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Using Summary Layers to Probe Neural Network Behaviour

机译:使用摘要层探测神经网络行为

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No framework exists that can explain and predict the generalisation ability of deep neural networks in general circumstances. In fact, this question has not been answered for some of the least complicated of neural network architectures: fully-connected feedforward networks with rectified linear activations and a limited number of hidden layers. For such an architecture, we show how adding a summary layer to the network makes it more amenable to analysis, and allows us to define the conditions that are required to guarantee that a set of samples will all be classified correctly. This process does not describe the generalisation behaviour of these networks, but produces a number of metrics that are useful for probing their learning and generalisation behaviour. We support the analytical conclusions with empirical results, both to confirm that the mathematical guarantees hold in practice, and to demonstrate the use of the analysis process.
机译:不存在框架,可以解释和预测一般情况下深神经网络的泛化能力。实际上,这个问题尚未回答神经网络架构的一些最不复杂的问题:全连接的前馈网络,具有整流的线性激活和有限数量的隐藏层。对于这样的架构,我们展示了向网络添加摘要层的方式使其更加适合分析,并允许我们定义保证一组样本所需的条件,该条件将正确地分类。该过程没有描述这些网络的泛化行为,而是产生许多用于探测其学习和泛化行为的指标。我们支持具有实证结果的分析结论,既可确认数学保证在实践中持有,并证明使用分析过程的使用。

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