Fabian projects done
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projects/project_numbers/Makefile
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projects/project_numbers/Makefile
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latex:
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pdflatex *.tex > /dev/null
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pdflatex *.tex > /dev/null
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clean:
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rm -rf *.log *.aux *.zip *.out auto
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rm -f `basename *.tex .tex`.pdf
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zip: latex
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zip `basename *.tex .tex`.zip *.pdf *.dat *.mat
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BIN
projects/project_numbers/Neuron22.mat
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projects/project_numbers/Neuron22.mat
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projects/project_numbers/numbers.tex
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projects/project_numbers/numbers.tex
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\documentclass[addpoints,10pt]{exam}
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\usepackage{url}
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\usepackage{color}
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\usepackage{hyperref}
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\pagestyle{headandfoot}
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\runningheadrule
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\firstpageheadrule
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\firstpageheader{Scientific Computing}{Project Assignment}{11/05/2014
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-- 11/06/2014}
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%\runningheader{Homework 01}{Page \thepage\ of \numpages}{23. October 2014}
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\firstpagefooter{}{}{}
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\runningfooter{}{}{}
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\pointsinmargin
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\bracketedpoints
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%\printanswers
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%\shadedsolutions
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\begin{document}
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%%%%%%%%%%%%%%%%%%%%% Submission instructions %%%%%%%%%%%%%%%%%%%%%%%%%
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\sffamily
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% \begin{flushright}
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% \gradetable[h][questions]
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% \end{flushright}
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\begin{center}
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\input{../disclaimer.tex}
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\end{center}
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%%%%%%%%%%%%%% Questions %%%%%%%%%%%%%%%%%%%%%%%%%
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\begin{questions}
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\question The accompanying data {\tt Neuron22.mat} stores a single
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data matrix {\tt data\_unsorted} containing spike from a neuron in
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macaque prefrontal cortex. The task of the monkey was to
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discriminate point sets with 1 to 4 points. The first column
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contains the number of points shown plus one. The remaining columns
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contain the spike response across 1300ms. During the first 500ms the
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monkey was fixating a target. The next 800ms the stimulus was
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shown. This was followed by 1000ms delay time before the monkey was
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allowed to respond.
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\begin{parts}
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\part Plot the data in an appropriate way.
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\part Sort the trials according to the stimulus presented and
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compute the firing rate (in Hz) in the time interval
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500-1300ms. Plot the firing rate in an appropriate way.
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\part Use an appropriate test to determine whether the firing rate
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in that interval is significantly different for 1 vs. 4 points
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shown.
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\end{parts}
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\end{questions}
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\end{document}
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@ -32,7 +32,26 @@
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%%%%%%%%%%%%%% Questions %%%%%%%%%%%%%%%%%%%%%%%%%
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\begin{questions}
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\question What was the questions for 42?
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\question The accompanying file contains ten stimulus and response
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sequences of a P-Unit of a weakly electric fish {\em Apteronotus
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leptorhynchus}. Another matrix contains the corresponding {\em
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electric organ discharge (EOD)} of the fish. The sampling rate is
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100kHz.
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\begin{parts}
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\part Split the data in non-overlapping 200ms windows and plot
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them in an appropriate way.
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\part Compute the autocorrelation of the spike response as well as
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the cross-correlation between stimulus and spike response.
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\part Determine the fundamental stimulus frequency and the EOD
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frequency using a Fourier transform.
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\part Convolve the spike responses (windows) with a Gaussian of
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appropriate size and compute the average Fourier amplitude
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spectrum of the spike response. Plot the result in an appropriate
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way.
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\part Determine whether you can find peas in the amplitude
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spectrum at the fundamental frequency of the EOD and/or the
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stimulus and/or their difference.
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\end{parts}
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\end{questions}
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the the first $80$ datapoints, and repeat the following steps
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$m=500$ times:
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\begin{enumerate}
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\item draw $50$ data points from $x$ with replacement
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\item draw $80$ data points from $x$ with replacement
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\item compute their mean and store it
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\end{enumerate}
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Look at the standard deviation of the computed means.
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\item Compare the result to the standard deviation of the original
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$50$ data points and the standard error.
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$80$ data points and the standard error.
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\end{itemize}
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\end{task}
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\end{frame}
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function ll = invg_loglikelihood(x, p)
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mu = p(1);
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lambda = p(2);
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ll = mean(.5*(log(lambda) - log(2*pi) - 3*log(x)) - lambda*(x-mu).^2./(2*mu^2*x));
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ll = .5*(log(lambda) - log(2*pi) - 3*log(x)) - ...
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lambda*(x-mu).^2./(2*mu^2*x);
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function [err, grad] = lserr(param, x, y)
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function [err, grad] = lserr(x, y, param)
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err = mean( (param(1)*x + param(2) - y).^2 );
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if nargout == 2
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