Improving deep learning with prior knowledge and cognitive models: A survey on enhancing explainability, adversarial robustness and zero-shot learning

被引:2
作者
Mumuni, Fuseini [1 ,3 ]
Mumuni, Alhassan [2 ]
机构
[1] Univ Mines & Technol UMaT, Dept Elect & Elect Engn, Tarkwa, Ghana
[2] Cape Coast Tech Univ, Dept Elect & Elect Engn, Cape Coast, Ghana
[3] POB 237, Tarkwa, Ghana
来源
COGNITIVE SYSTEMS RESEARCH | 2024年 / 84卷
关键词
Domain knowledge; Cognitive architecture; Brain-inspired neural network; Explainable AI; Adversarial attack; Zero-shot generalization; NEURAL-NETWORKS; HIERARCHICAL STRUCTURE; DATA FUSION; BLACK-BOX; ARCHITECTURE; BRAIN; GRAPH; RECOGNITION; PERFORMANCE; COMPONENTS;
D O I
10.1016/j.cogsys.2023.101188
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
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 fewshot generalization problem. Although many conventional solutions exist, explicit domain knowledge, braininspired 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.
引用
收藏
页数:30
相关论文
共 25 条
  • [21] Evaluating the Robustness of Deep Learning Models against Adversarial Attacks: An Analysis with FGSM, PGD and CW
    Villegas-Ch, William
    Jaramillo-Alcazar, Angel
    Lujan-Mora, Sergio
    BIG DATA AND COGNITIVE COMPUTING, 2024, 8 (01)
  • [22] Learning Deep Cross-Modal Embedding Networks for Zero-Shot Remote Sensing Image Scene Classification
    Li, Yansheng
    Zhu, Zhihui
    Yu, Jin-Gang
    Zhang, Yongjun
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2021, 59 (12): : 10590 - 10603
  • [23] Improving Autonomous Vehicle Cognitive Robustness in Extreme Weather With Deep Learning and Thermal Camera Fusion
    Nawaz, Mehmood
    Khan, Sheheryar
    Daud, Muhammad
    Asim, Muhammad
    Anwar, Ghazanfar Ali
    Shahid, Ali Raza
    Ho, Ho Pui Aaron
    Chan, Tom
    Kong, Daniel Pak
    Yuan, Wu
    IEEE OPEN JOURNAL OF VEHICULAR TECHNOLOGY, 2025, 6 : 426 - 441
  • [24] Robustness in deep learning models for medical diagnostics: security and adversarial challenges towards robust AI applications
    Javed, Haseeb
    El-Sappagh, Shaker
    Abuhmed, Tamer
    ARTIFICIAL INTELLIGENCE REVIEW, 2024, 58 (01)
  • [25] Improving Mapping Accuracy of Smallholder Potato Planting Areas by Embedding Prior Knowledge into a Novel Multi-temporal Deep Learning Network
    Yang, Sen
    Feng, Quan
    Gao, Xueze
    Yang, Wanxia
    Wang, Guanping
    POTATO RESEARCH, 2024,