kopia lustrzana https://github.com/gabrielegilardi/SignalFilters
start meboot function
rodzic
f080286c3d
commit
9763bbb652
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@ -0,0 +1,246 @@
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#meboot <- function(x, reps=999, trim=0.10, reachbnd=TRUE,
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# expand.sd=TRUE, force.clt=TRUE, elaps=FALSE,
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# colsubj, coldata, coltimes, ...){
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# UseMethod("meboot", x)
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#}
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meboot <- function(x, reps=999, trim=list(trim=0.10, xmin=NULL, xmax=NULL), reachbnd=TRUE,
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expand.sd=TRUE, force.clt=TRUE,
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scl.adjustment = FALSE, sym = FALSE, elaps=FALSE,
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colsubj, coldata, coltimes,...)
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{
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if ("pdata.frame" %in% class(x))
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{
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res <- meboot.pdata.frame (x, reps, trim$trim, reachbnd,
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expand.sd, force.clt, scl.adjustment, sym, elaps,
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colsubj, coldata, coltimes, ...)
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return(res)
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}
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if (reps == 1 && isTRUE(force.clt))
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{
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force.clt <- FALSE
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warning("force.clt was set to FALSE since the ensemble contains only one replicate.")
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}
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if (!is.list(trim)) {
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trimval <- trim
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} else {
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trimval <- if (is.null(trim$trim)) 0.1 else trim$trim
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}
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ptm1 <- proc.time()
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n <- length(x)
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# Sort the original data in increasing order and
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# store the ordering index vector.
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xx <- sort(x)
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ordxx <- order(x)
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#ordxx <- sort.int(x, index.return=TRUE)
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# symmetry
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if (sym)
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{
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xxr <- rev(xx) #reordered values
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xx.sym <- mean(xx) + 0.5*(xx - xxr) #symmetrized order stats
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xx <- xx.sym #replace order stats by symmetrized ones
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}
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# Compute intermediate points on the sorted series.
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z <- rowMeans(embed(xx, 2))
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# Compute lower limit for left tail ('xmin') and
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# upper limit for right tail ('xmax').
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# This is done by computing the 'trim' (e.g. 10%) trimmed mean
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# of deviations among all consecutive observations ('dv').
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# Thus the tails are uniform distributed.
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dv <- abs(diff(as.numeric(x)))
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dvtrim <- mean(dv, trim=trimval)
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if (is.list(trim))
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{
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if (is.null(trim$xmin))
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{
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xmin <- xx[1] - dvtrim
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} else
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xmin <- trim$xmin
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if (is.null(trim$xmax))
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{
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xmax <- xx[n] + dvtrim
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} else
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xmax <- trim$xmax
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if (!is.null(trim$xmin) || !is.null(trim$xmax))
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{
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if (isTRUE(force.clt))
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{
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expand.sd <- FALSE
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force.clt <- FALSE
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warning("expand.sd and force.clt were set to FALSE in order to ",
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"enforce the limits xmin/xmax.")
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}
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}
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} else {
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xmin <- xx[1] - dvtrim
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xmax <- xx[n] + dvtrim
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}
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# do this here so that this warnings are printed after
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# the above warnings (if necessary)
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if (is.list(trim))
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{
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if (!is.null(trim$xmin) && trim$xmin > min(x))
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warning("the lower limit trim$xmin may not be satisfied in the replicates ",
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"since it is higher than the minimum value observed ",
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"in the input series x")
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if (!is.null(trim$xmax) && trim$xmax < max(x))
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warning("the upper limit trim$xmax may not be satisfied in the replicates ",
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"since it is lower than the maximum value observed ",
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"in the input series x")
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}
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# Compute the mean of the maximum entropy density within each
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# interval in such a way that the 'mean preserving constraint'
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# is satisfied. (Denoted as m_t in the reference paper.)
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# The first and last interval means have distinct formulas.
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# See Theil and Laitinen (1980) for details.
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aux <- colSums( t(embed(xx, 3))*c(0.25,0.5,0.25) )
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desintxb <- c(0.75*xx[1]+0.25*xx[2], aux, 0.25*xx[n-1]+0.75*xx[n])
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# Generate random numbers from the [0,1] uniform interval and
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# compute sample quantiles at those points.
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# Generate random numbers from the [0,1] uniform interval.
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ensemble <- matrix(x, nrow=n, ncol=reps)
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ensemble <- apply(ensemble, 2, meboot.part,
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n, z, xmin, xmax, desintxb, reachbnd)
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# So far the object 'ensemble' contains the quantiles.
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# Now give them time series dependence and heterogeneity.
