Learning Hybrid System Models for Supervisory Decoding of Discrete State, with applications to the Parietal Reach Region
- Creators
- Hudson, Nicolas
- Burdick, Joel W.
Abstract
Based on Gibbs sampling, a novel method to identify mathematical models of neural activity in response to temporal changes of behavioral or cognitive state is presented. This work is motivated by the developing field of neural prosthetics, where a supervisory controller is required to classify activity of a brain region into suitable discrete modes. Here, neural activity in each discrete mode is modeled with nonstationary point processes, and transitions between modes are modeled as hidden Markov models. The effectiveness of this framework is first demonstrated on a simulated example. The identification algorithm is then applied to extracellular neural activity recorded from multi-electrode arrays in the parietal reach region of a rhesus monkey, and the results demonstrate the ability to decode discrete changes even from small data sets.
Additional Information
© 2007 IEEE.Attached Files
Published - Hudson2007p88912007_3Rd_International_IeeeEmbs_Conference_On_Neural_Engineering_Vols_1_And_2.pdf
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Additional details
- Eprint ID
- 20080
- Resolver ID
- CaltechAUTHORS:20100921-152504320
- Created
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2010-09-24Created from EPrint's datestamp field
- Updated
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2021-11-08Created from EPrint's last_modified field