#
# Copyright (C) 2019 University of Amsterdam
#
# This program is free software: you can redistribute it and/or modify
# it under the terms of the GNU General Public License as published by
# the Free Software Foundation, either version 2 of the License, or
# (at your option) any later version.
#
# This program is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
# GNU General Public License for more details.
#
# You should have received a copy of the GNU General Public License
# along with this program. If not, see <http://www.gnu.org/licenses/>.
#
LDpoisson <- function(jaspResults, dataset, options, state=NULL){
options <- .ldRecodeOptionsPoisson(options)
#### Show poisson section ----
.ldIntroText(jaspResults, options, "Poisson distribution")
.ldPoissonParsSupportMoments(jaspResults, options)
pmfContainer <- .ldGetPlotContainer(jaspResults, options, "plotPMF", "Probability Mass Function", 3)
.ldFillPMFContainer(pmfContainer, options, .ldFormulaPoissonPMF)
cmfContainer <- .ldGetPlotContainer(jaspResults, options, "plotCMF", "Cumulative Distribution Function", 4)
.ldFillCMFContainer(cmfContainer, options, .ldFormulaPoissonCDF)
#### Generate and Display data section ----
# simulate and read data
.simulateData(jaspResults, options)
ready <- options[['variable']] != ""
errors <- FALSE
if(ready && is.null(dataset)){
dataset <- .readDataSetToEnd(columns.as.numeric = options[['variable']])
variable <- dataset[[.v(options[['variable']])]]
variable <- variable[!is.na(variable)]
errors <- .hasErrors(dataset, type = c("observations", "variance", "infinity", "limits"),
observations.amount = "<2",
limits.min = options$support$min, limits.max = options$support$max,
exitAnalysisIfErrors = FALSE)
errors <- .ldCheckInteger(variable, errors)
}
# overview of the data
dataContainer <- .ldGetDataContainer(jaspResults, options, errors)
readyDesc <- ready && (isFALSE(errors) || (is.null(errors$infinity) && is.null(errors$observations)))
.ldSummaryContinuousTableMain(dataContainer, variable, options, readyDesc)
.ldObservedMomentsTableMain (dataContainer, variable, options, readyDesc)
.ldPlotHistogram (dataContainer, variable, options, readyDesc, "discrete")
.ldPlotECDF (dataContainer, variable, options, readyDesc)
#### Fit data and assess fit ----
readyFit <- ready && isFALSE(errors)
#### Maximum Likelihood ----
if(options$methodMLE){
mleContainer <- .ldGetFitContainer(jaspResults, options, "mleContainer", "Maximum likelihood", 7, errors)
# parameter estimates
mleEstimatesTable <- .ldEstimatesTable(mleContainer, options, TRUE, TRUE, "methodMLE")
mleResults <- .ldMLEResults(mleContainer, variable, options, readyFit, options$distNameInR,
.ldPoissonMethodMLEStructureResults)
.ldFillPoissonEstimatesTable(mleEstimatesTable, mleResults, options, readyFit)
# fit assessment
mleFitContainer <- .ldGetFitContainer(mleContainer, options, "mleFitAssessment", "Fit Assessment", 8)
# fit statistics
mleFitStatistics <- .ldFitStatisticsTable(mleFitContainer, options, "methodMLE")
mleFitStatisticsResults <- .ldFitStatisticsResults(mleContainer, mleResults$fitdist, variable, options, readyFit)
.ldFillFitStatisticsTable(mleFitStatistics, mleFitStatisticsResults, options, readyFit)
#return()
# fit plots
.ldFitPlots(mleFitContainer, mleResults$fitdist$estimate, options, variable, readyFit)
}
#### Method of moments ----
#### Unbiased estimate ----
return()
}
### options ----
.ldRecodeOptionsPoisson <- function(options){
options[['parValNames']] <- c("lambda")
options[['pars']] <- list(lambda = options[['lambda']])
options[['pdfFun']] <- dpois
options[['cdfFun']] <- ppois
options[['qFun']] <- qpois
options[['rFun']] <- rpois
options[['distNameInR']] <- "pois"
options[['range_x']] <- c(options[['min_x']], options[['max_x']])
options[['highlightmin']] <- options[['min']]
options[['highlightmax']] <- options[['max']]
options$support <- list(min = 0, max = Inf)
options$lowerBound <- c(0)
options$upperBound <- c(Inf)
options
}
### text fill functions -----
.ldPoissonParsSupportMoments <- function(jaspResults, options){
if(options$parsSupportMoments && is.null(jaspResults[['parsSupportMoments']])){
pars <- list()
pars[[1]] <- gettext("rate: \u03BB \u2208 \u211D: \u03BB \u003E 0")
support <- gettext("x \u2208 \u2124: x \u2265 0")
moments <- list()
moments$expectation <- gettext("\u03BB")
moments$variance <- gettext("\u03BB")
jaspResults[['parsSupportMoments']] <- .ldParsSupportMoments(pars, support, moments)
}
}
.ldFormulaPoissonPMF <- function(options){
text <- "<MATH>
f(x; <span style='color:red'>\u03BB</span>) =
</MATH>"
return(gsub(pattern = "\n", replacement = " ", x = text))
}
.ldFormulaPoissonCDF <- function(options){
text <- "<MATH>
F(x; <span style='color:red'>\u03BB</span>) =
</MATH>"
return(gsub(pattern = "\n", replacement = " ", x = text))
}
.ldFormulaPoissonQF <- function(options){
text <- "<MATH>
Q(x; <span style='color:red'>\u03BB</span>) =
</MATH>"
return(gsub(pattern = "\n", replacement = " ", x = text))
}
#### Table functions ----
.ldFillPoissonEstimatesTable <- function(table, results, options, ready){
if(!ready) return()
if(is.null(results)) return()
if(is.null(table)) return()
res <- results$structured
res$parName <- c("\u03BB")
if(results$fitdist$convergence != 0){
table$addFootnote(gettext("The optimization did not converge, try adjusting the parameter values."), symbol = gettext("<i>Warning.</i>"))
}
if(!is.null(results$fitdist$optim.message)){
table$addFootnote(results$fitdist$message, symbol = gettext("<i>Warning.</i>"))
}
table$setData(res)
return()
}
.ldPoissonMethodMLEStructureResults <- function(fit, options){
if(is.null(fit)) return()
transformations <- c(lambda = "lambda")
res <- sapply(transformations, function(tr) car::deltaMethod(fit$estimate, tr, fit$vcov, level = options$ciIntervalInterval))
rownames(res) <- c("estimate", "se", "lower", "upper")
res <- t(res)
res <- cbind(par = rownames(res), res)
res <- as.data.frame(res)
return(res)
}
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