ITNENCSep 13, 2012

A new class of metrics for spike trains

arXiv:1209.2918v322 citations
Originality Incremental advance
AI Analysis

This work addresses the need for specialized metrics in neuroscience for analyzing spike train data, especially for burst-encoded information, but it is incremental as it builds upon existing metric frameworks.

The authors tackled the problem of measuring distances between spike trains by introducing a new class of metrics, including the modulus-metric and max-metric, which are particularly suitable for burst-encoded information and can be computed linearly with spike count.

The distance between a pair of spike trains, quantifying the differences between them, can be measured using various metrics. Here we introduce a new class of spike train metrics, inspired by the Pompeiu-Hausdorff distance, and compare them with existing metrics. Some of our new metrics (the modulus-metric and the max-metric) have characteristics that are qualitatively different than those of classical metrics like the van Rossum distance or the Victor & Purpura distance. The modulus-metric and the max-metric are particularly suitable for measuring distances between spike trains where information is encoded in bursts, but the number and the timing of spikes inside a burst does not carry information. The modulus-metric does not depend on any parameters and can be computed using a fast algorithm, in a time that depends linearly on the number of spikes in the two spike trains. We also introduce localized versions of the new metrics, which could have the biologically-relevant interpretation of measuring the differences between spike trains as they are perceived at a particular moment in time by a neuron receiving these spike trains.

Code Implementations3 repos
Foundations

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