# $Id: kinfit.R 116 2011-06-14 08:46:47Z kati $ # Copyright (C) 2008-2010 Johannes Ranke # Contact: mkin-devel@lists.berlios.de # This file is part of the R package kinfit # kinfit 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 3 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 kinfit <- function(kindata, kinmodels = c("SFO"), parent.0.user = NA, parent.0.fixed = FALSE, start.SFO = list(parent.0 = NA, k = NA), start.FOMC = list(parent.0 = NA, alpha = NA, beta = NA), start.DFOP = list(parent.0 = NA, k1 = NA, k2 = NA, g = NA), start.HS = list(parent.0 = NA, k1 = NA, k2 = NA, tb = NA), algorithm = "default") { kindata <- subset(kindata, !is.na(kindata$parent)) kinfits <- list() if (!is.na(parent.0.user)) { start.SFO$parent.0 = parent.0.user start.FOMC$parent.0 = parent.0.user start.DFOP$parent.0 = parent.0.user start.HS$parent.0 = parent.0.user } lmlogged = lm(log(parent) ~ t, data = kindata) k.est = -coef(lmlogged)[["t"]] for (kinmodel in kinmodels) { if (kinmodel == "SFO") { if (is.na(start.SFO$parent.0)) { start.SFO$parent.0 = max(kindata$parent) } if (is.na(start.SFO$k)) { start.SFO$k = - coef(lmlogged)[["t"]] } if (parent.0.fixed) { start.SFO = start.SFO[-1] kinfits[[kinmodel]] = try( nls(parent ~ SFO(t, parent.0.user, k), data = kindata, model = TRUE, start = start.SFO, algorithm = algorithm), silent=TRUE) } else { kinfits[[kinmodel]] = try( nls(parent ~ SFO(t, parent.0, k), data = kindata, model = TRUE, start = start.SFO, algorithm = algorithm), silent=TRUE) } k.est = coef(kinfits$SFO)[["k"]] } if (kinmodel == "FOMC") { if (is.na(start.FOMC$parent.0)) { start.FOMC$parent.0 = max(kindata$parent) } if (is.na(start.FOMC$alpha)) { start.FOMC$alpha = 1 } if (is.na(start.FOMC$beta)) { start.FOMC$beta = start.FOMC$alpha / k.est } if (parent.0.fixed) { start.FOMC = list(alpha = start.FOMC$alpha, beta = start.FOMC$beta) kinfits[[kinmodel]] = try( nls(parent ~ FOMC(t, parent.0.user, alpha, beta), data = kindata, model = TRUE, start = start.FOMC, algorithm = algorithm), silent=TRUE) } else { kinfits[[kinmodel]] = try( nls(parent ~ FOMC(t, parent.0, alpha, beta), data = kindata, model = TRUE, start = start.FOMC, algorithm = algorithm), silent=TRUE) } } if (kinmodel == "DFOP") { if (is.na(start.DFOP$parent.0)) { start.DFOP$parent.0 = max(kindata$parent) } if (is.na(start.DFOP$k1)) { start.DFOP$k1 = k.est * 2 } if (is.na(start.DFOP$k2)) { start.DFOP$k2 = k.est / 2 } if (is.na(start.DFOP$g)) { start.DFOP$g = 0.5 } if (parent.0.fixed) { start.DFOP = list(k1 = start.DFOP$k1, k2 = start.DFOP$k2, g = start.DFOP$g) kinfits[[kinmodel]] = try( nls(parent ~ DFOP(t, parent.0.user, k1, k2, g), data = kindata, model = TRUE, start = start.DFOP, algorithm = algorithm), silent=TRUE) }else{ kinfits[[kinmodel]] = try( nls(parent ~ DFOP(t, parent.0, k1, k2, g), data = kindata, model = TRUE, start = start.DFOP, algorithm = algorithm), silent=TRUE) } } if (kinmodel == "HS") { if (is.na(start.HS$parent.0)) { start.HS$parent.0 = max(kindata$parent) } if (is.na(start.HS$k1)) { start.HS$k1 = k.est } if (is.na(start.HS$k2)) { start.HS$k2 = k.est / 10 } if (is.na(start.HS$tb)) { start.HS$tb = 0.05 * max(kindata$t) } if (parent.0.fixed) { start.HS = list(k1 = start.HS$k1, k2 = start.HS$k2, tb = start.HS$tb) kinfits[[kinmodel]] = try( nls(parent ~ HS(t, parent.0.user, k1, k2, tb), data = kindata, model = TRUE, start = start.HS, algorithm = algorithm), silent=TRUE) }else{ kinfits[[kinmodel]] = try( nls(parent ~ HS(t, parent.0, k1, k2, tb), data = kindata, model = TRUE, start = start.HS, algorithm = algorithm), silent=TRUE) } } } return(kinfits) }