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Learning Interpretable Hidden State Structures for Handwritten Numeral Recognition

机译:学习可解释的隐藏状态结构以进行手写数字识别

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A novel paradigm of learning interpretable hidden state structures from the Multi-Layer Perceptron (MLP) neural network is proposed, in this work, that considers hidden state activations as the feature vector. The classification task at hand is handwritten numeral recognition. The k-means Elbow method is used to analyze the interpretability of the clusters formed from each hidden layer. Only the hidden layer that forms well-defined and linearly separable clusters, corresponding to the different numeral classes, is considered for the feature extraction. An interpretable structure thus emerges from the hidden representations that are learnt using a suitable classifier. Direct learning of hidden states using the linear k-Nearest Neighbor (kNN) classifier and the Support Vector Machine (SVM) with linear kernel yields high accuracies. Two different MLP configurations are tested for the purpose. Patch-based hidden structure learning with feature fusion is found to further improve the results. Experiments on the benchmark MNIST handwritten numeral image dataset prove the efficacy of our interpretability-based approach as compared to existing works.
机译:在这项工作中,提出了一种从多层感知器(MLP)神经网络学习可解释的隐藏状态结构的新颖范例,该范例将隐藏状态激活视为特征向量。当前的分类任务是手写数字识别。 k均值Elbow方法用于分析由每个隐藏层形成的群集的可解释性。对于特征提取,仅考虑形成与各个数字类别相对应的定义良好且线性可分离的群集的隐藏层。因此,使用合适的分类器从隐藏的表示中得出了可解释的结构。使用线性k最近邻(kNN)分类器和具有线性核的支持向量机(SVM)直接学习隐藏状态可产生较高的精度。为此,测试了两种不同的MLP配置。发现具有特征融合的基于补丁的隐藏结构学习可进一步改善结果。在基准MNIST手写数字图像数据集上进行的实验证明了与现有作品相比,我们基于可解释性的方法的功效。

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