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qseq <- apply(ensemble, 2, sort)
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# 'qseq' has monotonic series, the correct series is obtained
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# after applying the order according to 'ordxx' defined above.
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ensemble[ordxx,] <- qseq
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#ensemble[ordxx$ix,] <- qseq
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if(expand.sd)
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ensemble <- expand.sd(x=x, ensemble=ensemble, ...)
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if(force.clt)
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ensemble <- force.clt(x=x, ensemble=ensemble)
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# scale adjustment
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if (scl.adjustment)
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{
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zz <- c(xmin,z,xmax) #extended list of z values
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#v <- rep(NA, n) #storing within variances
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#for (i in 2:(n+1)) {
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# v[i-1] <- ((zz[i] - zz[i-1])^2) / 12
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#}
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v <- diff(zz^2) / 12
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xb <- mean(x)
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s1 <- sum((desintxb - xb)^2)
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uv <- (s1 + sum(v)) / n
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desired.sd <- sd(x)
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actualME.sd <- sqrt(uv)
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if (actualME.sd <= 0)
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stop("actualME.sd<=0 Error")
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out <- desired.sd / actualME.sd
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kappa <- out - 1
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ensemble <- ensemble + kappa * (ensemble - xb)
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} else
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kappa <- NULL
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#ensemble <- cbind(x, ensemble)
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if(is.ts(x)){
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ensemble <- ts(ensemble, frequency=frequency(x), start=start(x))
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dimnames(ensemble)[[2]] <- paste("Series", 1:reps)
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#dimnames(ensemble)[[2]] <- c("original", paste("Series", 1:reps))
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}
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# Computation time
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ptm2 <- proc.time(); elapsr <- elapsedtime(ptm1, ptm2)
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if(elaps)
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cat("\n Elapsed time:", elapsr$elaps,
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paste(elapsr$units, ".", sep=""), "\n")
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list(x=x, ensemble=ensemble, xx=xx, z=z, dv=dv, dvtrim=dvtrim, xmin=xmin,
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xmax=xmax, desintxb=desintxb, ordxx=ordxx, kappa = kappa, elaps=elapsr)
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}
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meboot.part <- function(x, n, z, xmin, xmax, desintxb, reachbnd)
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{
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# Generate random numbers from the [0,1] uniform interval
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p <- runif(n, min=0, max=1)
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# Compute sample quantiles by linear interpolation at
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# those 'p'-s (if any) ...
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# ... 'p'-s within the (i1/n, (i1+1)/n)] interval (i1=1,...,n-2).
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q <- .C("mrapprox", p=as.double(p), n=as.integer(n), z=as.double(z),
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desintxb=as.double(desintxb[-1]), ref23=double(n), qq=double(1),
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q=double(n), PACKAGE="meboot")$q
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# ... 'p'-s within the [0, (1/n)] interval. (Left tail.)
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ref1 <- which(p <= (1/n))
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if(length(ref1) > 0){
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qq <- approx(c(0,1/n), c(xmin,z[1]), p[ref1])$y
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q[ref1] <- qq
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if(!reachbnd) q[ref1] <- qq + desintxb[1]-0.5*(z[1]+xmin)
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}
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# ... 'p'-s equal to (n-1)/n.
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ref4 <- which(p == ((n-1)/n))
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if(length(ref4) > 0)
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q[ref4] <- z[n-1]
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# ... 'p'-s greater than (n-1)/n. (Right tail.)
