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Particle swarm optimization for determining fuzzy measures from data

机译:粒子群优化可从数据中确定模糊测度

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摘要

Fuzzy measures and fuzzy integrals have been successfully used in many real applications. How to determine fuzzy measures is the most difficult problem in these applications. Though there have existed some methodologies for solving this problem, such as genetic algorithms, gradient descent algorithms and neural networks, it is hard to say which one is more appropriate and more feasible. Each method has its advantages and limitations. Therefore it is necessary to develop new methods or techniques to learn distinct fuzzy measures. In this paper, we make the first attempt to design a special particle swarm algorithm to determine a type of general fuzzy measures from data, and demonstrate that the algorithm is effective and efficient. Furthermore we extend this algorithm to identify and revise other types of fuzzy measures. To test our algorithms, we compare them with the basic particle swarm algorithms, gradient descent algorithms and genetic algorithms in literatures. In addition, for verifying whether our algorithms are robust in noisy-situations, a number of numerical experiments are conducted. Theoretical analysis and experimental results show that, for determining fuzzy measures, the particle swarm optimization is feasible and has a better performance than the existing genetic algorithms and gradient descent algorithms.
机译:模糊度量和模糊积分已在许多实际应用中成功使用。在这些应用中,如何确定模糊测度是最困难的问题。尽管存在一些解决该问题的方法,例如遗传算法,梯度下降算法和神经网络,但很难说哪种方法更合适,更可行。每种方法都有其优点和局限性。因此,有必要开发新的方法或技术来学习不同的模糊测度。在本文中,我们首次尝试设计一种特殊的粒子群算法来从数据中确定一种类型的通用模糊测度,并证明该算法是有效的。此外,我们扩展了该算法,以识别和修改其他类型的模糊测度。为了测试我们的算法,我们将它们与文献中的基本粒子群算法,梯度下降算法和遗传算法进行了比较。另外,为了验证我们的算法在嘈杂环境中是否鲁棒,我们进行了许多数值实验。理论分析和实验结果表明,与现有的遗传算法和梯度下降算法相比,粒子群算法在确定模糊测度上是可行的,并且具有更好的性能。

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