Spike-Triggered Descent

05/12/2020
by   Michael Kummer, et al.
0

The characterization of neural responses to sensory stimuli is a central problem in neuroscience. Spike-triggered average (STA), an influential technique, has been used to extract optimal linear kernels in a variety of animal subjects. However, when the model assumptions are not met, it can lead to misleading and imprecise results. We introduce a technique, called spike-triggered descent (STD), which can be used alone or in conjunction with STA to increase precision and yield success in scenarios where STA fails. STD works by simulating a model neuron that learns to reproduce the observed spike train. Learning is achieved via parameter optimization that relies on a metric induced on the space of spike trains modeled as a novel inner product space. This technique can precisely learn higher order kernels using limited data. Kernels extracted from a Locusta migratoria tympanal nerve dataset demonstrate the strength of this approach.

READ FULL TEXT
research
05/31/2019

Signal Coding and Perfect Reconstruction using Spike Trains

In many animal sensory pathways, the transformation from external stimul...
research
10/23/2020

Rescuing neural spike train models from bad MLE

The standard approach to fitting an autoregressive spike train model is ...
research
02/01/1999

Cortical Potential Distributions and Cognitive Information Processing

The use of cortical field potentials rather than the details of spike tr...
research
08/05/2018

Computationally efficient model selection for joint spikes and waveforms decoding

A recent paradigm for decoding behavioral variables or stimuli from neur...
research
09/13/2012

A new class of metrics for spike trains

The distance between a pair of spike trains, quantifying the differences...
research
10/10/2020

Point process models for sequence detection in high-dimensional neural spike trains

Sparse sequences of neural spikes are posited to underlie aspects of wor...
research
01/14/2005

Spike timing precision and neural error correction: local behavior

The effects of spike timing precision and dynamical behavior on error co...

Please sign up or login with your details

Forgot password? Click here to reset