## ----echo = FALSE------------------------------------------------------------- library(MLZ); data(Goosefish) ## ----eval = FALSE------------------------------------------------------------- # library(MLZ) # class?MLZ_data # data(Goosefish) # Goosefish@vbLinf ## ----message = FALSE---------------------------------------------------------- data(SilkSnapper) new.dataset <- new("MLZ_data", Year = 1983:2013, Len_df = SilkSnapper, length.units = "mm") ## ----eval = FALSE, message = FALSE-------------------------------------------- # bin_length(SilkSnapper) ## ----fig.height = 5, fig.width = 6, message = FALSE--------------------------- plot(new.dataset, type = "comp") ## ----message = FALSE, echo = FALSE-------------------------------------------- new.dataset@Lc <- 310 new.dataset <- calc_ML(new.dataset) ## ----eval = FALSE------------------------------------------------------------- # new.dataset@Lc <- 310 # new.dataset <- calc_ML(new.dataset) # # new.dataset@MeanLength # new.dataset@ss ## ----eval = FALSE------------------------------------------------------------- # summary(new.dataset) ## ----eval = FALSE------------------------------------------------------------- # est <- ML(Goosefish, ncp = 2) ## ----echo = FALSE------------------------------------------------------------- est <- ML(Goosefish, ncp = 2, figure = FALSE) ## ----eval = FALSE------------------------------------------------------------- # plot(est) ## ----echo = FALSE, fig.width = 5---------------------------------------------- par(mar = c(4, 4, 0.5, 0.5)) plot(est, residuals = FALSE) ## ----------------------------------------------------------------------------- summary(est) ## ----eval = FALSE------------------------------------------------------------- # model1 <- ML(Goosefish, ncp = 0) # model2 <- ML(Goosefish, ncp = 1) # model3 <- ML(Goosefish, ncp = 2) ## ----echo = FALSE------------------------------------------------------------- model1 <- ML(Goosefish, ncp = 0, figure = FALSE) model2 <- ML(Goosefish, ncp = 1, figure = FALSE) model3 <- ML(Goosefish, ncp = 2, figure = FALSE) ## ----eval = FALSE------------------------------------------------------------- # compare_models(model1, model2, model3) ## ----fig.width = 5, echo = FALSE---------------------------------------------- par(mar = c(2,4,1,1)) compare_models(model1, model2, model3) ## ----eval = FALSE------------------------------------------------------------- # modal_length(new.dataset, breaks = seq(80, 830, 10)) ## ----message = FALSE, echo = FALSE, fig.width = 5----------------------------- par(mar = c(4,4,1,1)) new.dataset2 <- new.dataset new.dataset2@Lc <- numeric(0) z = modal_length(new.dataset2, breaks = seq(80, 830, 10)) ## ----echo = FALSE, fig.width = 4.5-------------------------------------------- par(mar = c(4, 4, 0.5, 0.5)) zz <- profile_ML(Goosefish, ncp = 1) ## ----echo = FALSE, fig.height = 4, fig.width = 5------------------------------ par(mar = c(4, 4, 1.5, 0.5)) zz <- profile_ML(Goosefish, ncp = 2, color = FALSE) ## ----echo = FALSE------------------------------------------------------------- data(MuttonSnapper) ## ----------------------------------------------------------------------------- data(PRSnapper) typeof(PRSnapper) ## ----eval = FALSE------------------------------------------------------------- # MLmulti(PRSnapper, ncp = 1, model = "MSM1") ## ----eval = FALSE------------------------------------------------------------- # res <- MLmulti(PRSnapper, ncp = 1, model = "MSM1") # names(res@opt$par) ## ----eval = FALSE------------------------------------------------------------- # data(Nephrops) # Nephrops@Effort # Nephrops@vbt0 <- 0 # MLeffort(Nephrops, start = list(q = 0.1, M = 0.2), n_age = 24) ## ----echo = FALSE------------------------------------------------------------- data(Nephrops) ## ----eval = FALSE------------------------------------------------------------- # MLeffort(Nephrops, start = list(q = 0.1, M = 0.3), n_age = 24, n_season = 1, obs_season = 1, timing = 0.5) ## ----eval = FALSE------------------------------------------------------------- # Nephrops@M <- 0.3 # MLeffort(Nephrops, start = list(q = 0.1), n_age = 24, estimate.M = FALSE)