Spikernels: Embedding Spiking Neurons in Inner-Product Spaces
Abstract
Inner-product operators, often referred to as kernels in statistical learning, de- fine a mapping from some input space into a feature space. The focus of this paper is the construction of biologically-motivated kernels for cortical ac- tivities. The kernels we derive, termed Spikernels, map spike count sequences into an abstract vector space in which we can perform various prediction tasks. We discuss in detail the derivation of Spikernels and describe an efficient al- gorithm for computing their value on any two sequences of neural population spike counts. We demonstrate the merits of our modeling approach using the Spikernel and various standard kernels for the task of predicting hand move- ment velocities from cortical recordings. In all of our experiments all the ker- nels we tested outperform the standard scalar product used in regression with the Spikernel consistently achieving the best performance.
Cite
Text
Shpigelman et al. "Spikernels: Embedding Spiking Neurons in Inner-Product Spaces." Neural Information Processing Systems, 2002.Markdown
[Shpigelman et al. "Spikernels: Embedding Spiking Neurons in Inner-Product Spaces." Neural Information Processing Systems, 2002.](https://mlanthology.org/neurips/2002/shpigelman2002neurips-spikernels/)BibTeX
@inproceedings{shpigelman2002neurips-spikernels,
title = {{Spikernels: Embedding Spiking Neurons in Inner-Product Spaces}},
author = {Shpigelman, Lavi and Singer, Yoram and Paz, Rony and Vaadia, Eilon},
booktitle = {Neural Information Processing Systems},
year = {2002},
pages = {141-148},
url = {https://mlanthology.org/neurips/2002/shpigelman2002neurips-spikernels/}
}