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  <channel>
    <title>Notebooks   </title>
    <link>http://bactra.org/notebooks</link>
    <description>Cosma's Notebooks</description>
    <language>en</language>

  <item>
    <title>Neural Modeling and Data Analysis</title>
    <link>http://bactra.org/notebooks/2010/01/15#neural-modeling</link>
    <description>
&lt;P&gt;Especially, but not exclusively, modeling of spike trains (which is
important for neural coding, and overlaps therewith).

&lt;P&gt;&lt;em&gt;Things to investigate&lt;/em&gt;: How easy would it be to adapt spike-sorting
algorithms to cluster or classify other kinds of time series?  Easy or not,
would there be any point?

&lt;P&gt;See also:
	&lt;a href=&quot;neural-coding.html&quot;&gt;Neural Coding&lt;/a&gt;;
	&lt;a href=&quot;neuro-synch.html&quot;&gt;Synchronization in Neural Systems&lt;/a&gt;;
	&lt;a href=&quot;neuroscience.html&quot;&gt;Neuroscience&lt;/a&gt; in general

&lt;ul&gt;Recommended (also look at the recommendations
under &lt;a href=&quot;neural-coding.html&quot;&gt;coding&lt;/a&gt; and
&lt;a href=&quot;neuro-synch.html&quot;&gt;synchronization&lt;/a&gt;):
	&lt;li&gt;David Brillinger, &quot;Nerve Cell Spike Train Data Analysis: A
Progression of Technique,&quot; &lt;cite&gt;Journal of the American Statistical
Association&lt;/cite&gt;
&lt;strong&gt;87&lt;/strong&gt; (1992): 260--270
	&lt;li&gt;Emery N. Brown, Robert E. Kass and Partha P. Mitra, &quot;Multiple
Neural Spike Train Data Analysis: State-of-the-art and Future
Challanges&quot;, &lt;a href=&quot;http://dx.doi.org/10.1038/nn1228&quot;&gt;&lt;cite&gt;Nature
Neuroscience&lt;/cite&gt; &lt;strong&gt;7&lt;/strong&gt; (2004): 456--461&lt;/a&gt;
[&lt;a href=&quot;http://www.stat.cmu.edu/~kass/papers/bkm.pdf&quot;&gt;PDF reprint&lt;/a&gt; via
Rob]
	&lt;li&gt;Sami El Boustani, Alain Destexhe, &quot;Does brain activity stem from high-dimensional chaotic dynamics? Evidence from the human electroencephalogram, cat cerebral cortex and artificial neuronal networks&quot;, &lt;a href=&quot;http://arxiv.org/abs/0904.4217&quot;&gt;arxiv:0904.4217&lt;/a&gt;
	&lt;li&gt;Chris Eliasmith and Charles Anderson, &lt;cite&gt;Neural Engineering:
Computation, Representation, and Dynamics in Neurobiological Systems&lt;/cite&gt;
	&lt;li&gt;Matthew T. Harrison and Stuart Geman, &quot;A Rate and
History-Preserving Resampling Algorithm for Neural Spike Trains&quot;,
&lt;a href=&quot;http://dx.doi.org/10.1162/neco.2008.03-08-730&quot;&gt;&lt;cite&gt;Neural Computation&lt;/cite&gt; &lt;strong&gt;21&lt;/strong&gt; (2009): 1244--1258&lt;/a&gt;
	&lt;li&gt;Yoshito Hirata, Kevin Judd and Kazuyuki Aihara, &quot;Characterizing
chaotic response of a squid axon through generating
partitions&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1016/j.physleta.2005.07.081&quot;&gt;&lt;cite&gt;Physics Letters
A&lt;/cite&gt; &lt;strong&gt;346&lt;/strong&gt; (2005): 141--147&lt;/a&gt; [The obvious approach
to &lt;a href=&quot;symbolic-dynamics.html&quot;&gt;symbolic dynamics&lt;/a&gt; for spike trains
works.]
