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Evolutionary Construction of Convolutional Neural Networks

机译:卷积神经网络的进化建设

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Neuro-Evolution is a field of study that has recently gained significantly increased traction in the deep learning community. It combines deep neural networks and evolutionary algorithms to improve and/or automate the construction of neural networks. Recent Neuro-Evolution approaches have shown promising results, rivaling hand-crafted neural networks in terms of accuracy. A two-step approach is introduced where a convolutional autoencoder is created that efficiently compresses the input data in the first step, and a convolutional neural network is created to classify the compressed data in the second step. The creation of networks in both steps is guided by an evolutionary process, where new networks are constantly being generated by mutating members of a collection of existing networks. Additionally, a method is introduced that considers the trade-off between compression and information loss of different convolutional autoencoders. This is used to select the optimal convolutional autoencoder from among those evolved to compress the data for the second step. The complete framework is implemented, tested on the popular CIFAR-10 data set, and the results are discussed. Finally, a number of possible directions for future work with this particular framework in mind are considered, including opportunities to improve its efficiency and its application in particular areas.
机译:神经演变是一项研究领域,最近获得了深度学习界的牵引力显着增加。它结合了深度神经网络和进化算法来改善和/或自动化神经网络的构建。最近的神经演化方法已经表明了有希望的结果,在准确性方面对手制作的神经网络。介绍了一种两步方法,其中创建卷积AutoEncoder,其有效地压缩第一步中的输入数据,并且创建卷积神经网络以在第二步中对压缩数据进行分类。在两个步骤中创建网络是由进化过程引导的,其中通过突变现有网络的成员不断地生成新网络。此外,引入了一种方法,该方法考虑不同卷积自动置换器的压缩和信息丢失之间的权衡。这用于从演进中的那些中选择最佳卷积AutoEncoder以压缩第二步的数据。在流行的CiFar-10数据集上测试完整的框架,并讨论了结果。最后,考虑了许多关于未来工作的可能指导,考虑到考虑到这种特殊的框架,包括提高其效率及其在特定领域的应用的机会。

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