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Finding Closest Data Point

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Krispy Scripts
Krispy Scripts il 25 Ott 2016
Commentato: Image Analyst il 26 Ott 2016
I have one matrix with data in the first column and time stamps in the second column (datamatrix.mat). The next matrix contains spiketimes (spiketimematrix.mat). I want to get the data point in the first column of first matrix that is the closest time point corresponding to the spike times in spiketimematrix.mat. For example, the first spiketime is 166.1670, which corresponds to the closet time point of 166.1696 and corresponds with the data point 2.5281.

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Image Analyst
Image Analyst il 25 Ott 2016
Try something like
% Find all time differences:
timeDiffs = abs(timeStamps - spikeTimes);
% Find out which has the smallest difference:
[minTimeDiff, indexOfMin] = min(timeDiffs);
% Get the value from column 1.
result = dataColumn1(indexOfMin)
  5 Commenti
Krispy Scripts
Krispy Scripts il 25 Ott 2016
Would this be simpler if instead of getting the closest, I got the one greater than or equal to?
Image Analyst
Image Analyst il 26 Ott 2016
Sorry - that's what I get for tossing something off the top of my head and not actually testing it. Ignore that code (I'll delete it) and use this instead:
numPoints1 = 6;
timeStamps = rand(numPoints1, 1) % Sample data.
numPoints2 = 3;
spikeTimes = rand(numPoints2, 1) % Sample data.
t1 = [timeStamps, zeros(length(timeStamps), 1)];
t2 = [spikeTimes, zeros(length(spikeTimes), 1)];
distances = pdist2(t1, t2)
minDistance = min(distances(distances>0))
[row, column] = find(distances == minDistance)
fprintf('The minimum time difference is %f and goes between\n timeStamp(%d) = %f, and\n spikeTimes(%d) = %f\n',...
minDistance, row, timeStamps(row), column, spikeTimes(column));

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Roger Stafford
Roger Stafford il 25 Ott 2016
I recommend you use the ‘pdist2’ function using the “Smallest” option. It is described at:
https://www.mathworks.com/help/stats/pdist2.html

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