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Fuzzy Logic Programming for Tuning Neural Networks

机译:用于调整神经网络的模糊逻辑编程

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摘要

Wide datasets are usually used for training and validating neural networks, which can be later tuned in order to correct their final behaviors according to a few number of test cases proposed by users. In this paper we show how the FLOPER system developed in our research group is able to perform this last task after coding a neural network with a fuzzy logic: language where program rules extend the classical notion of clause by including on their bodies both fuzzy connectives (useful for modeling activation functions of neurons) and truth degrees (associated with weights and biases in neural networks). We present an online tool which helps to select such operators and values in an automatic way, accomplishing with our recent technique for tuning this kind of fuzzy programs. Moreover, our experimental results reveal that our tool generates the choices that better fit user's preferences in a very efficient way and producing relevant improvements on tuned neural networks.
机译:宽数据集通常用于训练和验证神经网络,可以根据用户提出的一些测试用例对它们进行后期调整,以纠正其最终行为。在本文中,我们展示了我们的研究小组开发的FLOPER系统如何在使用模糊逻辑对神经网络进行编码之后能够执行最后一项任务:程序规则通过在其主体上包含两个模糊连接词来扩展从句的经典概念的语言(可用于建模神经元的激活函数)和真度(与神经网络中的权重和偏差有关)。我们提供了一个在线工具,可帮助您自动选择此类运算符和值,并以我们最近用于调整此类模糊程序的技术来完成。此外,我们的实验结果表明,我们的工具以非常有效的方式生成了更适合用户偏好的选择,并对调谐神经网络产生了相关的改进。

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