BinarizeMatrix
binarizeMatrix is a Matlab function that takes as an input one or more normalized time series matrices, Z, and returns up to two transformations of these matrices, BIN and SCALED. A Z-score threshold, thresh is applied to the normalized values: For all values greater than +thresh are set to 1; all values less than -thresh are set to 0. For the SCALED transformation, the intermediate values are scaled so that the columnar mean of the values between 0 and 1 is 0.5. For the BIN transformation, all fractional values are set to NaN. Additionally, a clipping value, clip can be supplied: all values with an absolute value exceeding the clip value are set to NaN. If a threshold is not supplied, 0 is used by default (i.e., all positive values are set to 1, and negative values are set to 0). If a clipping value is not used, no outlier values are filtered.
Function Source Code
function [BIN, SCALED]=binarizeMatrix(Z, thresh, clip) %binarizeMatrix takes a normalized matrix, Z, and scales and binarizes its %elements: %positive values are set to 1 and negative values ar set to 0. If thresh is %set to a nonzero value, elements with an absolute value less than thresh %are set to NaN. If a clipping value, clip, is provided, elements with an %absolute value exceeding clip are first set to NaN before binarizing. if(~exist('thresh', 'var')) thresh=1; end if(~exist('clip', 'var')) clip=inf; end if(thresh==0) thresh=realmin; %workaround to allow a threshold of approx. zero end if (~iscell(Z)) %Z is not a cell array, which is the easiest case SCALED=scaleMatrix(Z,clip, thresh); BIN=SCALED; BIN(0<BIN & BIN<1)=nan; else if(iscell(Z)) %M is a cell array, so we have to apply droprows and zscore to each %cell element SCALED=cellfun(@(x) scaleMatrix(x, clip, thresh), Z, 'UniformOutput', false); BIN=cellfun(@(x) nanBin(x), SCALED, 'UniformOutput', false); end end %%Nested utility function scale matrix function SM=scaleMatrix(M, clip, thresh) M(abs(M)>clip)=nan; %remove items to be clipped M=M/thresh;%scale in terms of thresholds M(M>1)=1;%anything above +threshold=1 M(M<-1)=-1; %anything below -threshold=-1 M=M+1;%shift values from range -1:1 to 0:2 M=M/2;%now values range from 0:1 %subtly shift values so that mean value for each column is ~0.5 meansignal=nanmean(M);%what is the current mean of each column? %use log to determine exponent required to shift each mean to 0.5 centerexp=repmat(power(log10(meansignal),-1).*log10(0.5),size(M,1),1); %raise each value to the required exponent. 0s and 1s will be %unaffected SM=round(10*M.^centerexp)/10; end %%Nested utility function sets all non 0-1 values to nan function BIN=nanBin(M) BIN=M; BIN(0<BIN & BIN<1)=nan; end end