	&lt;li&gt;Robert E. Kass, Valerie Ventura and Emery N. Brown, &quot;Statistical
Issues in the Analysis of Neuronal
Data&quot;, &lt;cite&gt;&lt;a href=&quot;http://dx.doi.org/10.1152/jn.00648.2004&quot;&gt;Journal of
Neurophysiology&lt;/cite&gt; &lt;strong&gt;94&lt;/strong&gt; (2005): 8--25&lt;/a&gt;
[&lt;a href=&quot;http://www.stat.cmu.edu/~kass/papers/jnreview.pdf&quot;&gt;PDF reprint via
Rob&lt;/a&gt;]
	&lt;li&gt;Shinsuke Koyama and Shiegeru Shinomoto, &quot;Empirical Bayes
interpretations of random point
events&quot;, &lt;a href=&quot;http://dx.doi.org/10.1088/0305-4470/38/29/L04&quot;&gt;&lt;cite&gt;Journal
of Physics A: Mathematical and General&lt;/cite&gt;
&lt;strong&gt;38&lt;/strong&gt; (2005): L531--L537&lt;/a&gt;
	&lt;li&gt;Martin A. Lindquist, &quot;The Statistical Analysis of fMRI
Data&quot;, &lt;cite&gt;Statistical Science&lt;/cite&gt; &lt;strong&gt;23&lt;/strong&gt; (2008): 439--464
= &lt;a href=&quot;http://arxiv.org/abs/0906.3662&quot;&gt;arxiv:0906.3662&lt;/a&gt;
	&lt;li&gt;Murat Okatan, Matthew A. Wilson and Emery N. Brown,
&quot;Analyzing Functional Connectivity Using a Network
Likelihood Model of Ensemble Neural Spiking Activity&quot;, &lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;17&lt;/strong&gt; (2005): 1927--1961
	&lt;li&gt;Liam Paninski, Jonathan Pillow, and Jeremy Lewi, &quot;Statistical
models for neural encoding, decoding, and optimal stimulus design&quot;, to appear
in P. Cisek, T. Drew and J. Kalaska (eds.), &lt;cite&gt;Computational Neuroscience:
Progress in Brain Research&lt;/cite&gt;
[&lt;a href=&quot;http://www.stat.columbia.edu/~liam/research/pubs/pbr.pdf&quot;&gt;PDF
preprint&lt;/a&gt;]
	&lt;li&gt;Sommer and Wichert (eds.), &lt;cite&gt;Exploratory Analysis and Data
Modeling in Functional Neuroimaging&lt;/citE&gt; [Conference proceedings, so uneven and not too tightly integrated, but covers a lot of ground.]
	&lt;/ul&gt;

&lt;ul&gt;Modesty forbids me to recommend:
	&lt;li&gt;Robert Haslinger, Kristina Lisa Klinkner and CRS, &quot;The
Computational Structure of Spike
Trains&quot;, &lt;a href=&quot;http://dx.doi.org/10.1162/neco.2009.12-07-678&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;22&lt;/strong&gt; (2010): 121--157&lt;/a&gt;
= &lt;a href=&quot;http://arxiv.org/abs/1001.0036&quot;&gt;arxiv:1001.0036&lt;/a&gt;
	&lt;/ul&gt;

&lt;ul&gt;To read:
	&lt;li&gt;Pierre Baldi, &quot;Probabilistic Models of Neuronal Spike Trains,&quot; in
Giles and Gori (eds.), &lt;cite&gt;Adaptive Processing of Sequences and Data
Structures&lt;/cite&gt;
	&lt;li&gt;Peter beim Graben, J. Douglas Saddy, Matthias Schlesewsky and
J&amp;uuml;rgen Kurths, &quot;Symbolic Dynamics of Event-Related Brain Potentials,&quot;
&lt;cite&gt;Physical Review E&lt;/cite&gt; &lt;strong&gt;62&lt;/strong&gt; (2000): 5518--5541
