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Dynamic Fuzzy Semisupervised Multitask Learning

机译:动态模糊半监督多任务学习

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摘要

Semi supervised multitask learning has been one of the hotest problems in the machine learning field in recent years. In this paper a dynamic fuzzy semi supervised multitask learning algorithm has been proposed to deal with the dynamic fuzzy problems. Our goal is to learn dynamic fuzzy possibility of each class with a limited initial data set, and the dynamic fuzzy possibility is numerically equal to the membership functions of each class. So the dynamic fuzzy possibility needs to be adapted with new data incoming. Experiment results shows that our method has performed much better, compared with the semi supervised fuzzy pattern matching algorithm proposed in [9].
机译:近年来,半监督多任务学习一直是机器学习领域中最热门的问题之一。针对动态模糊问题,提出了一种动态模糊半监督多任务学习算法。我们的目标是通过有限的初始数据集学习每个类别的动态模糊可能性,并且动态模糊可能性在数值上等于每个类别的隶属函数。因此,动态模糊可能性需要适应新的数据输入。实验结果表明,与文献[9]中提出的半监督模糊模式匹配算法相比,我们的方法性能更好。

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