articles from the fields of Cognitive Science (including Philosophy of Cognitive Science), Artificial Intelligence/Computer Science, Cognitive Robotics, Developmental Science, Psychology, and Neuroscience and Neuromorphic Engineering. Empirical studies will be considered if they are supplemented by theoretical analyses and contributions to theory development and/or computational modelling studies.
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