尝试使用R fitdistr {MASS}进行伽玛分布时的错误

时间:2013-04-12 15:03:53

标签: r gamma-distribution

我在R中的fitdistr {MASS}函数有问题。我有这个向量:

a <- c(26,73,84,115,123,132,159,207,240,241,254,268,272,282,300,302,329,346,359,367,375,378, 384,452,475,495,503,531,543,563,594,609,671,687,691,716,757,821,829,885,893,968,1053,1081,1083,1150,1205,1262,1270,1351,1385,1498,1546,1565,1635,1671,1706,1820,1829,1855,1873,1914,2030,2066,2240,2413,2421,2521,2586,2727,2797,2850,2989,3110,3166,3383,3443,3512,3515,3531,4068,4527,5006,5065,5481,6046,7003,7245,7477,8738,9197,16370,17605,25318,58524)

我希望使用命令将伽玛分布拟合到数据中:

fitted.gamma <- fitdistr(a, "gamma")

但我有这样的错误:

Error in optim(x = c(26, 73, 84, 115, 123, 132, 159, 207, 240, 241, 254,  : 
non-finite finite-difference value [1]
In addition: Warning messages:
1: In densfun(x, parm[1], parm[2], ...) : NaNs produced
2: In densfun(x, parm[1], parm[2], ...) : NaNs produced
3: In densfun(x, parm[1], parm[2], ...) : NaNs produced
4: In densfun(x, parm[1], parm[2], ...) : NaNs produced

所以我尝试初始化参数:

(fitted.gamma <- fitdistr(a, "gamma", start=list(1,1)))

创建了object.gamma对象但在打印时会产生错误:

Error in dn[[2L]] : subscript out of bounds

你知道发生了什么,或者知道其他一些R函数是否适合MLE的单变量分布?

提前感谢您的任何帮助或回应。

库巴

2 个答案:

答案 0 :(得分:10)

总是首先绘制你的东西,你的缩放远远不够。

library(MASS)
a <- c(26,73,84,115,123,132,159,207,240,241,254,268,272,282,300,302,329,346,359,367,375,378, 384,452,475,495,503,531,543,563,594,609,671,687,691,716,757,821,829,885,893,968,1053,1081,1083,1150,1205,1262,1270,1351,1385,1498,1546,1565,1635,1671,1706,1820,1829,1855,1873,1914,2030,2066,2240,2413,2421,2521,2586,2727,2797,2850,2989,3110,3166,3383,3443,3512,3515,3531,4068,4527,5006,5065,5481,6046,7003,7245,7477,8738,9197,16370,17605,25318,58524)
## Ooops, rater wide
plot(hist(a))
fitdistr(a/10000,"gamma") # gives warnings
# No warnings
fitted.gamma <- fitdistr(a/10000, dgamma,  start=list(shape = 1, rate = 0.1),lower=0.001)

现在您可以决定如何处理缩放

答案 1 :(得分:1)

对于明显符合伽玛分布的数据,但是在错误的范围内(即,好像它已被乘以/除以大数),这里是一种拟合伽玛分布的替代方法:< / p>

fitgamma <- function(x) {
  # Equivalent to `MASS::fitdistr(x, densfun = "gamma")`, where x are first rescaled to 
  # the appropriate scale for a gamma distribution. Useful for fitting the gamma distribution to 
  # data which, when multiplied by a constant, follows this distribution
  if (!requireNamespace("MASS")) stop("Requires MASS package.")

  fit <- glm(formula = x ~ 1, family = Gamma)
  out <- MASS::fitdistr(x * coef(fit), "gamma")
  out$scaling_multiplier <- unname(coef(fit))
  out
}

用法:

set.seed(40)
test <- rgamma(n = 100, shape = 2, rate = 2)*50000
fitdistr(test, "gamma") # fails
dens_fit <- fitgamma(test) # successs
curve(dgamma(x, 2, 2), to = 5) # true distribution
curve(dgamma(x, dens_fit$estimate['shape'], dens_fit$estimate['rate']), add=TRUE, col=2) # best guess
lines(density(test * dens_fit$scaling_multiplier), col = 3)

plot of density