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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >A Hierarchical Fused Fuzzy Deep Neural Network for Data Classification
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A Hierarchical Fused Fuzzy Deep Neural Network for Data Classification

机译:用于数据分类的分层融合模糊神经网络

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摘要

Deep learning (DL) is an emerging and powerful paradigm that allows large-scale task-driven feature learning from big data. However, typical DL is a fully deterministic model that sheds no light on data uncertainty reductions. In this paper, we show how to introduce the concepts of fuzzy learning into DL to overcome the shortcomings of fixed representation. The bulk of the proposed fuzzy system is a hierarchical deep neural network that derives information from both fuzzy and neural representations. Then, the knowledge learnt from these two respective views are fused altogether forming the final data representation to be classified. The effectiveness of the model is verified on three practical tasks of image categorization, high-frequency financial data prediction and brain MRI segmentation that all contain high level of uncertainties in the raw data. The fuzzy dDL paradigm greatly outperforms other nonfuzzy and shallow learning approaches on these tasks.
机译:深度学习(DL)是一种新兴且功能强大的范例,它允许从大数据中进行大规模任务驱动的功能学习。但是,典型的DL是一种完全确定性的模型,对减少数据不确定性没有任何帮助。在本文中,我们展示了如何将模糊学习的概念引入DL中,以克服固定表示的缺点。所提出的模糊系统主要是一个分层的深度神经网络,该网络从模糊和神经表示两者中获取信息。然后,将从这两个各自的观点中学到的知识融合在一起,形成最终的数据分类表示。该模型的有效性在图像分类,高频财务数据预测和脑MRI分割这三项实际任务中得到了验证,这些任务在原始数据中都具有高度的不确定性。在这些任务上,模糊dDL范例大大优于其他非模糊和浅层学习方法。

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