context("mlexp") ## Data generation. set.seed(313) small_data <- rexp(100, 2) tiny_data <- rexp(10, 3) ## Finds errors with na and data out of bounds. expect_error(mlexp(c(-.1, tiny_data))) expect_error(mlexp(c(tiny_data, NA))) ## Checks that na.rm works as intended. expect_equal( coef(mlexp(small_data)), coef(mlexp(c(small_data, NA), na.rm = TRUE)) ) ## Is the log-likelihood correct? est <- mlexp(small_data, na.rm = TRUE) expect_equal( sum(dexp(small_data, est, log = TRUE)), attr(est, "logLik") ) ## Check class. expect_equal(attr(est, "model"), "Exponential") expect_equal(class(est), "univariateML") ## Check support. expect_equal(class(attr(est, "support")), "numeric")