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Posts from the ‘Neuroscience’ Category
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2018/03/13
#COSYNE18
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2014/12/18
NIPS 2014 workshop on large scale neuroscience
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2014/03/20
Lobster olfactory scene analysis
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2014/03/08
Scalable models workshop recap
3
2013/12/13
NIPS 2013
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2013/03/11
COSYNE 2013
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2012/04/22
Heterogeneous temporal profiles of olfactory receptor neurons in Lobster
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2012/03/04
Interesting talks/posters from COSYNE 2012
3
2012/02/23
Bayesian entropy estimation for infinite neural alphabets
4
2011/12/08
Bayesian Spike Triggered Covariance Analysis
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