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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 addition: Warning message:
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.

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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

1 Answer 1

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))
#  [1]  28.02 318.74

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])

share|improve this answer
    
Yeah, I figured it. Since I was using Beta distribution as a fit, I had to recalculate Bayesian distribution for occurance. Some where in the loop, beta.select function was either estimating negative values or values higher than 1, which is not possible for the distribution. Thank you for the response. –  user2206363 Mar 25 '13 at 18:13

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