	&lt;li&gt;William Bialek, &quot;Thinking about the brain,&quot; &lt;a
href=&quot;http://arxiv.org/abs/physics/0205030&quot;&gt;physics/0205030&lt;/a&gt;
	&lt;li&gt;Hemant Bokil, Bijan Pesaran, R. A. Andersen and Partha P. Mitra, &quot;A
framework for detection and classification of events in neural activity&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0507045&quot;&gt;q-bio.NC/0507045&lt;/a&gt;
	&lt;li&gt;Romain Brette and Wulfram Gerstner, &quot;Adaptive Exponential
Integrate-and-Fire Model as an Effective Description of Neuronal
Activity&quot;, &lt;a href=&quot;http://dx.doi.org/10.1152/jn.00686.2005&quot;&gt;&lt;cite&gt;Journal of
Neurophysiology&lt;/cite&gt; &lt;strong&gt;94&lt;/strong&gt; (2005): 3637--3642&lt;/a&gt;
	&lt;li&gt;R. Brette, M. Rudolph, T. Carnevale, M. Hines, D. Beeman,
J. M. Bower, M. Diesmann, A. Morrison, P. H. Goodman, F. C. Harris Jr.,
M. Zirpe, T.  Natschlager, D. Pecevski, B. Ermentrout, M. Djurfeldt,
A. Lansner, O. Rochel, T. Vieville, E. Muller, A. P. Davison, S. El Boustani,
and A. Destexhe, &quot;Simulation of networks of spiking neurons: A review of tools
and strategies&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0611089&quot;&gt;q-bio.NC/0611089&lt;/a&gt;
	&lt;li&gt;David Brillinger, &quot;Some statistical methods for random process
data from seismology and neurophysiology&quot;, &lt;cite&gt;Annals of Statistics&lt;/cite&gt;
&lt;strong&gt;16&lt;/strong&gt; (1988): 1--54
	&lt;li&gt;David Cai, Louis Tao and David W. McLaughlin, &quot;An Embedded Network
Approach for Scale-Up of Fluctuation-Driven Systems with Preservation of Spike
Information&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1073/pnas.0404062101&quot;&gt;&lt;cite&gt;Proceedings of the
National Academy of Sciences&lt;/cite&gt; (2004)&lt;/a&gt; [&lt;em&gt;Abstract&lt;/em&gt;: &quot; address
computational 'scale-up' issues in modeling large regions of the cortex, many
coarse-graining procedures have been invoked to obtain effective descriptions
of neuronal network dynamics. However, because of local averaging in space and
time, these methods do not contain detailed spike information and, thus, cannot
be used to investigate, e.g., cortical mechanisms that are encoded through
detailed spike-timing statistics. To retain high-order statistical information
of spikes, we develop a hybrid theoretical framework that embeds a subnetwork
of point neurons within, and fully interacting with, a coarse-grained network
of dynamical background. We use a newly developed kinetic theory for the
description of the coarse-grained background, in combination with a Poisson
spike reconstruction procedure to ensure that our method applies to the
fluctuation-driven regime as well as to the mean-driven regime. This
