首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Storage and recall capabilities of fuzzy morphological associative memories with adjunction-based learning.
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Storage and recall capabilities of fuzzy morphological associative memories with adjunction-based learning.

机译:基于附件学习的模糊形态联想记忆的存储和调用功能。

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摘要

We recently employed concepts of mathematical morphology to introduce fuzzy morphological associative memories (FMAMs), a broad class of fuzzy associative memories (FAMs). We observed that many well-known FAM models can be classified as belonging to the class of FMAMs. Moreover, we developed a general learning strategy for FMAMs using the concept of adjunction of mathematical morphology. In this paper, we describe the properties of FMAMs with adjunction-based learning. In particular, we characterize the recall phase of these models. Furthermore, we prove several theorems concerning the storage capacity, noise tolerance, fixed points, and convergence of auto-associative FMAMs. These theorems are corroborated by experimental results concerning the reconstruction of noisy images. Finally, we successfully employ FMAMs with adjunction-based learning in order to implement fuzzy rule-based systems in an application to a time-series prediction problem in industry.
机译:最近,我们采用数学形态学的概念来引入模糊形态联想记忆(FMAM),这是一类广泛的模糊联想记忆(FAM)。我们观察到,许多著名的FAM模型都可以归类为FMAM。此外,我们使用数学形态学的附加概念开发了FMAM的通用学习策略。在本文中,我们通过基于附加的学习来描述FMAM的属性。特别是,我们描述了这些模型的召回阶段。此外,我们证明了一些关于存储容量,噪声容忍度,固定点和自动关联FMAM收敛的定理。这些定理得到有关噪声图像重建的实验结果的证实。最后,我们成功地将FMAM与基于附件的学习结合使用,以便在工业时间序列预测问题的应用中实施基于模糊规则的系统。

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