--- /dev/null
+#' @include z_runAlgorithm.R
+
+#' @title Get best expert index
+#'
+#' @description Return the weights corresponding to the best expert (...0,1,0...)
+#'
+#' @param r Output of \code{\link{runAlgorithm}}
+#'
+#' @export
+getBestExpert = function(r)
+{
+ X = as.matrix(r$data[,names(r$data) %in% r$experts])
+ Y = r$data[,"Measure"]
+
+ bestIndex = which.min(colMeans(abs(X - Y)^2, na.rm=TRUE))
+ res = rep(0.0, length(r$experts))
+ res[bestIndex] = 1.0
+ return (res)
+}
+
+#' @title Get best convex combination
+#'
+#' @description Return the weights p minimizing the quadratic error ||X*p-Y||^2 under convexity contraint.
+#'
+#' @param r Output of \code{\link{runAlgorithm}}
+#'
+#' @export
+getBestConvexCombination = function(r)
+{
+ X = r$data[,r$experts]
+ Y = as.double(r$data[,"Measure"])
+ indices = getNoNAindices(X) & !is.na(Y)
+ X = as.matrix(X[indices,])
+ Y = Y[indices]
+
+ K = length(r$experts)
+ return (constrOptim(theta=rep(1.0/K,K),
+ method="Nelder-Mead", #TODO: others not better... why?
+ f=function(p){return(sum((X%*%p-Y)^2))},
+ grad=NULL, #function(p){return(2.*t(X)%*%(X%*%p-Y))},
+ ui=rbind(rep(1.,K),rep(-1.,K),diag(K)), ci=c(0.99999,-1.00001, rep(0.,K)),
+ control=list(ndeps=1e-3,maxit=10000))$par)
+}
+
+#' @title Get best linear combination
+#'
+#' @description Return the weights u minimizing the quadratic error ||r$X*u-r$Y||^2
+#'
+#' @param r Output of \code{\link{runAlgorithm}}
+#'
+#' @export
+getBestLinearCombination = function(r)
+{
+ X = r$data[,r$experts]
+ Y = r$data[,"Measure"]
+ indices = getNoNAindices(X) & !is.na(Y)
+ X = as.matrix(X[indices,])
+ Y = Y[indices]
+
+ return (mpPsInv(X) %*% Y)
+}
+
+#' @title Get statistical indicators
+#'
+#' @description Return respectively the TS, FA, MA, RMSE, EV indicators in a list.
+#'
+#' @param r Output of \code{\link{runAlgorithm}}
+#' @param thresh Threshold to compute alerts indicators.
+#' @param station Name or index of the station to consider. Default: the first one
+#' @param noNA TRUE to show only errors associated with full lines (old behavior)
+#'
+#' @export
+getIndicators = function(r, thresh, station=1, noNA=TRUE)
+{
+ if (is.character(station))
+ station = match(station, r$stations)
+
+ #TODO: duplicated block (same in plotCloud())
+ XY = subset(r$data, subset = (Station == station), select = c(r$experts,"Measure","Prediction"))
+ Y = XY[,"Measure"]
+ hatY = XY[,"Prediction"]
+ indices = !is.na(Y) & !is.na(hatY)
+ if (noNA)
+ {
+ X = XY[,names(XY) %in% r$experts]
+ indices = indices & getNoNAindices(X)
+ }
+ Y = Y[indices]
+ hatY = hatY[indices]
+
+ RMSE = round(sqrt(sum((Y - hatY)^2) / length(Y)),2)
+ EV = round(1 - var(Y-hatY) / var(Y), 2)
+ A = sum(hatY >= thresh & Y >= thresh, na.rm=TRUE) #right alarm
+ B = sum(hatY >= thresh & Y < thresh, na.rm=TRUE) #false alarm
+ C = sum(hatY < thresh & Y >= thresh, na.rm=TRUE) #missed alert
+ TS = round(A/(A+B+C),2)
+ FA = B/(A+B)
+ MA = C/(A+C)
+ return (list("TS"=TS, "FA"=FA, "MA"=MA, "RMSE"=RMSE, "EV"=EV))
+}