## ----eval=FALSE, include=TRUE------------------------------------------------- # dipNorm <- data.frame(matrix(ncol = 3, nrow =10)) # # for(i in 1:10){ # dipNorm[i,1] <- 100 # dipNorm[i,2] <- rbinom(n = 1, size = 100, prob = 0.5) # dipNorm[i,3] <- dipNorm[i,1] - dipNorm[i,2] # } ## ----eval=FALSE, include=TRUE------------------------------------------------- # dipBias <- data.frame(matrix(ncol = 3, nrow =10)) # coverage <- c(rep(100, 9), 400) # prob <- c(rep(0.5, 9), 0.5) # for(i in 1:10){ # dipBias[i,1] <- coverage[i] # dipBias[i,2] <- rbinom(n = 1, size = coverage[i], prob = prob[i]) # dipBias[i,3] <- dipBias[i,1] - dipBias[i,2] # } ## ----echo=FALSE, out.width="125%", fig.align='center'------------------------- knitr::include_graphics("../man/figures/OutlierEqualFreq.png", dpi = 5000) ## ----echo=FALSE, out.width="125%", fig.align='center'------------------------- knitr::include_graphics("../man/figures/OutlierWithSD.png", dpi = 5000)