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Stacking-Based Deep Neural Network: Deep Analytic Network for Pattern Classification

机译:基于堆叠的深神经网络:模式分类深层分析网络

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摘要

Stacking-based deep neural network (S-DNN) is aggregated with pluralities of basic learning modules, one after another, to synthesize a deep neural network (DNN) alternative for pattern classification. Contrary to the DNNs trained from end to end by backpropagation (BP), each S-DNN layer, that is, a self-learnable module, is to be trained decisively and independently without BP intervention. In this paper, a ridge regression-based S-DNN, dubbed deep analytic network (DAN), along with its kernelization (K-DAN), are devised for multilayer feature relearning from the pre-extracted baseline features and the structured features. Our theoretical formulation demonstrates that DAN/K-DAN relearn by perturbing the intra/interclass variations, apart from diminishing the prediction errors. We scrutinize the DAN/K-DAN performance for pattern classification on datasets of varying domains-faces, handwritten digits, generic objects, to name a few. Unlike the typical BP-optimized DNNs to be trained from gigantic datasets by GPU, we reveal that DAN/K-DAN are trainable using only CPU even for small-scale training sets. Our experimental results show that DAN/K-DAN outperform the present S-DNNs and also the BP-trained DNNs, including multiplayer perceptron, deep belief network, etc., without data augmentation applied.
机译:基于堆叠的深神经网络(S-DNN)与多个基本学习模块聚集,一个接一个地,以合成图案分类的深神经网络(DNN)替代方案。与从结束到结束的DNNS培训的DNNS由BackPropagation(BP),每个S-DNN层,即自动学习模块,用于果断,无需BP干预就审视和独立地训练。在本文中,基于RIDGE回归的S-DNN被称为深度分析网络(DAN)以及其内核(K-DAN),用于从预提取的基线特征和结构特征中重新安装多层特征。我们的理论配方表明,除了减少预测误差之外,通过扰动扰动/跨附带的变化进行丹/ K-DAN REREARN。我们对不同域,手写数字,通用对象的数据集进行了仔细审查DAN / K-DAN性能,以命名几个。与GPU从巨大数据集接受培训的典型BP优化的DNN不同,我们揭示了Dan / K-Dan即使仅针对小规模训练套装也只能使用CPU进行培训。我们的实验结果表明,DAN / K-DAN优于目前的S-DNN,也是BP培训的DNN,包括多人参考资料,深度信仰网络等,没有应用数据增强。

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