# Using Beta.Select function in R (prior estimate)

I am trying to formulate the priors by using total counts and beta distribution.

I have following written:

``````quantile(df\$row, probs=c(0.00001, 0.5, 0.99999))

quantile1 <- list(p=0.5, x=8)
quantile2 <- list(p=0.99999, x=10)
quantile3 <- list(p=0.00001, x=1)

library("LearnBayes")
findBeta <- function(quantile1,quantile2,quantile3)

quantile1_p <- quantile1[[1]]; quantile1_q <- quantile1[[2]]
quantile2_p <- quantile2[[1]]; quantile2_q <- quantile2[[2]]
quantile3_p <- quantile3[[1]]; quantile3_q <- quantile3[[2]]

priorA <- beta.select(list(p=0.5, x=8), list(p=0.99999, x=10))
``````

and once I am trying to calculate priorA using beta.select function I get following error:

``````Error in if (p0 < p) m.hi = m0 else m.lo = m0 :
missing value where TRUE/FALSE needed
In pbeta(x, K * m0, K * (1 - m0)) : NaNs produced
``````

I just can't get rid of the error and do not know how to approach it any more. Urgently need help.

-
what is `df`? perhaps a `dput(df)` ? –  Ricardo Saporta Mar 25 '13 at 6:20
For the beta distribution values should be between 0 and <1. In your example 0.5 quantile is x=8 and 0.9999 quantile is x=10 - so you get the error message. –  Didzis Elferts Mar 25 '13 at 6:28

I am guessing (completely out of thin air) that you are dealing with percentages. In which case you want to use `x/100`
``````beta.select(list(p=0.5, x=.08), list(p=0.9, x=.10))
Either way, while it would be nice of `beta.select` to throw a more appropriate error message (or rather, to have an error check in there), the root of the issue is that your `x`'s are out of bounds. (As @Didzis noted, the interval for a beta dist is `[0, 1]`)