Knowing When to Stop: Delay-Adaptive Spiking Neural Network Classifiers with Reliability Guarantees
Jiechen Chen, Sangwoo Park, Osvaldo Simeone

TL;DR
This paper introduces SpikeCP, a delay-adaptive inference method for spiking neural networks that guarantees decision reliability and reduces energy consumption by adaptively stopping processing based on confidence levels.
Contribution
The paper presents a novel conformal prediction-based approach for reliable, delay-adaptive inference in SNNs, with minimal complexity increase and a training phase for delay optimization.
Findings
SpikeCP guarantees decision reliability at input-dependent stopping times.
The method reduces energy consumption by enabling early decisions.
Extensive experiments demonstrate effectiveness across multiple datasets.
Abstract
Spiking neural networks (SNNs) process time-series data via internal event-driven neural dynamics. The energy consumption of an SNN depends on the number of spikes exchanged between neurons over the course of the input presentation. Typically, decisions are produced after the entire input sequence has been processed. This results in latency and energy consumption levels that are fairly uniform across inputs. However, as explored in recent work, SNNs can produce an early decision when the SNN model is sufficiently ``confident'', adapting delay and energy consumption to the difficulty of each example. Existing techniques are based on heuristic measures of confidence that do not provide reliability guarantees, potentially exiting too early. In this paper, we introduce a novel delay-adaptive SNN-based inference methodology that, wrapping around any pre-trained SNN classifier, provides…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · Neural Networks and Applications
MethodsTest
