665 lines
20 KiB
R
665 lines
20 KiB
R
# ============================================================================
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# MODÈLES Q-LEARNING EMBOÎTÉS POUR DÉCISION AVEC ÉVÉNEMENTS RARES
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# ============================================================================
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library(tidyverse)
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library(DEoptim)
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library(numDeriv)
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# foreach future
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library(foreach)
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library(doFuture)
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library(future.callr)
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plan(callr, workers = future::availableCores(omit = 1L))
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# ============================================================================
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# FONCTION GÉNÉRIQUE DE Q-LEARNING
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# ============================================================================
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qlearning_generic <- function(params, data, model_config, return_negLL = TRUE) {
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# Normalise noms de colonnes et conversion des choix en indices numériques
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if (!("button_value" %in% names(data)) && ("reward" %in% names(data))) {
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data$button_value <- data$reward
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}
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if (!("button_name" %in% names(data))) {
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if ("option" %in% names(data)) {
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data$button_name <- data$option
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} else if (("choice" %in% names(data)) && is.character(data$choice)) {
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data$button_name <- data$choice
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}
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}
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# If 'choice' is numeric (prepared data), use it directly
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if (("choice" %in% names(data)) && is.numeric(data$choice)) {
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data$choice_idx <- data$choice
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} else if (is.factor(data$button_name) || is.character(data$button_name)) {
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choice_levels <- c("antifragile", "fragile", "robuste", "vulnerable")
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data$choice_idx <- match(as.character(data$button_name), choice_levels)
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} else if ("button_name" %in% names(data)) {
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data$choice_idx <- data$button_name
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}
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# Robustness: if mapping produced NAs, try remapping or fail fast with large penalty
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if (any(is.na(data$choice_idx))) {
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known_levels <- c("antifragile", "fragile", "robuste", "vulnerable")
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if (!any(is.na(match(as.character(data$button_name), known_levels)))) {
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data$choice_idx <- match(as.character(data$button_name), known_levels)
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} else {
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if (return_negLL) {
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return(1e6)
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} else {
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return(-1e6)
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}
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}
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}
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n_arms <- 4
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n_trials <- nrow(data)
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# Extraction des paramètres selon la configuration du modèle
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param_idx <- 1
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# ALPHA(S)
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if (model_config$n_alpha == 1) {
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alpha_loss <- alpha_gain <- alpha_BS <- alpha_JP <- plogis(params[param_idx])
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param_idx <- param_idx + 1
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} else if (model_config$n_alpha == 2) {
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alpha_loss <- plogis(params[param_idx])
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alpha_gain <- plogis(params[param_idx + 1])
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alpha_BS <- alpha_loss
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alpha_JP <- alpha_gain
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param_idx <- param_idx + 2
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} else if (model_config$n_alpha == 4) {
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alpha_loss <- plogis(params[param_idx])
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alpha_gain <- plogis(params[param_idx + 1])
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alpha_BS <- plogis(params[param_idx + 2])
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alpha_JP <- plogis(params[param_idx + 3])
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param_idx <- param_idx + 4
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}
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# FORGET(S)
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if (model_config$n_forget == 1) {
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forget <- rep(plogis(params[param_idx]), n_arms)
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param_idx <- param_idx + 1
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} else if (model_config$n_forget == 4) {
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forget <- plogis(params[param_idx:(param_idx + 3)])
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param_idx <- param_idx + 4
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}
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# LAMBDA(S)
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if (model_config$n_lambda == 1) {
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lambda <- rep(exp(params[param_idx]), n_arms)
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param_idx <- param_idx + 1
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} else if (model_config$n_lambda == 4) {
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lambda <- exp(params[param_idx:(param_idx + 3)])
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param_idx <- param_idx + 4
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}
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# RHO(S) - Biais pour événements rares
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if (model_config$has_rho) {
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rho_BS <- params[param_idx] # BS avoidance
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rho_JP <- params[param_idx + 1] # JP seeking
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param_idx <- param_idx + 2