embedded-network approach is verified to be dynamically accurate and
numerically efficient. As an example, we use this embedded representation to
construct 'reverse-time correlations' as spiked-triggered averages in a ring
model of orientation-tuning dynamics.&quot; ]
	&lt;li&gt;Hock Peng Chan and Wei-Liem Loh, &quot;Some theoretical results on
neural spike train probability
models&quot;, &lt;a href=&quot;http://arxiv.org/abs/math.ST/0703829&quot;&gt;math.ST/0703829&lt;/a&gt;
	&lt;li&gt;Yonghong Chen, Steven L. Bressler, and Mingzhou Ding, &quot;Frequency
decomposition of conditional Granger causality and application to multivariate
neural field potential
data&quot;, &lt;a href=&quot;http://arxiv.org/abs/q-bio.NC/0608034&quot;&gt;q-bio.NC/0608034&lt;/a&gt;
= &lt;cite&gt;Journal of Neuroscience Methods&lt;/cite&gt; &lt;strong&gt;150&lt;/strong&gt; (2006):
228--237&lt;/a&gt;
	&lt;li&gt;Zhiyi Chi, &quot;Large deviations for template matching between point
processes&quot;, &lt;a
href=&quot;http://dx.doi.org/10%2E1214/105051604000000576&quot;&gt;&lt;cite&gt;Annals of Applied
Probability&lt;/cite&gt; &lt;strong&gt;15&lt;/strong&gt; (2005): 153--174&lt;/a&gt; = &lt;a
href=&quot;http://arxiv.org/abs/math.PR/0503463&quot;&gt;math.PR/0503463&lt;/a&gt;
	&lt;li&gt;Carson Chow, Boris Gutkin, David Hansel, Claude Meunier and Jean
Dalibard (eds.), &lt;cite&gt;Methods and Models in Neurophysics: Lecture Notes of the
Les Houches Summer School 200&lt;/cite&gt;
	&lt;li&gt;Mauro Copelli and Osame Kinouchi, &quot;Intensity Coding in
Two-Dimensional Excitable Neural Networks&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0409032&quot;&gt;q-bio.NC/0409032&lt;/a&gt;
[Greenberg-Hastings cellular automata as a toy model of visual response!]
	&lt;li&gt;Luciano da F. Costa and Olaf Sporns, &quot;Hierarchical Features of
Large-Scale Cortical Connectivity&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0508007&quot;&gt;q-bio.NC/0508007&lt;/a&gt;
	&lt;li&gt;J. Davidsen and H. G. Schuster, &quot;Simple model for 1/f noise,&quot;
&lt;a href=&quot;http://arxiv.org/abs/cond-mat/0201198&quot;&gt;cond-mat/0201198&lt;/a&gt; [a null
model]
	&lt;li&gt;Peter Dayan and Larry Abbott, &lt;cite&gt;Theoretical Neuroscience&lt;/cite&gt;
[&lt;a href=&quot;http://play.ccs.brandeis.edu/abbott/book/&quot;&gt;website&lt;/a&gt;]
	&lt;li&gt;Matthieu Delescluse and Christophe Pouzat, &quot;Efficient spike-sorting
of multi-state neurons using inter-spike intervals information&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.QM/0505053&quot;&gt;q-bio.QM/0505053&lt;/a&gt;
	&lt;li&gt;Mingzhou Ding, Yonghong Chen and Steve L. Bressler,
&quot;Granger Causality: Basic Theory and Application to Neuroscience&quot;,
&lt;a href=&quot;http://arxiv.org/abs/q-bio.QM/0608035&quot;&gt;q-bio.QM/0608035&lt;/a&gt; = pp.
