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arxiv: 1906.04304 · v1 · pith:UYNAJ4VYnew · submitted 2019-06-10 · 💻 cs.LG · cs.DB· cs.DS· stat.ML

Meta-Learning Neural Bloom Filters

classification 💻 cs.LG cs.DBcs.DSstat.ML
keywords neuraldatabloomtrainingbeencompressionfiltersinputs
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There has been a recent trend in training neural networks to replace data structures that have been crafted by hand, with an aim for faster execution, better accuracy, or greater compression. In this setting, a neural data structure is instantiated by training a network over many epochs of its inputs until convergence. In applications where inputs arrive at high throughput, or are ephemeral, training a network from scratch is not practical. This motivates the need for few-shot neural data structures. In this paper we explore the learning of approximate set membership over a set of data in one-shot via meta-learning. We propose a novel memory architecture, the Neural Bloom Filter, which is able to achieve significant compression gains over classical Bloom Filters and existing memory-augmented neural networks.

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