## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup, warning=FALSE----------------------------------------------------- library(AutoWMM) ## ----------------------------------------------------------------------------- ## create admissible dataset treeData <- data.frame("from" = c("Z", "Z", "A", "A"), "to" = c("A", "B", "C", "D"), "Estimate" = c(4, 34, 9, 1), "Total" = c(11, 70, 10, 10), "Count" = c(NA, 500, NA, 50), "Population" = c(FALSE, FALSE, FALSE, FALSE), "Description" = c("First child of the root", "Second child of the root", "First grandchild", "Second grandchild")) ## make tree object using makeTree tree <- makeTree(treeData) tree ## ----------------------------------------------------------------------------- ## draw tree pre-estimation, with descriptions on nodes (default), and suppressing probabilities on branching drawTree(tree, probs = FALSE) ## ----------------------------------------------------------------------------- ## perform root node estimation ## small sample_length was chosen for efficiency across machines Zhats <- wmmTree(tree, sample_length = 3) ## ----------------------------------------------------------------------------- # print the estimates of the root node generated by the iterations Zhats$estimates # prints the weights of each branch Zhats$weights # prints the final estimate of the root node by WMM Zhats$root # prints the final rounded estimate of the root with conf. int. Zhats$uncertainty ## ----------------------------------------------------------------------------- ## show the average root estimate with 95\% confidence interval, as well as ## average estimates with confidence intervals for each node with a marginal ## count tree$Get('uncertainty') ## show the samples generated from each path which provides root estimates tree$Get('targetEst_samples') ## show the probabilities sampled at each branch leading into the given node tree$Get('probability_samples') ## ----------------------------------------------------------------------------- ## create 2nd admissible dataset ## this example handles many branch sampling cases, including all siblings informed from different surveys, same survey, and mixed case, as well as some siblings not informed and the rest from different surveys, same survey, and mixed case. treeData2 <- data.frame("from" = c("Z", "Z", "Z", "A", "A", "B", "B", "B", "C", "C", "C", "H", "H", "H", "K", "K", "K"), "to" = c("A", "B", "C", "D", "E", "F", "G", "H", "I", "J", "K", "L", "M", "N", "O", "P", "Q"), "Estimate" = c(24, 34, 12, 9, 1, NA, 19, 1, NA, 2, 1, 20, 10, 12, 5, 3, NA), "Total" = c(70, 70, 70, 10, 11, NA, 30, 8, NA, 12, 12, 40, 40, 40, 10, 10, NA), "Count" = c(NA, NA, NA, 50, NA, NA, 15, NA, NA, 10, NA, NA, NA, 20, 5, 2, NA)) ## make tree object using makeTree tree2 <- makeTree(treeData2) ## perform root node estimation Zhats <- wmmTree(tree2, sample_length = 3) Zhats$estimates # print the estimates of the root node generated by the 15 iterations Zhats$weights # prints the weights of each branch Zhats$root # prints the final estimate of the root node by WMM Zhats$uncertainty # prints the final rounded estimate of the root with conf. int. ## show the average root estimate with 95\% confidence interval, as well as average estimates with confidence intervals for each node with a marginal count tree2$Get('uncertainty') ## show the samples generated from each path which provides root estimates tree2$Get('targetEst_samples') ## show the probabilities sampled at each branch leading into the given node tree2$Get('probability_samples') ## ----------------------------------------------------------------------------- ## visualize the tree post-estimation, with final weighted root estimate (rounded) displayed in the root node and marginal counts displayed in their respective leaves. ## means of sampled probability appear on branches, so note that sum of sibling branches may not equal 1. countTree(tree) ## ----------------------------------------------------------------------------- ## visualize the tree post-estimation, with final weighted root estimate (rounded) displayed in the root node and path-specific estimates in their respective leaves. ## The means of sampled probability appear on branches, so note that sum of sibling branches may not equal 1 estTree(tree)