451--474 in B. Schelter, M. Winterhalder, and J. Timmer (eds.), &lt;cite&gt;Handbook
of Time Series Analysis&lt;/cite&gt;
	&lt;li&gt;Victor M. Eguiluz, Dante R. Chialvo, Guillermo A. Cecchi, Marwan
Baliki and A. Vania Apkarian, &quot;Scale-free brain functional networks&quot;,
&lt;a href=&quot;http://dx.doi.org/10.1103/PhysRevLett.94.018102&quot;&gt;&lt;citE&gt;Physical Review
Letters&lt;/cite&gt; &lt;strong&gt;94&lt;/strong&gt; (2005): 018102&lt;/a&gt; = &lt;a
href=&quot;http://arxiv.org/abs/cond-mat/0309092&quot;&gt;cond-mat/0309092&lt;/a&gt;
	&lt;li&gt;Seif Eldawlatly, Yang Zhou, Rong Jin
and Karim G. Oweiss, &quot;On the Use of Dynamic Bayesian Networks in Reconstructing Functional Neuronal Networks from Spike Train Ensembles&quot;, &lt;a href=&quot;http://dx.doi.org/&quot;&gt;&lt;cite&gt;Neural Computation&lt;/cite&gt; &lt;strong&gt;22&lt;/strong&gt; (2010): 158--189&lt;/a&gt;
	&lt;li&gt;Michael D. Fox, Abraham Z. Snyder, Justin L. Vincent, Maurizio
Corbetta, David C. Van Essen and Marcus E. Raichle, &quot;The human brain is
intrinsically organized into dynamic, anticorrelated functional networks&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1073/pnas.0504136102&quot;&gt;Proceedings of the National
Academy of Sciences&lt;/cite&gt; &lt;strong&gt;102&lt;/strong&gt; (2005): 9673--9678&lt;/a&gt;
	&lt;li&gt;Wulfram Gerstner, &lt;cite&gt;Spiking Neuron Models&lt;/cite&gt;
	&lt;li&gt;Gail Gilboa, Ronen Chen, and Naama Brenner, &quot;History-Dependent
Multiple-Time-Scale Dynamics in a Single-Neuron Model&quot;, &lt;a
href=&quot;htttp://dx.doi.org/10.1523/JNEUROSCI.0763-05.2005&quot;&gt;&lt;cite&gt;Journal of
Neuroscience&lt;/cite&gt; &lt;strong&gt;25&lt;/strong&gt; (2005): 6479--6489&lt;/a&gt;
	&lt;li&gt;Paul Glimcher, &lt;cite&gt;Decisions, Uncertainty, and the Brain:
The Science of Neuroeconomics&lt;/cite&gt;
	&lt;li&gt;Norma V. S. Graham, &lt;cite&gt;Visual Pattern Analyzers&lt;/cite&gt;
	&lt;li&gt;Andreas Gr&amp;ouml;nlund, &quot;The difference in directed structure of
Neural and Transcriptional Regulation Networks&quot;, &lt;a
href=&quot;http://arxiv.org/abs/cond-mat/0406268&quot;&gt;cond-mat/0406268&lt;/a&gt;
	&lt;li&gt;Richard H. R. Hahnloser, &quot;Stationary transmission distribution of
random spike trains by dynamical synapses,&quot; &lt;cite&gt;Physical Review E&lt;/cite&gt;
&lt;strong&gt;67&lt;/strong&gt; (2003) 022901
	&lt;li&gt;Ronald M. Harris-Warrick, Eve Marder, Allen I. Selverston and
Maurice Moulins (eds.), &lt;cite&gt;Dynamic Biological Networks: The Stomatogastric
Nervous System&lt;/cite&gt; [&lt;a
href=&quot;http://mitpress.mit.edu/0-262-08214-4&quot;&gt;Blurb&lt;/a&gt;]
	&lt;li&gt;H. R. Heekeren, S. Marrett, P. A. Bandettini and L. G. Ungerleider,
&quot;A general mechanism for perceptual decision-making in the human brain&quot;,
&lt;a
href=&quot;http://dx.doi.org/10.1038/nature02966&quot;&gt;&lt;citE&gt;Nature&lt;/cite&gt; &lt;strong&gt;431&lt;/strong&gt;
(859--862)&lt;/a&gt;
	&lt;li&gt;Kim L. Hoke, Michael J. Ryan, and Walter Wilczynski, &quot;Social cues
shift functional connectivity in the hypothalamus&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1073/pnas.0502361102&quot;&gt;&lt;cite&gt;PNAS&lt;/cite&gt; &lt;strong&gt;102&lt;/strong&gt;
(2005): 10712--10717&lt;/a&gt;
	&lt;li&gt;Kazushi Ikeda, &quot;Information Geometry of Interspike Intervals in
Spiking Neurons&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/17/12/2719&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;17&lt;/strong&gt; (2005): 2719--2735&lt;/a&gt;
	&lt;li&gt;Eugene M. Izhikevich, &lt;cite&gt;Dynamical Systems in Neuroscience: The
Geometry of Excitability and Bursting&lt;/cite&gt;
[&lt;a href=&quot;http://mitpress.mit.edu/0-262-09043-0&quot;&gt;Blurb&lt;/a&gt;]
	&lt;li&gt;Alon Keinan, Ben Sandbank, Claus C. Hilgetag, Isaac Meilijson and
Eytan Ruppin, &quot;Fair Attribution of Functional Contribution in Artificial and
