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I'm working on a binomial mixture model using OpenBUGS and R package R2OpenBUGS. I've successfully built simpler models, but once I add another level for imperfect detection, I consistently receive the error "variable X is not defined in model or in data set." I've tried a number of different things, including changing the structure of my data and entering my data directly into OpenBUGS. I'm posting this in the hope that someone else has experience with this error, and perhaps knows why OpenBUGS is not recognizing variable X even though it is clearly defined as far as I can tell.

I've also gotten the error "expected the collection operator c error pos 8" - this is not an error I've been getting previously, but I am similarly stumped.

Both the model and the data-simulation function come from Kery's Introduction to WinBUGS for Ecologists (2010). I will note that the data set here is in lieu of my own data, which is similar.

I am including the function to build the dataset as well as the model. Apologies for the length.

# Simulate data: 200 sites, 3 sampling rounds, 3 factors of the level 'trt', 
# and continuous covariate 'X'

data.fn <- function(nsite = 180, nrep = 3, xmin = -1, xmax = 1, alpha.vec = c(0.01,0.2,0.4,1.1,0.01,0.2), beta0 = 1, beta1 = -1, ntrt = 3){
  y <- array(dim = c(nsite, nrep))  # Array for counts
  X <- sort(runif(n = nsite, min = xmin, max = xmax))   # covariate values, sorted
  # Relationship expected abundance - covariate
  x2 <- rep(1:ntrt, rep(60, ntrt)) # Indicator for population
  trt <- factor(x2, labels = c("CT", "CM", "CC"))
  Xmat <- model.matrix(~ trt*X)
  lin.pred <- Xmat[,] %*% alpha.vec # Value of lin.predictor
  lam <- exp(lin.pred)
  # Add Poisson noise: draw N from Poisson(lambda)
  N <- rpois(n = nsite, lambda = lam)
  table(N)                # Distribution of abundances across sites
  sum(N > 0) / nsite          # Empirical occupancy
  totalN <- sum(N)  ;  totalN
  # Observation process
  # Relationship detection prob - covariate
  p <- plogis(beta0 + beta1 * X)
  # Make a 'census' (i.e., go out and count things)
  for (i in 1:nrep){
    y[,i] <- rbinom(n = nsite, size = N, prob = p)
  }
  # Return stuff
  return(list(nsite = nsite, nrep = nrep, ntrt = ntrt, X = X, alpha.vec = alpha.vec, beta0 = beta0, beta1 = beta1, lam = lam, N = N, totalN = totalN, p = p, y = y, trt = trt))
}

data <- data.fn()

And here is the model:

sink("nmix1.txt")
cat("
    model {

    # Priors
    for (i in 1:3){     # 3 treatment levels (factor)   
    alpha0[i] ~ dnorm(0, 0.01)       
    alpha1[i] ~ dnorm(0, 0.01)       
    }
    beta0 ~ dnorm(0, 0.01)       
    beta1 ~ dnorm(0, 0.01)

    # Likelihood
    for (i in 1:180) {      # 180 sites
    C[i] ~ dpois(lambda[i])
    log(lambda[i]) <- log.lambda[i]
    log.lambda[i] <- alpha0[trt[i]] + alpha1[trt[i]]*X[i]

    for (j in 1:3){     # each site sampled 3 times
    y[i,j] ~ dbin(p[i,j], C[i])
    lp[i,j] <- beta0 + beta1*X[i]
    p[i,j] <- exp(lp[i,j])/(1+exp(lp[i,j]))
    }
    }

    # Derived quantities

    }
    ",fill=TRUE)
sink()

# Bundle data
trt <- data$trt
y <- data$y
X <- data$X
ntrt <- 3

# Standardise covariates
s.X <- (X - mean(X))/sd(X)

win.data <- list(C = y, trt = as.numeric(trt), X = s.X)

# Inits function
inits <- function(){ list(alpha0 = rnorm(ntrt, 0, 2), 
                          alpha1 = rnorm(ntrt, 0, 2),
                beta0 = rnorm(1,0,2), beta1 = rnorm(1,0,2))}

# Parameters to estimate
parameters <- c("alpha0", "alpha1", "beta0", "beta1")

# MCMC settings
ni <- 1200
nb <- 200
nt <- 2
nc <- 3

# Start Markov chains
out <- bugs(data = win.data, inits, parameters, "nmix1.txt", n.thin=nt, 
            n.chains=nc, n.burnin=nb, n.iter=ni, debug = TRUE)
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2 Answers 2

up vote 2 down vote accepted

Note: This answer has gone through a major revision, after I noticed another problem with the code.