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} else {
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rho_BS <- rho_JP <- 0
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}
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# Detect if rare events actually occur in this participant's data
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has_BS_seen <- any(data$button_value == -3000, na.rm = TRUE)
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has_JP_seen <- any(data$button_value == 3000, na.rm = TRUE)
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# If an REE type was never observed, neutralize its rho to avoid non-identifiability
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if (model_config$has_rho) {
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if (!has_BS_seen) rho_BS <- 0
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if (!has_JP_seen) rho_JP <- 0
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}
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# Initialisation des Q-values
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Q <- rep(0, n_arms)
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log_lik <- 0
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for (t in 1:n_trials) {
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choice <- data$choice_idx[t]
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reward <- data$button_value[t]
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# Calcul des valeurs subjectives V(t)
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V <- lambda * Q
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# Ajout des biais pour événements rares si le modèle le permet
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if (model_config$has_rho) {
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# Identification des options susceptibles de produire BS/JP
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# antifragile (1) = JP possible, fragile (2) = BS possible
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# vulnerable (4) = BS et JP possibles
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V[1] <- V[1] + rho_JP # antifragile
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V[2] <- V[2] + rho_BS # fragile
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V[4] <- V[4] + rho_BS + rho_JP # vulnerable
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}
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# Softmax
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V_max <- max(V)
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exp_V <- exp(V - V_max)
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probs <- exp_V / sum(exp_V)
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probs <- pmax(probs, 1e-10)
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probs <- probs / sum(probs)
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# Log-likelihood
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log_lik <- log_lik + log(probs[choice])
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# Mise à jour Q-learning
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Q_new <- Q
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# Choix de l'alpha approprié
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# if (reward == -3000) {
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# alpha_used <- alpha_BS
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# } else if (reward == 3000) {
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# alpha_used <- alpha_JP
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# } else if (reward < 0) {
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# alpha_used <- alpha_loss
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# } else {
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# alpha_used <- alpha_gain
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# }
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# Fix when there are no extreme rewards while taking them into account
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if (is.na(reward)) {
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# skip trials with missing reward
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next
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} else if (reward == -3000) {
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alpha_used <- alpha_BS
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} else if (reward == 3000) {
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alpha_used <- alpha_JP
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} else if (reward < 0) {
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alpha_used <- alpha_loss
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} else {
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alpha_used <- alpha_gain
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}
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# Option choisie : Q(t+1) = Q(t) + alpha * (r(t) - Q(t))
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Q_new[choice] <- Q[choice] + alpha_used * (reward - Q[choice])
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# Options non choisies : Q(t+1) = Q(t) * (1 - f)
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not_chosen <- setdiff(1:n_arms, choice)
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Q_new[not_chosen] <- Q[not_chosen] * (1 - forget[not_chosen])
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Q <- Q_new
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}
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if (return_negLL) {
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return(-log_lik)
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} else {
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return(log_lik)
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}
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}
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# ============================================================================
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# CONFIGURATIONS DES MODÈLES EMBOÎTÉS
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# ============================================================================
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get_model_configs <- function() {
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list(
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HOMOGENEOUS = list(
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name = "HOMOGENEOUS",
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n_alpha = 1,
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n_forget = 1,
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n_lambda = 1,
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has_rho = FALSE,
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n_params = 3,
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param_names = c("alpha", "forget", "lambda"),
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lower = c(-5, -5, -3),
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upper = c(5, 5, 3)
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),
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GAIN_LOSS = list(
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name = "GAIN_LOSS",
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n_alpha = 2,
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n_forget = 1,
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n_lambda = 1,
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has_rho = FALSE,
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n_params = 4,
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param_names = c("alpha_loss", "alpha_gain", "forget", "lambda"),
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lower = c(-5, -5, -5, -3),
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upper = c(5, 5, 5, 3)
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),
