R/ce.sim4beta.Init.Mean.AIC.R

Defines functions ce.sim4beta.Init.Mean.AIC

ce.sim4beta.Init.Mean.AIC <-
function(N, init.locs, data, h, L0, L, M, Melite, eps, a, var.init){
    
    v <- var(data[, 1])
    
    ########################Parameter initialization######################################################  
    new.para <- array(0, dim = c(2, N))
    new.para[1, ] <- betaIntEst(init.locs[1:N], var.init, L0, L)$alpha.init
    new.para[2, ] <- betaIntEst(init.locs[1:N], var.init, L0, L)$beta.init
    ######################################################################################################  
#    llVal <- c()
#    aic <- c()
    k <- 0
    repeat
    {
      k <- k + 1
      ch <- array(0, dim =c (M, (N + 2)))       
      ch[, 1] <- c(1)                    
      ch[, (N + 2)] <- c(L + 1)    
      ch[, (2 : (N + 1))] <- apply(new.para, 2, betarand, L0, L, M)   
      ch <- t(apply(ch, 1, sort))                       
      
      
#       LL.full <- apply(ch, 1, loglikMeanNormal, data, h)
#       AIC.val <- -2*LL.full + 2*(N + 2)
      LL.full <- apply(ch, 1, llhood.MeanNormal, data, v, h)
      AIC.val <- apply(as.data.frame(LL.full), 1, AIC.MeanNormal, N, L) 
      
      ch <- cbind(ch, LL.full, AIC.val)
      ch <- ch[order(ch[, (N + 4)], decreasing = FALSE), ]  
      melitesmpl <- ch[1 : Melite, ]                     
#      llVal[k] <- melitesmpl[1, (N + 3)] 
#      aic[k] <- melitesmpl[1, (N + 4)] 
      
      newpar.n <- array(0, dim = c(2, N))
      newpar.n[1, ] <- apply(as.matrix(melitesmpl[, (2 :(N + 1))]), 2, mean)
      newpar.n[2, ] <- apply(as.matrix(melitesmpl[, (2 :(N + 1))]), 2, var)   
      
      newpar.new <- array(0, dim = c(2, N))
      newpar.new[1, ] <- apply(newpar.n, 2, fun.alpha, L0, L)
      newpar.new[2, ] <- apply(newpar.n, 2, fun.beta, L0, L)
      new.para <- a * newpar.new + (1 - a) * new.para
      
      mad <- apply(as.matrix(melitesmpl[, (2 : (N + 1))]), 2, mad)
      
      if(max(mad) <= eps){break}
    }
#    return(list(loci = ch[1, (1 : (N + 2))], AIC.Val = aic[k], LogLike = llVal[k]))
    return(list(loci = ch[1, (1 : (N + 2))], AIC.Val = melitesmpl[1, (N + 4)][[1]], LogLike = melitesmpl[1, (N + 3)][[1]]))
  }

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breakpoint documentation built on May 1, 2019, 8:14 p.m.