Biological Networks&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/16/9/1887&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;16&lt;/strong&gt; (2004): 1887--1915&lt;/a&gt;
	&lt;li&gt;Alexei A. Koulakov, Dmitry Rinberg and Dmitry N. Tsigankov, &quot;How to
find decision makers in neural circuits?&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0401005&quot;&gt;q-bio.NC/0401005&lt;/a&gt;
	&lt;li&gt;Li Zhaoping, Alex Lewis and Silvia Scarpetta, &quot;Mathematical
Analysis and Simulations of the Neural Circuit for Locomotion in Lamprey&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0404012&quot;&gt;q-bio.NC/0404012&lt;/a&gt;
	&lt;li&gt;Steven J. Luck, &lt;cite&gt;An Introduction to the Event-Related
Potential Technique&lt;/cite&gt;
[&lt;a href=&quot;http://mitpress.mit.edu/0262621967&quot;&gt;Blurb&lt;/a&gt;]
	&lt;li&gt;Wolfgang Maass and Eduardo D. Sontag, &quot;Neural Systems as Nonlinear
Filters,&quot; &lt;citE&gt;Neural Computation&lt;/cite&gt; &lt;strong&gt;12&lt;/strong&gt; (2000):
1743--1772
	&lt;li&gt;Roy Mukamel, Hagar Gelbard, Amos Arieli, Uri Hasson, Itzhak Fried
and Rafael Malach, &quot;Coupling Between Neuronal Firing, Field Potentials, and
fMRI in Human Auditory Cortex&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1126/science.1110913&quot;&gt;&lt;cite&gt;Science&lt;/cite&gt;
&lt;strong&gt;309&lt;/strong&gt; (2005): 951--954&lt;/a&gt; [&quot;als in auditory cortex of two
neurosurgical patients and compared them with the fMRI signals of 11 healthy
subjects during presentation of an identical movie segment. The predicted fMRI
signals derived from single units and the measured fMRI signals from auditory
cortex showed a highly significant correlation (r = 0.75, P &lt; 10^-47). Thus,
fMRI signals can provide a reliable measure of the firing rate of human
cortical neurons.&quot;]
	&lt;li&gt;Murat Okatan, Matthew A. Wilson and Emery N. Brown, &quot;Analyzing
Functional Connectivity Using a Network Likelihood Model of Ensemble Neural
Spiking
Activity&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/17/9/1927&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;17&lt;/strong&gt; (2005): 1927--1961&lt;/a&gt;
	&lt;li&gt;Liam Paninski, Jonathan W. Pillow and Eero P. Simoncelli, &quot;Maximum
Likelihood Estimation of a Stochastic Integrate-and-Fire Neural Encoding
Model&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/16/12/2533&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;16&lt;/strong&gt; (2004): 2533--2561&lt;/a&gt;
	&lt;li&gt;G. Pola, R. S. Petersen, A. Thiele, M. P. Young and S. Panzeri,
&quot;Data-Robust Tight Lower Bounds to the Information Carried by Spike Times of a
Neuronal Population&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/17/9/1962&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt;
&lt;strong&gt;17&lt;/strong&gt; (2005): 1962--2005&lt;/a&gt;
	&lt;li&gt;R. Quian Quiroga, Z. Nadasdy and Y. Ben-Shaul, &quot;Unsupervised Spike
Detection and Sorting with Wavelets and Superparamagnetic
Clustering&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/16/8/1661&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/citE&gt; &lt;strong&gt;16&lt;/strong&gt; (2004): 1661--1687&lt;/a&gt;
	&lt;li&gt;Rajesh P. N. Rao (ed.), &lt;cite&gt;Probabilistic Models of the Brain:
Perception and Neural Function&lt;/cite&gt;
	&lt;li&gt;George N. Reeke and Allan D. Coop, &quot;Estimating the Temporal
Interval Entropy of Neuronal
Discharge&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/16/5/941&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;16&lt;/strong&gt; (2004): 941--970&lt;/a&gt; [From the abstract,
I'm skeptical.  They're assuming that successive inter-spike intervals are
all &lt;em&gt;independent&lt;/em&gt; samples from a &lt;em&gt;fixed&lt;/em&gt; distribution
of &lt;em&gt;known&lt;/em&gt; parametric form, and then using maximum likelihood to
estimate the parameters, which of course gives them an entropy estimate and
confidence intervals.  But all of the italicized points seem dubious to me.