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BIASED = list(
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name = "BIASED",
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n_alpha = 2,
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n_forget = 4,
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n_lambda = 4,
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has_rho = FALSE,
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n_params = 10,
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param_names = c(
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"alpha_loss", "alpha_gain",
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"forget_1", "forget_2", "forget_3", "forget_4",
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"lambda_1", "lambda_2", "lambda_3", "lambda_4"
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),
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lower = c(-5, -5, rep(-5, 4), rep(-3, 4)),
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upper = c(5, 5, rep(5, 4), rep(3, 4))
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),
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REE_BIASED_SIMPLE = list(
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name = "REE_BIASED_SIMPLE",
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n_alpha = 2,
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n_forget = 1,
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n_lambda = 1,
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has_rho = TRUE,
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n_params = 6,
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param_names = c(
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"alpha_loss", "alpha_gain", "forget", "lambda",
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"rho_BS", "rho_JP"
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),
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lower = c(-5, -5, -5, -3, -10, -10),
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upper = c(5, 5, 5, 3, 10, 10)
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),
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REE_BIASED_COMPLEX = list(
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name = "REE_BIASED_COMPLEX",
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n_alpha = 2,
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n_forget = 4,
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n_lambda = 4,
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has_rho = TRUE,
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n_params = 12,
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param_names = c(
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"alpha_loss", "alpha_gain",
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"forget_1", "forget_2", "forget_3", "forget_4",
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"lambda_1", "lambda_2", "lambda_3", "lambda_4",
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"rho_BS", "rho_JP"
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),
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lower = c(-5, -5, rep(-5, 4), rep(-3, 4), -10, -10),
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upper = c(5, 5, rep(5, 4), rep(3, 4), 10, 10)
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),
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REE_LEARNING_SIMPLE = list(
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name = "REE_LEARNING_SIMPLE",
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n_alpha = 4,
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n_forget = 1,
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n_lambda = 1,
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has_rho = FALSE,
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n_params = 6,
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param_names = c(
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"alpha_loss", "alpha_gain", "alpha_BS", "alpha_JP",
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"forget", "lambda"
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),
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lower = c(-5, -5, -5, -5, -5, -3),
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upper = c(5, 5, 5, 5, 5, 3)
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),
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REE_LEARNING_COMPLEX = list(
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name = "REE_LEARNING_COMPLEX",
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n_alpha = 4,
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n_forget = 4,
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n_lambda = 4,
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has_rho = FALSE,
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n_params = 12,
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param_names = c(
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"alpha_loss", "alpha_gain", "alpha_BS", "alpha_JP",
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"forget_1", "forget_2", "forget_3", "forget_4",
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"lambda_1", "lambda_2", "lambda_3", "lambda_4"
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),
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lower = c(-5, -5, -5, -5, rep(-5, 4), rep(-3, 4)),
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upper = c(5, 5, 5, 5, rep(5, 4), rep(3, 4))
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),
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REE_LEARNING_BIASED_SIMPLE = list(
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name = "REE_LEARNING_BIASED_SIMPLE",
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n_alpha = 4,
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n_forget = 1,
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n_lambda = 1,
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has_rho = TRUE,
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n_params = 8,
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param_names = c(
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"alpha_loss", "alpha_gain", "alpha_BS", "alpha_JP",
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"forget", "lambda", "rho_BS", "rho_JP"
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),
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lower = c(-5, -5, -5, -5, -5, -3, -10, -10),
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upper = c(5, 5, 5, 5, 5, 3, 10, 10)
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),
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REE_LEARNING_BIASED_COMPLEX = list(
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name = "REE_LEARNING_BIASED_COMPLEX",
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n_alpha = 4,
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n_forget = 4,
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n_lambda = 4,
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has_rho = TRUE,
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n_params = 14,
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param_names = c(
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"alpha_loss", "alpha_gain", "alpha_BS", "alpha_JP",
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"forget_1", "forget_2", "forget_3", "forget_4",
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"lambda_1", "lambda_2", "lambda_3", "lambda_4",
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"rho_BS", "rho_JP"
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),
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lower = c(-5, -5, -5, -5, rep(-5, 4), rep(-3, 4), -10, -10),
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upper = c(5, 5, 5, 5, rep(5, 4), rep(3, 4), 10, 10)
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)
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)
