Generating observations and log-normally distributed random errors
We generate 10000 Observations of a sum of 100 random variables with mean 10 and multiplicative standard deviation of 1.7.
if (!requireNamespace("mvtnorm")) {
warning("Remainder of the vignette required mvtnorm installed.")
knitr::opts_chunk$set(error = TRUE)
}
nObs <- 100; nRep <- 10000
#nObs <- 1000; nRep <- 100
xTrue <- rep(10, nObs)
sigmaStar <- rep(1.7, nObs) # multiplicative stddev
theta <- getParmsLognormForExpval(xTrue, sigmaStar)
# generate observations with correlated errors
acf1 <- c(0.4,0.1)
corrM <- setMatrixOffDiagonals(
diag(nrow = nObs), value = acf1, isSymmetric = TRUE)
xObsN <- exp(mvtnorm::rmvnorm(
nRep, mean = theta[,1]
, sigma = diag(theta[,2]) %*% corrM %*% diag(theta[,2])))
A single draw of the autocorrelated 100 variables looks like the following. ![](data:image/png;base64,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)
Estimating the correlation matrix and effective number of parameters
We can estimate the autocorrelation matrix by assuming that it depends only on the distance in time, and estimate the autocorrelation matrix.
The original autocorrelation function used to generate the sample was:
## [1] 1.0 0.4 0.1
The effective autocorrelation function estimated from the sample is:
(effAcf <- computeEffectiveAutoCorr(ds$xErr))
## [1] 1.00000000 0.39109457 0.16851031 0.08212736 0.07163112 0.07725655
(nEff <- computeEffectiveNumObs(ds$xErr))
## [1] 39.24194
Due to autocorrelation, the effective number of parameters is less than nObs = 100.
Computing the mean and its standard deviation
First we compute the distribution parameter of the sum of the 100 variables. The multiplicative uncertainty has decreased from 1.7.
#coefSum <- estimateSumLognormal( theta[,1], theta[,2], effAcf = effAcf )
coefSum <- estimateSumLognormal( theta[,1], theta[,2], effAcf = c(1,acf1) )
setNames(exp(coefSum["sigma"]), "sigmaStar")
## sigmaStar
## 1.077687
Its expected value corresponds to the sum of expected values (100*10).
(sumExp <- getLognormMoments( coefSum[1], coefSum[2])[1,"mean"])
## mean
## 1000
The lognormal approximation of the distribution of the sum, is close to the distribution of the 10000 repetitions.
![](data:image/png;base64,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)
The mean is the sum divided by the number of observations, \(n\). While the multiplicative standard deviation does not change by this operation, the location parameter is obtained by dividing by \(n\) at original scale, hence, subtracting \(log(n)\) at log-scale.
(coefMean <- setNames(c(coefSum["mu"] - log(nObs), coefSum["sigma"]), c("mu","sigma")))
## mu sigma
## 2.2997863 0.0748167
And we can plot the estimated distribution of the mean. ![](data:image/png;base64,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)