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  • title: Learning to Time-Decode in Spiking Neural Networks Through the Information Bottleneck
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            Learning to Time-Decode in Spiking Neural Networks Through the Information Bottleneck
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            Learning to Time-Decode in Spiking Neural Networks Through the Information Bottleneck

            Dec 6, 2021

            Speakers

            NS

            Nicolas Skatchkovsky

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            OS

            Osvaldo Simeone

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            HJ

            Hyeryung Jang

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            About

            One of the key challenges in training Spiking Neural Networks (SNNs) is that target outputs typically come in the form of natural signals, such as labels for classification or images for generative models, and need to be encoded into spikes. This is done by handcrafting target spiking signals, which in turn implicitly fixes the mechanisms used to decode spikes into natural signals, e.g., rate decoding. The arbitrary choice of target signals and decoding rule generally impairs the capacity of the…

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            NeurIPS 2021

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            Neural Information Processing Systems (NeurIPS) is a multi-track machine learning and computational neuroscience conference that includes invited talks, demonstrations, symposia and oral and poster presentations of refereed papers. Following the conference, there are workshops which provide a less formal setting.

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