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}
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# ============================================================================
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# ESTIMATION POUR UN PARTICIPANT
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# ============================================================================
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fit_participant <- function(participant_data, model_config, n_runs = 5) {
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# Detect presence of rare events for this participant
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has_BS_seen <- any(participant_data$button_value == -3000, na.rm = TRUE)
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has_JP_seen <- any(participant_data$button_value == 3000, na.rm = TRUE)
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all_results <- vector("list", n_runs)
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all_results <- foreach(run = 1:n_runs) %dofuture% {
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set.seed(1000 * as.numeric(factor(model_config$name)) + run)
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result <- DEoptim(
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fn = qlearning_generic,
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lower = model_config$lower,
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upper = model_config$upper,
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data = participant_data,
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model_config = model_config,
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control = DEoptim.control(
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itermax = 200,
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trace = FALSE,
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parallelType = 0,
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NP = max(50, model_config$n_params * 10)
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)
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)
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list(
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params = result$optim$bestmem,
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negLL = result$optim$bestval
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)
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}
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# Sélection du meilleur run
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all_negLL <- sapply(all_results, function(x) x$negLL)
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best_run <- which.min(all_negLL)
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negLL_sd <- sd(all_negLL)
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negLL_range <- max(all_negLL) - min(all_negLL)
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params <- all_results[[best_run]]$params
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negLL <- all_results[[best_run]]$negLL
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# Calcul de la Hessienne
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hessian_result <- tryCatch(
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{
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numDeriv::hessian(qlearning_generic, params,
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data = participant_data,
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model_config = model_config
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)
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},
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error = function(e) NULL
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)
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hessian_positive_definite <- FALSE
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param_se <- rep(NA, model_config$n_params)
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if (!is.null(hessian_result)) {
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eigenvalues <- eigen(hessian_result, only.values = TRUE)$values
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hessian_positive_definite <- all(eigenvalues > 0)
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if (hessian_positive_definite) {
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param_vcov <- tryCatch(solve(hessian_result), error = function(e) NULL)
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if (!is.null(param_vcov)) {
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param_se <- sqrt(diag(param_vcov))
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}
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}
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}
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# Création du tibble de résultats
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result_df <- tibble(
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model = model_config$name,
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n_params = model_config$n_params,
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negLL = negLL,
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AIC = 2 * negLL + 2 * model_config$n_params,
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BIC = 2 * negLL + model_config$n_params * log(nrow(participant_data)),
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convergence_sd = negLL_sd,
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convergence_range = negLL_range,
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hessian_positive_definite = hessian_positive_definite,
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converged = negLL_range < 1
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)
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# Indicateurs d'événements rares observés (utile pour interprétation des rhos/alphas)
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result_df$has_BS_seen <- has_BS_seen
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result_df$has_JP_seen <- has_JP_seen
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# Ajout des paramètres estimés
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for (i in 1:model_config$n_params) {
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result_df[[model_config$param_names[i]]] <- params[i]
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result_df[[paste0("se_", model_config$param_names[i])]] <- param_se[i]
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}
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return(result_df)
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}
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# ============================================================================
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# ESTIMATION POUR TOUS LES PARTICIPANTS
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# ============================================================================
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fit_all_participants_all_models <- function(data, models_to_fit = NULL) {
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model_configs <- get_model_configs()
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if (!is.null(models_to_fit)) {
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model_configs <- model_configs[models_to_fit]
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}
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participants <- unique(data$participant_id)
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all_results <- list()
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for (model_name in names(model_configs)) {
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cat("\n=== Fitting model:", model_name, "===\n")
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model_config <- model_configs[[model_name]]