If I understand your model correctly, you are mixing up the y and N from the simulated data, and what is passed as C to Bugs. You are passing the y variable (a matrix) to the C variable in the Bugs model, but this is accessed as a vector. From what I can see C is representing the number of "trials" in your binomial draw (actual abundances), i.e. N in your data set. The variable y (a matrix) is called the same thing in both the simulated data and in the Bugs model.

This is a reformulation of your model, as I understand it, and this runs ok:

sink("nmix1.txt")
cat("
    model {

    # Priors
    for (i in 1:3){     # 3 treatment levels (factor)   
    alpha0[i] ~ dnorm(0, 0.01)       
    alpha1[i] ~ dnorm(0, 0.01)       
    }
    beta0 ~ dnorm(0, 0.01)       
    beta1 ~ dnorm(0, 0.01)

    # Likelihood
    for (i in 1:180) {      # 180 sites
    C[i] ~ dpois(lambda[i])
    log(lambda[i]) <- log.lambda[i]
    log.lambda[i] <- alpha0[trt[i]] + alpha1[trt[i]]*X[i]

    for (j in 1:3){     # each site sampled 3 times
        y[i,j] ~ dbin(p[i,j], C[i])
        lp[i,j] <- beta0 + beta1*X[i]
        p[i,j] <- exp(lp[i,j])/(1+exp(lp[i,j]))
    }
    }

    # Derived quantities

    }
    ",fill=TRUE)
sink()

# Bundle data
trt <- data$trt
y <- data$y
X <- data$X
N<- data$N
ntrt <- 3

# Standardise covariates
s.X <- (X - mean(X))/sd(X)

win.data <- list(y = y, trt = as.numeric(trt), X = s.X, C= N)

# Inits function
inits <- function(){ list(alpha0 = rnorm(ntrt, 0, 2), 
                          alpha1 = rnorm(ntrt, 0, 2),
                beta0 = rnorm(1,0,2), beta1 = rnorm(1,0,2))}

# Parameters to estimate
parameters <- c("alpha0", "alpha1", "beta0", "beta1")

# MCMC settings
ni <- 1200
nb <- 200
nt <- 2
nc <- 3

# Start Markov chains
out <- bugs(data = win.data, inits, parameters, "nmix1.txt", n.thin=nt, 
            n.chains=nc, n.burnin=nb, n.iter=ni, debug = TRUE)

Overall, the results from this model looks ok, but there are long autocorrelation lags for beta0 and beta1. The estimate of beta1 also seems a bit off(~= -0.4), so you might want to recheck the Bugs model specification, so that it is matching the simulation model (i.e. that you are fitting the correct statistical model). At the moment, I'm not sure that it does, but I don't have the time to check further right now.

share|improve this answer
    
Thanks! You are very right - the pitfalls of copying old code and modifying it. You are right about the misspecification, but with one edit, since I wanted to estimate values for N: win.data = c(y=y,...) and then I needed to provide inits for N instead. –  sgo Mar 21 at 14:20
1  
I will also add for anyone experiencing the same problem: I learned yesterday that OpenBUGS sometimes has trouble reading the data sent by R (hence the 'variable undefined' error even once I debugged). Try JAGS and package 'rjags' and it should work much better. –  sgo Mar 21 at 14:23
1  
@sgo @fileunderwater this error is often caused by occurance of e instead of E in scientific notation –  Qbik May 5 at 19:29

I got the same message trying to pass a factor to OpenBUGS. Like so,

Ndata <- list(yrs=N$yrs, site=N$site), ... )

The variable "site" was not passed by the "bugs" function. It simply was not in list passed to OpenBUGS

I solved the problem by passing site as numeric,

Ndata <- list(yrs=N$yrs, site=as.numeric(N$site)), ... )
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