MLCLLGNEMay 24, 2016

Hierarchical Memory Networks

arXiv:1605.07427v188 citations
Originality Incremental advance
AI Analysis

This work addresses a bottleneck in memory networks for applications requiring large memories, offering a more efficient and trainable solution for tasks like question answering.

The paper tackles the computational scalability issue of soft attention memory networks and the training difficulty of hard attention mechanisms by proposing a hierarchical memory network that combines both approaches, achieving competitive results on the SimpleQuestions factoid QA task.

Memory networks are neural networks with an explicit memory component that can be both read and written to by the network. The memory is often addressed in a soft way using a softmax function, making end-to-end training with backpropagation possible. However, this is not computationally scalable for applications which require the network to read from extremely large memories. On the other hand, it is well known that hard attention mechanisms based on reinforcement learning are challenging to train successfully. In this paper, we explore a form of hierarchical memory network, which can be considered as a hybrid between hard and soft attention memory networks. The memory is organized in a hierarchical structure such that reading from it is done with less computation than soft attention over a flat memory, while also being easier to train than hard attention over a flat memory. Specifically, we propose to incorporate Maximum Inner Product Search (MIPS) in the training and inference procedures for our hierarchical memory network. We explore the use of various state-of-the art approximate MIPS techniques and report results on SimpleQuestions, a challenging large scale factoid question answering task.

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