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Inferring Algorithmic Patterns with Stack-Augmented Recurrent Nets

机译:带有堆栈增强递归网络的算法模式推断

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Despite the recent achievements in machine learning, we are still very far from achieving real artificial intelligence. In this paper, we discuss the limitations of standard deep learning approaches and show that some of these limitations can be overcome by learning how to grow the complexity of a model in a structured way. Specifically, we study the simplest sequence prediction problems that are beyond the scope of what is learnable with standard recurrent networks, algorithmically generated sequences which can only be learned by models which have the capacity to count and to memorize sequences. We show that some basic algorithms can be learned from sequential data using a recurrent network associated with a trainable memory.
机译:尽管最近在机器学习方面取得了成就,但我们离实现真正的人工智能还有很长的路要走。在本文中,我们讨论了标准深度学习方法的局限性,并表明可以通过学习如何以结构化方式增加模型的复杂性来克服其中的一些局限性。具体而言,我们研究了超出最简单的序列预测问题的问题,这些问题超出了标准递归网络可学习的范围,算法生成的序列只能由具有计数和记忆序列能力的模型学习。我们表明,可以使用与可训练内存关联的循环网络从顺序数据中学习一些基本算法。

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