Still, I need to read it.]
	&lt;li&gt;Hermann Riecke, Alex Roxin, Santiago Madruga and Sara A.  Solla,
&quot;Multiple attractors, long chaotic transients, and failure in small-world
networks of excitable
neurons&quot;, &lt;a href=&quot;http://dx.doi.org/10.1063/1.2743611&quot;&gt;&lt;cite&gt;Chaos&lt;/cite&gt;
&lt;strong&gt;17&lt;/strong&gt; (2007): 026110&lt;/a&gt;
	&lt;li&gt;P. A. Robinson, &quot;Propagator theory of brain dynamics&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1103/PhysRevE.72.011904&quot;&gt;&lt;cite&gt;Physical Review
E&lt;/cite&gt; &lt;strong&gt;72&lt;/strong&gt; (2005): 011904&lt;/a&gt;
	&lt;li&gt;Naoki Saito, &quot;The Generalized Spike Process, Sparsity, and
Statistical Independence,&quot;
&lt;a href=&quot;http://arxiv.org/abs/math.PR/0110103&quot;&gt;math.PR/0110103&lt;/a&gt;
	&lt;li&gt;P. S. Sastry and K. P. Unnikrishnan, &quot;Conditional probability based
significance tests for sequential patterns in multi-neuronal spike
trains&quot;, &lt;a href=&quot;http://arxiv.org/abs/0808.3511&quot;&gt;arxiv:0808.3511&lt;/a&gt;
	&lt;li&gt;Silvia Scarpetta, Zhaoping Li and John Hertz, &quot;Hebbian imprinting
and retrieval in oscillatory neural networks,&quot; &lt;a
href=&quot;http://arxiv.org/abs/cond-mat/0111034&quot;&gt;cond-mat/0111034&lt;/a&gt;
	&lt;li&gt;Margaret Euphrasia Sereno, &lt;cite&gt;Neural Computation of Pattern
Motion&lt;/cite&gt;
	&lt;li&gt;Anil K. Seth, Gerald M. Edelman, &quot;Distinguishing Causal
Interactions in Neural Populations&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/19/4/910&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;19&lt;/strong&gt; (2007): 910--933&lt;/a&gt;
	&lt;li&gt;Xilin Shen, Francois G. Meyer, &quot;Low Dimensional Embedding of fMRI
datasets&quot;, &lt;a href=&quot;http://arxiv.org/abs/0709.3121&quot;&gt;arxiv:0709.3121&lt;/a&gt;
[&quot;embedding optimally preserves the local functional coupling between fMRI time
series, and provides a low-dimensional coordinate system for detecting
activated voxels. To compute the embedding, we build a network of functionally
connected voxels and represent it with a graph. A spectral decomposition of the
graph probability transition matrix produces a set of eigenvectors that are
used to define the embedding&quot;]
	&lt;li&gt;Lavi Shpigelman, Yoram Singer, Rony Paz and Eilon Vaadia,
&quot;Spikernels: Predicting Arm Movements by Embedding Population Spike Rate
Patterns in Inner-Product Spaces&quot;,
&lt;a href=&quot;http://neco.mitpress.org/cgi/content/abstract/17/3/671&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;17&lt;/strong&gt; (2005): 671--690&lt;/a&gt; [&quot;Inner-product
operators, often referred to as kernels in statistical learning, define a
mapping from some input space into a feature space. The focus of this letter is
the construction of biologically motivated kernels for cortical activities. 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
