English
 
Help Privacy Policy Disclaimer
  Advanced SearchBrowse

Item

ITEM ACTIONSEXPORT
 
 
DownloadE-Mail
  Spectral learning of linear dynamics from generalised-linear observations with application to neural population data

Buesing, L., Macke, J., & Sahani, M. (2012). Spectral learning of linear dynamics from generalised-linear observations with application to neural population data. In Advances in Neural Information Processing Systems 25 (pp. 1691-1699).

Item is

Files

show Files

Locators

show

Creators

show
hide
 Creators:
Buesing, L, Author
Macke, JH1, 2, Author           
Sahani, M, Author
Bartlett, Editor
P., Editor
Pereira, F.C.N., Editor
Bottou, L., Editor
Burges, C.J.C., Editor
Weinberger, K.Q., Editor
Affiliations:
1Research Group Computational Vision and Neuroscience, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497805              
2Department Empirical Inference, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497795              

Content

show
hide
Free keywords: -
 Abstract: Latent linear dynamical systems with generalised-linear observation models arise in a variety of applications, for example when modelling the spiking activity of populations of neurons. Here, we show how spectral learning methods for linear systems with Gaussian observations (usually called subspace identification in this context) can be extended to estimate the parameters of dynamical system models observed through non-Gaussian noise models. We use this approach to obtain estimates of parameters for a dynamical model of neural population data, where the observed spike-counts are Poisson-distributed with log-rates determined by the latent dynamical process, possibly driven by external inputs. We show that the extended system identification algorithm is consistent and accurately recovers the correct parameters on large simulated data sets with much smaller computational cost than approximate expectation-maximisation (EM) due to the non-iterative nature of subspace identification. Even on smaller data sets, it provides an effective initialization for EM, leading to more robust performance and faster convergence. These benefits are shown to extend to real neural data.

Details

show
hide
Language(s):
 Dates: 2012-12
 Publication Status: Issued
 Pages: -
 Publishing info: -
 Table of Contents: -
 Rev. Type: -
 Identifiers: URI: http://books.nips.cc/nips25.html
BibTex Citekey: BusingMS2013
 Degree: -

Event

show
hide
Title: Twenty-Sixth Annual Conference on Neural Information Processing Systems (NIPS 2012)
Place of Event: Lake Tahoe, NV, USA
Start-/End Date: -

Legal Case

show

Project information

show

Source 1

show
hide
Title: Advances in Neural Information Processing Systems 25
Source Genre: Proceedings
 Creator(s):
Affiliations:
Publ. Info: -
Pages: - Volume / Issue: - Sequence Number: - Start / End Page: 1691 - 1699 Identifier: -