%TESTR MSE for regression % % E = TESTR(X,W,TYPE) % E = TESTR(X*W,TYPE) % E = X*W*TESTR([],TYPE) % E = X*W*TESTR(TYPE) % % INPUT % X Regression dataset % W Regression mapping % TYPE Type of error measure, default: mean squared error % % OUTPUT % E Mean squared error % % DESCRIPTION % Compute the error of regression W on dataset X. The following error % measures have been defined for TYPE: % 'mse' mean squared error (default) % 'mad' mean absolute deviation % % SEE ALSO (PRTools Guide) % RSQUARED, TESTC % Copyright: D.M.J. Tax, D.M.J.Tax@37steps.com % Faculty EWI, Delft University of Technology % P.O. Box 5031, 2600 GA Delft, The Netherlands function e = testr(varargin) argin = shiftargin(varargin,'char'); argin = setdefaults(argin,[],[],'mse'); if mapping_task(argin,'definition') e = define_mapping(argin,'fixed'); else % Evaluate. [x,w,type] = deal(argin{:}); if (ismapping(w) & istrained(w)) x = x*w; end if ischar(w) type = w; end switch type case 'mse' e = mean((+x(:,1) - gettargets(x)).^2); case 'mad' e = mean(abs(+x(:,1) - gettargets(x))); otherwise error('Error %s is not implemented.',type); end if nargout==0 %display results on the screen: fprintf('Error on %d objects: %f.\n',... size(x,1), e); clear e; end end