Scalable and Adaptive Fuzzy Grid Partitioning for Enhanced Rule Generation in Complex Decision-Making Systems

Abubakar Gwarzo Ɗambatta
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Abstract

This research focuses on addressing the challenges of rule generation in complex decision-making systems by proposing a scalable and adaptive fuzzy grid partitioning approach. Traditional rule generation methods often struggle to handle large datasets and dynamic environments, leading to decreased accuracy and computational inefficiencies. In this study, we present a novel approach that integrates scalable and adaptive techniques to enhance the accuracy, efficiency, and interpretability of rule-based frameworks. The scalable fuzzy grid partitioning algorithm efficiently partitions the attribute space, allowing for the generation of rules in decision-making systems with a large number of data points. By incorporating data parallelization and dimensionality reduction techniques, the approach mitigates computational complexity while maintaining rule generation accuracy. Furthermore, the adaptive fuzzy grid partitioning algorithm dynamically adjusts the partitioning structure based on changing conditions, capturing evolving patterns and ensuring the relevancy and reliability of the generated rules over time. The generated rules are evaluated using fuzzy rule evaluation functions, which consider the degree of membership in the corresponding fuzzy grid cells. This evaluation process ranks and selects the rules based on their firing strengths, providing an interpretable decision-making framework for complex systems. The approach enhances the interpretability of the generated rules by capturing the uncertainties and complexities inherent in decision-making processes. To validate the effectiveness of the proposed approach, we conducted experiments using a credit risk assessment case example. The results demonstrate improved accuracy and efficiency compared to traditional rule generation methods. The generated rules offer transparency and insight into the factors influencing credit risk assessments, enabling informed decision-making. However, this research has some limitations, including potential dataset dependencies, the choice of fuzzy membership functions, computational complexity, and the need for further evaluation metrics and real-world implementation considerations. Future research should focus on addressing these limitations and exploring the applicability of the proposed approach in diverse domains. In conclusion, the scalable and adaptive fuzzy grid partitioning approach presented in this research offers a promising solution to the challenges of rule generation in complex decision-making systems. By addressing scalability, adaptability, and interpretability, this approach enhances the accuracy and efficiency of rule-based frameworks, paving the way for more effective decision support systems in various domains.
复杂决策系统中增强规则生成的可扩展自适应模糊网格划分
本研究通过提出一种可扩展和自适应的模糊网格划分方法来解决复杂决策系统中规则生成的挑战。传统的规则生成方法通常难以处理大型数据集和动态环境,从而导致准确性降低和计算效率低下。在本研究中,我们提出了一种集成可扩展和自适应技术的新方法,以提高基于规则的框架的准确性、效率和可解释性。可扩展模糊网格划分算法对属性空间进行了有效的划分,使得具有大量数据点的决策系统能够生成规则。通过合并数据并行化和降维技术,该方法降低了计算复杂性,同时保持了规则生成的准确性。此外,自适应模糊网格划分算法根据变化的条件动态调整划分结构,捕捉不断变化的模式,保证生成的规则随时间的相关性和可靠性。使用模糊规则评价函数对生成的规则进行评价,该函数考虑了相应模糊网格单元的隶属度。该评估过程根据射击强度对规则进行排序和选择,为复杂系统提供可解释的决策框架。该方法通过捕获决策过程中固有的不确定性和复杂性来增强生成规则的可解释性。为了验证所提出方法的有效性,我们使用信用风险评估案例进行了实验。结果表明,与传统的规则生成方法相比,该方法具有更高的准确性和效率。生成的规则为影响信用风险评估的因素提供了透明度和洞察力,从而实现了明智的决策。然而,本研究存在一些局限性,包括潜在的数据集依赖性,模糊隶属函数的选择,计算复杂性,以及需要进一步的评估指标和实际实现考虑因素。未来的研究应侧重于解决这些局限性,并探索所提出的方法在不同领域的适用性。总之,本研究提出的可扩展和自适应模糊网格划分方法为复杂决策系统中规则生成的挑战提供了一个有希望的解决方案。通过处理可伸缩性、适应性和可解释性,这种方法增强了基于规则的框架的准确性和效率,为在各个领域建立更有效的决策支持系统铺平了道路。
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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