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ref5 <- which(p > ((n-1)/n))
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if(length(ref5) > 0){
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# Right tail proportion p[i]
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qq <- approx(c((n-1)/n,1), c(z[n-1],xmax), p[ref5])$y
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q[ref5] <- qq # this implicitly shifts xmax for algorithm
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if(!reachbnd) q[ref5] <- qq + desintxb[n]-0.5*(z[n-1]+xmax)
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# such that the algorithm gives xmax when p[i]=1
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# this is the meaning of reaching the bounds xmax and xmin
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}
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q
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}
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elapsedtime <- function(ptm1, ptm2)
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{
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elaps <- (ptm2 - ptm1)[3]
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if(elaps < 60)
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units <- "seconds"
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else if(elaps < 3600){
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elaps <- elaps/60
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units <- "minutes" }
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else if(elaps < 86400){
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elaps <- elaps/3600
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units <- "hours" }
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else { elaps <- elaps/86400
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units <- "days" }
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list(elaps=as.numeric(elaps), units=units)
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}
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@ -0,0 +1,40 @@
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// q <- .C("mrapprox", p=as.double(p), n=as.integer(n), z=as.double(z),
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// desintxb=as.double(desintxb[-1]), ref23=double(n), qq=double(1),
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// q=double(n), PACKAGE="meboot")$q
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void mrapprox(double *p, int *n, double *z, double *desintxb, double *ref23,
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double *qq, double *q)
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{
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int i, j, ii1, k;
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double i1, nn;
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nn = *n;
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for(i=0; i < *n; i=i+1){
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q[i] = -99999;
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ref23[i] = -99999;
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}
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j = 0;
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i1 = 1.0;
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for(ii1=0; ii1 < *n-2; ii1=ii1+1){
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j = 0;
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for(i=0; i < *n; i=i+1){
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if( p[i] > i1/nn && p[i] <= (i1+1)/nn ){
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ref23[j] = i;
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j = j+1;
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}
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}
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for(i=0; i < j; i=i+1){
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k = ref23[i];
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qq[0] = z[ii1] + ( (z[ii1+1]- z[ii1]) / ((i1+1)/nn - i1/nn) ) * (p[k] - i1/nn);
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q[k] = qq[0] + desintxb[ii1] - 0.5*(z[ii1] + z[ii1+1]);
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}
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i1 = i1+1;
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}
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}
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@ -61,97 +61,101 @@ def scale_data(X, param=()):
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return Xs, param
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def value2diff(X, mode=None):
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def value2diff(X, percent=True):
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"""
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from value to difference in abs or %
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diff in value first element is zero
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diff in % first element is one
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dx is reduced by 1 row
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"""
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# Difference in percent
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if (percent):
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dX = X[1:, :] / X[:-1, :] - 1.0
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# Difference in value
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if (mode == 'V'):
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dX = np.zeros_like(X)
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dX[1:, :] = X[1:, :] - X[:-1, :]
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# Difference in percent
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else:
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dX = np.ones_like(X)
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dX[1:, :] = X[1:, :] / X[:-1, :] - 1.0
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dX = X[1:, :] - X[:-1, :]
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return dX
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def diff2value(dX, mode=None):
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def diff2value(dX, percent=True):
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"""
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from difference in abs or % to value (first row should be all zeros but
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will be over-written
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from difference in abs or % to value
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X is increased by one row
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Reference X[0,:] is assumed to be zero. If X0[0,:] is the desired
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reference, the actual vector X can be determined as X0+X
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Value from percent: first row set to one. If X0 defines the starting
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values, then X0*X would be the ???
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Reference X[0,:] is assumed to be one. If X0[0,:] is the desired
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reference, the actual vector X can be determined as X0*X
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Value from difference: first row set to zero. If X0 defines the starting
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values, then X0+X would be the ???
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"""
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# Value from the difference (first row equal to zero)
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# X[0, :] = 0
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# X[1, :] = X[0, :] + dX[1, :] = dX[1, :]
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# X[2, :] = X[0, :] + dX[1, :] + dX[2, :] = dX[1, :] + dX[2, :]
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# ....
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if (mode == 'V'):
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X = np.zeros_like(dX)
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X[1:, :] = np.cumsum(dX[1:, :], axis=0)
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n_rows, n_cols = dX.shape
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X = np.zeros((n_rows+1, n_cols))
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# Value from percent (first row equal to 1)
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# Value from percent
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# X[0, :] = 1
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# X[1, :] = X[0, :] * (1 + dX[1, :]) = (1 + dX[1, :])
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# X[2, :] = X[1, :] * (1 + dX[2, :])
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# = X[0, :] * (1 + dX[1, :]) * (1 + dX[2, :])
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# = (1 + dX[1, :]) * (1 + dX[2, :])
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# ....
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else:
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X = np.ones_like(dX)
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if (percent):
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X[0, :] = 1.0
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X[1:, :] = np.cumprod((1.0 + dX), axis=0)
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# Value from difference
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# X[0, :] = 0
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# X[1, :] = X[0, :] + dX[1, :] = dX[1, :]
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# X[2, :] = X[0, :] + dX[1, :] + dX[2, :] = dX[1, :] + dX[2, :]
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# ....
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else:
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# First row already set to zero
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X[1:, :] = np.cumsum(dX, axis=0)
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return X
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def synthetic_wave(per, amp=None, pha=None, num=1000):
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def synthetic_wave(P, A=None, phi=None, num=1000):
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"""
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Generates a multi-sinewave.
