Enhancing AI interpretation and decision-making: Integrating cognitive computational models with deep learning for advanced uncertain reasoning systems

被引:0
|
作者
Alijoyo, Franciskus Antonius [1 ]
Janani, S. [2 ]
Santosh, Kathari [3 ]
Shweihat, Safa N. [4 ]
Alshammry, Nizal [5 ]
Ramesh, Janjhyam Venkata Naga [6 ]
El-Ebiary, Yousef A. Baker [7 ]
机构
[1] STMIK LIKMI Bandung, Sch Business & Informat Technol, Ctr Risk Management & Sustainabil Indonesia, Bandung, Indonesia
[2] Periyar Maniammai Inst Sci & Technol, Thanjavur, India
[3] CMR Inst Technol, Dept MBA, Bengaluru, India
[4] German Jordanian Univ, Sch Basic Sci & Humanities, Amman, Jordan
[5] Northern Border Univ, Fac Comp & Informat Technol, Dept Comp Sci, Rafha 91431, Saudi Arabia
[6] Koneru Lakshmaiah Educ Fdn, Dept Comp Sci & Engn, Vaddeswaram 522302, Andhra Prades, India
[7] UniSZA Univ, Fac Informat & Comp, Kuala Terengganu, Malaysia
关键词
Healthcare systems; Uncertain reasoning systems; Decision-making; AI interpretation; Game theory; Practical relevance; FUZZY;
D O I
10.1016/j.aej.2024.04.073
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Advancements in uncertain reasoning systems within healthcare are crucial for navigating the complexities of patient data, requiring innovative methodologies that integrate AI interpretation capabilities and robust handling of inherent ambiguity. Healthcare systems face the challenge of handling uncertainty inherent in patient data, necessitating sophisticated decision-making tools like Uncertain Reasoning Systems (URS) for effective ambiguity navigation. Recognizing the complexity of healthcare scenarios, advancements in AI interpretation within URS are crucial beyond traditional methods. Conventional techniques like statistical approaches and rule-based systems often prove inadequate due to their rigid frameworks and limited ability to manage inherent ambiguity. This paper proposes an innovative methodology that integrates Min-Max normalization and robust missing data handling techniques with Hybrid Fuzzy Rule-Based Systems and Neural Networks, supplemented by Game Theory for model refinement. Through the integration of Game Theory, it can dynamically adjust its strategies to healthcare data uncertainties, thereby enhancing its resilience and efficacy. Implemented using Python tools, the proposed system achieves an exceptional 99.4 % accuracy, surpassing baseline methods such as FNN (88.1 %) and Na & iuml;ve Bayes (90 %), highlighting its superior performance in healthcare decision-making. These findings represent significant strides in AI interpretation and decision-making within Uncertain Reasoning Systems, underscoring the practical relevance of the proposed approach.
引用
收藏
页码:17 / 30
页数:14
相关论文
共 50 条
  • [21] About the Integration of Learning and Decision-Making Models in Intelligent Systems of Real-Time
    Eremeev, Alexander P.
    Kozhukhov, Alexander A.
    PROCEEDINGS OF THE THIRD INTERNATIONAL SCIENTIFIC CONFERENCE INTELLIGENT INFORMATION TECHNOLOGIES FOR INDUSTRY (IITI'18), VOL 2, 2019, 875 : 181 - 189
  • [22] Deep learning models for assisted decision-making in performance optimization of thin film nanocomposite membranes
    Li, Heng
    Zeng, Bin
    Qiu, Taorong
    Huang, Wei
    Wang, Yunkun
    Sheng, Guo-Ping
    Wang, Yunqian
    JOURNAL OF MEMBRANE SCIENCE, 2023, 687
  • [23] Modelling ADHD: A review of ADHD theories through their predictions for computational models of decision-making and reinforcement learning
    Ziegler, Sigurd
    Pedersen, Mads L.
    Mowinckel, Athanasia M.
    Biele, Guido
    NEUROSCIENCE AND BIOBEHAVIORAL REVIEWS, 2016, 71 : 633 - 656
  • [24] An Intelligent Anti-jamming Decision-making Method Based on Deep Reinforcement Learning for Cognitive Radar
    Jiang, Wen
    Wang, Yanping
    Li, Yang
    Lin, Yun
    Shen, Wenjie
    Proceedings of the 2023 26th International Conference on Computer Supported Cooperative Work in Design, CSCWD 2023, 2023, : 1662 - 1666
  • [25] Augmented intelligence in precision medicine: Transforming clinical decision-making with AI/ML and/or quantitative systems pharmacology models
    Venkatapurapu, Sai Phanindra
    Gibbs, Megan
    Kimko, Holly
    CTS-CLINICAL AND TRANSLATIONAL SCIENCE, 2024, 17 (12):
  • [26] AI-Based Learning Model for Sociocybernetic Systems in Web of Things: An Efficient and Accurate Decision-Making Procedure
    Singh, Priti
    Rathee, Geetanjali
    Kerrache, Chaker Abdelaziz
    Bilal, Muhammad
    Calafate, Carlos T.
    Wang, Huihui
    IEEE SYSTEMS MAN AND CYBERNETICS MAGAZINE, 2024, 10 (04): : 40 - 48
  • [27] Intensive Care Unit Decision-Making in Uncertain and Stressful Conditions Part 2 Cognitive Errors, Debiasing Strategies, and Enhancing Critical Thinking
    Christenson, Megan
    Shukla, Anuj
    Patel, Jayshil J.
    CRITICAL CARE CLINICS, 2022, 38 (01) : 89 - 101
  • [28] Switching Deep Reinforcement Learning based Intelligent Online Decision Making for Autonomous Systems under Uncertain Environment
    Zhou, Zejian
    Xu, Hao
    2018 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI), 2018, : 1453 - 1460
  • [29] A new computational account of cognitive control over reinforcement-based decision-making: Modeling of a probabilistic learning task
    Zendehrouh, Sareh
    NEURAL NETWORKS, 2015, 71 : 112 - 123
  • [30] Enhancing Sensing and Decision-Making of Automated Driving Systems With Multi-Access Edge Computing and Machine Learning
    de Souza, Allan M.
    Oliveira, Horacio F.
    Zhao, Zhongliang
    Braun, Torsten
    Loureiro, Antonio A. F.
    Villas, Leandro A.
    IEEE INTELLIGENT TRANSPORTATION SYSTEMS MAGAZINE, 2022, 14 (01) : 44 - 56