Adapted maximum entropy bootstrap routine from meboot https://cran.r-project.org/package=meboot.
NNS.meboot(
x,
reps = 999,
rho = NULL,
type = "spearman",
drift = TRUE,
trim = 0.1,
xmin = NULL,
xmax = NULL,
reachbnd = TRUE,
expand.sd = TRUE,
force.clt = TRUE,
scl.adjustment = FALSE,
sym = FALSE,
elaps = FALSE,
colsubj,
coldata,
coltimes,
...
)vector of data.
numeric; number of replicates to generate.
numeric [0,1]; The default setting rho = NULL assumes that
the user does not want to generate replicates that are perfectly dependent on original time series, rho=1 recovers the original meboot(...) settings.
rho < 1 admits less perfect (more realistic for some purposes) dependence.
options("spearman", "pearson", "NNScor", "NNSdep"); type = "spearman"(default) dependence metric desired.
logical; TRUE default preserves the drift of the original series.
numeric [0,1]; The mean trimming proportion, defaults to trim=0.1.
numeric; the lower limit for the left tail.
numeric; the upper limit for the right tail.
logical; If TRUE potentially reached bounds (xmin = smallest value - trimmed mean and
xmax = largest value + trimmed mean) are given when the random draw happens to be equal to 0 and 1, respectively.
logical; If TRUE the standard deviation in the ensemble is expanded. See expand.sd in meboot::meboot.
logical; If TRUE the ensemble is forced to satisfy the central limit theorem. See force.clt in meboot::meboot.
logical; If TRUE scale adjustment is performed to ensure that the population variance of the transformed series equals the variance of the data.
logical; If TRUE an adjustment is peformed to ensure that the ME density is symmetric.
logical; If TRUE elapsed time during computations is displayed.
numeric; the column in x that contains the individual index. It is ignored if the input data x is not a pdata.frame object.
numeric; the column in x that contains the data of the variable to create the ensemble. It is ignored if the input data x is not a pdata.frame object.
numeric; an optional argument indicating the column that contains the times at which the observations for each individual are observed. It is ignored if the input data x
is not a pdata.frame object.
possible argument fiv to be passed to expand.sd.
x original data provided as input.
replicates maximum entropy bootstrap replicates.
ensemble average observation over all replicates.
xx sorted order stats (xx[1] is minimum value).
z class intervals limits.
dv deviations of consecutive data values.
dvtrim trimmed mean of dv.
xmin data minimum for ensemble=xx[1]-dvtrim.
xmax data x maximum for ensemble=xx[n]+dvtrim.
desintxb desired interval means.
ordxx ordered x values.
kappa scale adjustment to the variance of ME density.
elaps elapsed time.
Vinod, H.D. and Viole, F. (2020) Arbitrary Spearman's Rank Correlations in Maximum Entropy Bootstrap and Improved Monte Carlo Simulations https://www.ssrn.com/abstract=3621614
Vinod, H.D. (2013), Maximum Entropy Bootstrap Algorithm Enhancements. https://www.ssrn.com/abstract=2285041.
Vinod, H.D. (2006), Maximum Entropy Ensembles for Time Series Inference in Economics, Journal of Asian Economics, 17(6), pp. 955-978.
Vinod, H.D. (2004), Ranking mutual funds using unconventional utility theory and stochastic dominance, Journal of Empirical Finance, 11(3), pp. 353-377.
# NOT RUN {
# To generate an orthogonal rank correlated time-series to AirPassengers
boots <- NNS.meboot(AirPassengers, reps=100, rho = 0, xmin = 0)
# Verify correlation of replicates ensemble to original
cor(boots$ensemble, AirPassengers, method = "spearman")
# Plot all replicates
matplot(boots$replicates, type = 'l')
# Plot ensemble
lines(boots$ensemble, lwd = 3)
# }
# NOT RUN {
# }
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