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P = [ P1 P2 ... Pn ] Periods
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A = [ A1 A2 ... An ] Amplitudes
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PH = [PH1 PH2 ... PHn] Phases (rad)
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P = [P_1, P_2, ... P_n] Periods
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A = [A_1, A_2, ... A_n] Amplitudes
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phi = [phi_1, phi_2, ... phi_n] Phases (rad)
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Default amplitudes are ones
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Default phases are zeros
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Time is from 0 to largest period (default 1000 steps)
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"""
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n_waves = len(per)
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per = np.asarray(per)
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n_waves = len(P)
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P = np.asarray(P)
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# Define amplitudes and phases
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if (amp is None):
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amp = np.ones(n_waves)
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# Define amplitudes
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if (A is None):
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A = np.ones(n_waves)
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else:
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amp = np.asarray(amp)
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if (pha is None):
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pha = np.zeros(n_waves)
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A = np.asarray(A)
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# Define phases
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if (phi is None):
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phi = np.zeros(n_waves)
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else:
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pha = np.asarray(pha)
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phi = np.asarray(phi)
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# Add all the waves
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t = np.linspace(0.0, np.amax(per), num=num)
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t = np.linspace(0.0, np.amax(P), num=num)
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f = np.zeros(len(t))
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for i in range(n_waves):
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f = f + amp[i] * np.sin(2.0 * np.pi * t / per[i] + pha[i])
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f = f + A[i] * np.sin(2.0 * np.pi * t / P[i] + phi[i])
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return t, f
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def synthetic_series(X, multiv=False):
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def synthetic_FFT(X, multiv=False):
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"""
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- univariate and single time-series
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- univariate and multi-time series (can be used to generate multi from same)
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- multi-variate multi-time series
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"""
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n_samples, n_series = data.shape
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n_samples, n_series = X.shape
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# The number of samples must be odd (if the number is even drop the last value)
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if ((n_samples % 2) == 0):
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@ -188,3 +192,69 @@ def synthetic_series(X, multiv=False):
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X_synt = np.real(np.fft.ifft(synt_fft, axis=0))
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return X_synt
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def synthetic_sampling(X, replace=True):
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"""
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generate more than n_samples?
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"""
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n_samples, n_series = X.shape
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X_synt = np.zeros_like(X)
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# Sampling with replacement
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if (replace):
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idx = np.random.randint(0, n_samples, size=(n_samples, n_series))
|
||||
i = np.arange(n_series)
|
||||
X_synt[:, i] = X[idx[:, i], i]
|
||||
|
||||
# Sampling without replacement
|
||||
else:
|
||||
idx = np.zeros_like(X)
|
||||
for j in range(n_series):
|
||||
idx[:, j] = np.random.permutation(n_samples)
|
||||
i = np.arange(n_series)
|
||||
X_synt[:, i] = X[idx[:, i], i]
|
||||
|
||||
return X_synt
|
||||
|
||||
|
||||
def synthetic_MEboot(X, alpha=0.1):
|
||||
"""
|
||||
"""
|
||||
n_samples, n_series = X.shape
|
||||
X_synt = np.zeros_like(X)
|
||||
|
||||
# Loop over time-series
|
||||
n = n_samples
|
||||
for ts in range(n_series):
|
||||
|
||||
# Sort the time series keeping track of the original position
|
||||
idx = np.argsort(X[:, ts])
|
||||
Y = X[idx, ts]
|
||||
print(idx, idx.shape)
|
||||
print(Y, Y.shape)
|
||||
|
||||
# Compute the trimmed mean
|
||||
g = int(np.floor(n * alpha))
|
||||
r = n * alpha - g
|
||||
print(n, g, r)
|
||||
m_trm = ((1.0 - r) * (Y[g] + Y[n-g-1]) + Y[g+1:n-g-1].sum()) \
|
||||
/ (n * (1.0 - 2.0 * alpha))
|
||||
print(m_trm)
|
||||
|
||||
# Compute the intermediate points
|
||||
Z = np.zeros(n+1)
|
||||
Z[1:-1] = (Y[0:-1] + Y[1:]) / 2.0
|
||||
Z[0] = Y[0] - m_trm
|
||||
Z[n] = Y[n-1] + m_trm
|
||||
print(Z, Z.shape)
|
||||
|
||||
# Compute the interval means
|
||||
mt = np.zeros(n)
|
||||
mt[0] = 0.75 * Y[0] + 0.25 * Y[1]
|
||||
mt[1:n-1] = 0.25 * Y[0:n-2] + 0.5 * Y[1:n-1] + 0.25 * Y[2:n]
|
||||
mt[n-1] = 0.25 * Y[n-2] + 0.75 * Y[n-1]
|
||||
print(mt)
|
||||
|
||||
|
||||
|
||||
|
|
|
@ -15,8 +15,6 @@ ToDo:
|
|||
- example using noisy multi-sine-waves
|
||||
- synt: boot, paper Vinod (as a class?)
