DocumentCode :
3208687
Title :
Information-theoretic metric learning: 2-D linear projections of neural data for visualization
Author :
Brockmeier, Austin J. ; Sanchez Giraldo, Luis Gonzalo ; Emigh, Matthew ; Bae, Joonbum ; Choi, Jin Soo ; Francis, Joseph T. ; Principe, Jose C.
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Florida, Gainesville, FL, USA
fYear :
2013
fDate :
3-7 July 2013
Firstpage :
5586
Lastpage :
5589
Abstract :
Intracortical neural recordings are typically high-dimensional due to many electrodes, channels, or units and high sampling rates, making it very difficult to visually inspect differences among responses to various conditions. By representing the neural response in a low-dimensional space, a researcher can visually evaluate the amount of information the response carries about the conditions. We consider a linear projection to 2-D space that also parametrizes a metric between neural responses. The projection, and corresponding metric, should preserve class-relevant information pertaining to different behavior or stimuli. We find the projection as a solution to the information-theoretic optimization problem of maximizing the information between the projected data and the class labels. The method is applied to two datasets using different types of neural responses: motor cortex neuronal firing rates of a macaque during a center-out reaching task, and local field potentials in the somatosensory cortex of a rat during tactile stimulation of the forepaw. In both cases, projected data points preserve the natural topology of targets or peripheral touch sites. Using the learned metric on the neural responses increases the nearest-neighbor classification rate versus the original data; thus, the metric is tuned to distinguish among the conditions.
Keywords :
bioelectric potentials; biomedical electrodes; brain; data structures; data visualisation; learning (artificial intelligence); medical computing; neurophysiology; optimisation; touch (physiological); 2D space; center-out reaching task; channel; class-relevant information; electrode; forepaw tactile stimulation; information-theoretic metric learning; information-theoretic optimization problem; intracortical neural recording; local field potential; macaque; maximization; motor cortex neuronal firing rate; nearest-neighbor classification rate; neural data 2D linear projection; neural data visualization; neural response representation; peripheral touch site topology; rat somatosensory cortex; Entropy; Hidden Markov models; Kernel; Measurement; Sociology; Statistics; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2013 35th Annual International Conference of the IEEE
Conference_Location :
Osaka
ISSN :
1557-170X
Type :
conf
DOI :
10.1109/EMBC.2013.6610816
Filename :
6610816
Link To Document :
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