algorithm for computing their value on any two sequences of neural population
spike counts. We demonstrate the merits of our modeling approach by comparing
the Spikernel to various standard kernels in the task of predicting hand
movement velocities from cortical recordings. All of the kernels that we tested
in our experiments outperform the standard scalar product used in linear
regression, with the Spikernel consistently achieving the best performance.&quot;]
	&lt;li&gt;Terence R. Stanford, Stephan Quessy and Barry E. Stein, &quot;Evaluating
the Operations Underlying Multisensory Integration in the Cat Superior
Colliculus&quot;, &lt;a
href=&quot;http://dx.doi.org/10.1523/JNEUROSCI.5095-04.2005&quot;&gt;&lt;cite&gt;Journal of
Neuroscience&lt;/cite&gt; &lt;strong&gt;25&lt;/strong&gt; (2005): 6499--6508&lt;/a&gt;
	&lt;li&gt;Akaysha C. Tang, Barak A. Pearlmutter, Natalie A. Malaszenko, Dan
B. Phung, and Bethany C. Reeb, &quot;Independent Components of
Magnetoencephalography: Localization,&quot; &lt;cite&gt;Neural Computation&lt;/cite&gt;
&lt;strong&gt;14&lt;/strong&gt; (2002): 1827--1858 [Reprinted in Sommer and Wichert?]
	&lt;li&gt;Wilson Truccolo, John P. Donoghue, &quot;Nonparametric Modeling of
Neural Point Processes via Stochastic Gradient Boosting Regression&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/19/3/672&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;19&lt;/strong&gt; (2007): 672-705&lt;/a&gt;
	&lt;li&gt;Arjen vanOoyen (ed.), &lt;cite&gt;Modeling Neural Development&lt;/cite&gt;
	&lt;li&gt;Val&amp;eacute;rie Ventura, &quot;Testing for and Estimating Latency Effects
for Poisson and Non-Poisson Spike
Trains&quot;, &lt;a
href=&quot;http://neco.mitpress.org/cgi/content/abstract/16/11/2323&quot;&gt;&lt;cite&gt;Neural
Computation&lt;/cite&gt; &lt;strong&gt;16&lt;/strong&gt; (2004): 2323--2349&lt;/a&gt;
	&lt;li&gt;T. Verechtchaguina, L. Schimansky-Geier and I. M. Sokolov, &quot;Spectra
and waiting-time distributions in firing resonant and non-resonant neurons&quot;, &lt;a
href=&quot;http://arxiv.org/abs/q-bio.NC/0401013&quot;&gt;q-bio.NC/0401013&lt;/a&gt; [Need to see
whether their ability to determine response properties from interspike-interval
distributions is limited to FitzHugh-Nagumo neurons, or is more general.]
	&lt;li&gt;Hugh R. Wilson, &lt;cite&gt;Spikes, Decisions and Actions: The Dynamical
Foundations of Neuroscience&lt;/cite&gt;
	&lt;li&gt;Tor D. Wager and Tomas E. Nichols, &quot;Optimization of experimental
design in fMRI: A general framework using a genetic
algorithm&quot;, &lt;cite&gt;Neuroimage&lt;/cite&gt; &lt;strong&gt;18&lt;/strong&gt; (2003): 293--309
	&lt;li&gt;Masahiko Yoshioka, &quot;The spike-timing-dependent learning rule to
encode spatiotemporal patterns in a network of spiking neurons,&quot; &lt;a
href=&quot;http://arxiv.org/abs/cond-mat/0110070&quot;&gt;cond-mat/0110070&lt;/a&gt;
	&lt;/ul&gt;
</description>
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