|
||||
- vectors must be ( .., 1)
|
||||
- reduce the vector diff by one and pass initial value
|
||||
(with zero/one as default)
|
||||
"""
|
||||
|
||||
import sys
|
||||
|
@ -56,30 +54,48 @@ np.random.seed(1294404794)
|
|||
# signals = (spx.data[:, 0], Yc[:, 0], Yp[:, 0])
|
||||
# utl.plot_signals(signals, 0, 50)
|
||||
|
||||
# t, f = utl.synthetic_wave([1., 2., 3.], A=None, PH=None, num=30)
|
||||
# t, f = syn.synthetic_wave([1., 2., 3.], A=None, phi=None, num=100)
|
||||
# plt.plot(t,f)
|
||||
# plt.show()
|
||||
aa = np.array([
|
||||
[ 0.8252, 0.2820],
|
||||
[ 1.3790, 0.0335],
|
||||
[-1.0582, -1.3337],
|
||||
[-0.4686, 1.1275],
|
||||
[-0.2725, 0.3502],
|
||||
[ 1.0984, -0.2991],
|
||||
[-0.2779, 0.0229],
|
||||
[ 0.7015, -0.2620],
|
||||
[-2.0518, -1.7502],
|
||||
[-0.3538, -0.2857],
|
||||
[-0.8236, -0.8314],
|
||||
[-1.5771, -0.9792],
|
||||
[ 0.5080, -1.1564]])
|
||||
# synt_aa = utl.synthetic_series(data, False)
|
||||
# plt.plot(synt_aa)
|
||||
# aa = np.array([
|
||||
# [ 0.8252, 0.2820],
|
||||
# [ 1.3790, 0.0335],
|
||||
# [-1.0582, -1.3337],
|
||||
# [-0.4686, 1.1275],
|
||||
# [-0.2725, 0.3502],
|
||||
# [ 1.0984, -0.2991],
|
||||
# [-0.2779, 0.0229],
|
||||
# [ 0.7015, -0.2620],
|
||||
# [-2.0518, -1.7502],
|
||||
# [-0.3538, -0.2857],
|
||||
# [-0.8236, -0.8314],
|
||||
# [-1.5771, -0.9792],
|
||||
# [ 0.5080, -1.1564]])
|
||||
# synt_data1 = syn.synthetic_FFT(data, False)
|
||||
# synt_data2 = syn.synthetic_FFT(data, False)
|
||||
# plt.plot(synt_data1)
|
||||
# plt.plot(synt_data2)
|
||||
# plt.plot(data)
|
||||
# names = ['syn1', 'syn2', 'spx']
|
||||
# plt.legend(names)
|
||||
# plt.show()
|
||||
print(data[0:10, :])
|
||||
bb = syn.value2diff(data, mode='V')
|
||||
print(bb[0:10, :])
|
||||
bb[0, 0] = 1399.48
|
||||
cc = syn.diff2value(bb, mode='V')
|
||||
print(cc[0:10, :])
|
||||
# percent = False
|
||||
# print(data[0:10, :])
|
||||
# bb = syn.value2diff(data, percent)
|
||||
# print(bb[0:10, :])
|
||||
# cc = syn.diff2value(bb, percent)
|
||||
# print(cc[0:10, :]+1399.48)
|
||||
# aa = np.arange(10,28).reshape(6,3)
|
||||
# print(aa)
|
||||
# idx = np.zeros_like(aa)
|
||||
# bb = np.zeros_like(aa)
|
||||
# for i in range(aa.shape[1]):
|
||||
# idx[:, i] = np.random.permutation(aa.shape[0])
|
||||
# print(idx)
|
||||
# i = np.arange(aa.shape[1])
|
||||
# bb[:, i] = aa[idx[:, i], i]
|
||||
# bb = syn.synthetic_boot(aa, replace=False)
|
||||
# print(bb)
|
||||
aa = np.array([4, 12, 36, 20, 8]).reshape(5, 1)
|
||||
# print(aa)
|
||||
syn.synthetic_MEboot(aa)
|
||||
|
|
|
@ -8,6 +8,8 @@
|
|||
|
||||
- D. Prichard, and J. Theiler, "[Generating surrogate data for time series with several simultaneously measured variables](https://journals.aps.org/prl/abstract/10.1103/PhysRevLett.73.951)."
|
||||
|
||||
- H. Vinod, and J. Lopez-de-Lacalle, "[Maximum entropy bootstrap for time series: the meboot R package](https://www.jstatsoft.org/article/view/v029i05)."
|
||||
|
||||
## Characteristics
|
||||
|
||||
## Parameters
|
||||
|
|
Ładowanie…
Reference in New Issue