我通过nlsBoot()收到以下错误,知道什么地方出错了吗?
Error in apply(tabboot, 1, quantile, c(0.5, 0.025, 0.975)) :
dim(X) must have a positive length
set.seed(1)
x = 1:100
y = x^2+rnorm(100,50,500)
plot(x,y)
d = data.frame(x =x, y=y)
mymodel = nls(y~x^b,start= list(b=1),data = d)
mymodel
library(nlstools)
nlsBoot(mymodel, niter = 999)
答案 0 :(得分:0)
尝试在应用nls函数之前定义公式,如下所示:
formula <- as.formula(y ~ x^b)
mymodel <- nls(formula,start= list(b=1),data = d)
已添加
好吧,我已经修改了代码,现在它可以处理一个参数。
# My suggestion is to erase all the environment first:
rm(list = ls())
# Then we start again:
set.seed(1)
x = 1:100
y = x^2+rnorm(100,50,500)
plot(x,y)
d = data.frame(x =x, y=y)
mymodel = nls(y~x^b,start= list(b=1),data = d)
这是您必须使用的功能:
nlsboot_onepar <- function (nls, niter = 999)
{
if (!inherits(nls, "nls"))
stop("Use only with 'nls' objects")
data2 <- eval(nls$data, sys.frame(0))
fitted1 <- fitted(nls)
resid1 <- resid(nls)
var1 <- all.vars(formula(nls)[[2]])
l1 <- lapply(1:niter, function(i) {
data2[, var1] <- fitted1 + sample(scale(resid1, scale = FALSE),
replace = TRUE)
nls2 <- try(update(nls, start = as.list(coef(nls)),
data = data2), silent = TRUE)
if (inherits(nls2, "nls"))
return(list(coef = coef(nls2), rse = summary(nls2)$sigma))
})
if (sum(sapply(l1, is.null)) > niter/2)
stop(paste("Procedure aborted: the fit only converged in",
round(sum(sapply(l1, is.null))/niter), "% during bootstrapping"))
tabboot <- sapply(l1[!sapply(l1, is.null)], function(z) z$coef,simplify =
FALSE)
tabboot <- as.matrix(t(as.numeric(tabboot)))
rownames(tabboot) <- "b"
rseboot <- sapply(l1[!sapply(l1, is.null)], function(z) z$rse)
recapboot <- t(apply(tabboot, 1, quantile, c(0.5, 0.025,
0.975)))
colnames(recapboot) <- c("Median", "2.5%", "97.5%")
estiboot <- t(apply(tabboot, 1, function(z) c(mean(z), sd(z))))
colnames(estiboot) <- c("Estimate", "Std. error")
serr <- sum(sapply(l1, is.null))
if (serr > 0)
warning(paste("The fit did not converge", serr, "times during
bootstrapping"))
listboot <- list(coefboot = t(tabboot), rse = rseboot, bootCI = recapboot,
estiboot = estiboot)
class(listboot) <- "nlsBoot"
return(listboot)
}
然后我们使用它:
result <- nlsboot_onepar(mymodel, niter = 999)
如果要绘制参数分布,可以执行以下操作:
graphics.off()
plot(density(as.vector(result$coefboot)))
# or
hist(as.vector(result$coefboot))
希望对您有所帮助。