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model_results <- map_df(participants, function(pid) {
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cat(" Participant", pid, "\n")
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participant_data <- data %>%
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filter(participant_id == pid) %>%
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arrange(trial)
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fit <- fit_participant(participant_data, model_config)
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fit %>% mutate(participant_id = pid, .before = 1)
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})
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all_results[[model_name]] <- model_results
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}
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return(all_results)
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}
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# ============================================================================
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# COMPARAISON DES MODÈLES EMBOÎTÉS
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# ============================================================================
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compare_nested_models <- function(all_results) {
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# Comparaison globale
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global_comparison <- map_df(names(all_results), function(model_name) {
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results <- all_results[[model_name]]
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tibble(
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model = model_name,
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n_params = unique(results$n_params),
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n_converged = sum(results$converged),
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mean_negLL = mean(results$negLL),
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total_negLL = sum(results$negLL),
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total_AIC = sum(results$AIC),
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total_BIC = sum(results$BIC),
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mean_convergence_range = mean(results$convergence_range)
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)
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}) %>%
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arrange(total_BIC)
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cat("\n=== COMPARAISON GLOBALE DES MODÈLES ===\n")
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print(global_comparison)
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# Meilleur modèle par participant (BIC)
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best_models_per_participant <- map_df(names(all_results), function(model_name) {
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all_results[[model_name]] %>%
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|
select(participant_id, model, BIC, converged)
|
|
}) %>%
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|
group_by(participant_id) %>%
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|
slice_min(BIC, n = 1) %>%
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|
ungroup()
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|
|
|
cat("\n=== MEILLEUR MODÈLE PAR PARTICIPANT (BIC) ===\n")
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|
print(table(best_models_per_participant$model))
|
|
|
|
# Comparaison par paires de modèles emboîtés
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|
cat("\n=== TESTS LRT POUR MODÈLES EMBOÎTÉS ===\n")
|
|
|
|
# Exemples de paires emboîtées
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|
nested_pairs <- list(
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|
c("HOMOGENEOUS", "GAIN_LOSS"),
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|
c("GAIN_LOSS", "BIASED"),
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|
c("GAIN_LOSS", "REE_BIASED_SIMPLE"),
|
|
c("REE_BIASED_SIMPLE", "REE_BIASED_COMPLEX"),
|
|
c("GAIN_LOSS", "REE_LEARNING_SIMPLE"),
|
|
c("REE_LEARNING_SIMPLE", "REE_LEARNING_COMPLEX"),
|
|
c("REE_LEARNING_SIMPLE", "REE_LEARNING_BIASED_SIMPLE"),
|
|
c("REE_LEARNING_BIASED_SIMPLE", "REE_LEARNING_BIASED_COMPLEX")
|
|
)
|
|
|
|
lrt_results <- map_df(nested_pairs, function(pair) {
|
|
simple_model <- pair[1]
|
|
complex_model <- pair[2]
|
|
|
|
if (simple_model %in% names(all_results) && complex_model %in% names(all_results)) {
|
|
simple_res <- all_results[[simple_model]]
|
|
complex_res <- all_results[[complex_model]]
|
|
|
|
# LRT par participant
|
|
lrt_df <- simple_res %>%
|
|
select(participant_id, negLL_simple = negLL, converged_simple = converged) %>%
|
|
left_join(
|
|
complex_res %>% select(participant_id, negLL_complex = negLL, converged_complex = converged),
|
|
by = "participant_id"
|
|
) %>%
|
|
filter(converged_simple, converged_complex) %>%
|
|
mutate(
|
|
LR_stat = 2 * (negLL_simple - negLL_complex),
|
|
df_diff = unique(complex_res$n_params) - unique(simple_res$n_params),
|
|
p_value = pchisq(LR_stat, df = df_diff, lower.tail = FALSE),
|
|
significant = p_value < 0.05
|
|
)
|
|
|
|
tibble(
|
|
simple_model = simple_model,
|
|
complex_model = complex_model,
|
|
n_participants = nrow(lrt_df),
|
|
pct_significant = mean(lrt_df$significant) * 100,
|
|
mean_LR = mean(lrt_df$LR_stat),
|
|
median_p = median(lrt_df$p_value)
|
|
)
|
|
}
|
|
})
|
|
|
|
print(lrt_results)
|
|
|
|
list(
|
|
global_comparison = global_comparison,
|
|
best_models_per_participant = best_models_per_participant,
|
|
lrt_results = lrt_results,
|
|
all_results = all_results
|
|
)
|
|
}
|
|
|
|
# ============================================================================
|
|
# VISUALISATION
|
|
# ============================================================================
|
|
|
|
plot_model_comparison <- function(comparison_results) {
|
|
require(ggplot2)
|
|
require(patchwork)
|
|
|
|
# 1. Comparaison BIC globale
|
|
p1 <- comparison_results$global_comparison %>%
|
|
mutate(model = fct_reorder(model, total_BIC)) %>%
|
|
ggplot(aes(x = model, y = total_BIC, fill = model)) +
|
|
geom_col() +
|
|
coord_flip() +
|
|
theme_minimal() +
|
|
labs(
|
|
title = "Comparaison globale des modèles (BIC)",
|
|
subtitle = "Plus bas = meilleur"
|
|
) +
|
|
theme(legend.position = "none")
|
|
|
|
# 2. Meilleur modèle par participant
|
|
p2 <- comparison_results$best_models_per_participant %>%
|
|
count(model) %>%
|
|
mutate(model = fct_reorder(model, n)) %>%
|
|
ggplot(aes(x = model, y = n, fill = model)) +
|
|
geom_col() +
|
|
coord_flip() +
|
|
theme_minimal() +
|
|
labs(
|
|
title = "Meilleur modèle par participant",
|
|
y = "Nombre de participants"
|
|
) +
|
|
theme(legend.position = "none")
|
|
|
|
# 3. Tests LRT
|
|
if (nrow(comparison_results$lrt_results) > 0) {
|
|
p3 <- comparison_results$lrt_results %>%
|
|
mutate(comparison = paste(simple_model, "→", complex_model)) %>%
|
|
ggplot(aes(
|
|
x = fct_reorder(comparison, pct_significant),
|
|
y = pct_significant
|
|
)) +
|
|
geom_col(fill = "steelblue") +
|
|
geom_hline(yintercept = 50, linetype = "dashed", color = "red") +
|
|
coord_flip() +
|
|
theme_minimal() +
|
|
labs(
|
|
title = "Tests LRT entre modèles emboîtés",
|
|
y = "% participants avec p < 0.05",
|
|
x = "Comparaison"
|
|
)
|
|
} else {
|
|
p3 <- ggplot() +
|
|
theme_void()
|
|
}
|
|
|
|
# 4. Convergence par modèle
|
|
p4 <- map_df(names(comparison_results$all_results), function(model_name) {
|
|
comparison_results$all_results[[model_name]] %>%
|
|
select(model, convergence_range, converged)
|
|
}) %>%
|
|
ggplot(aes(x = model, y = convergence_range, fill = converged)) +
|
|
geom_boxplot() +
|
|
scale_y_log10() +
|
|
coord_flip() +
|
|
theme_minimal() +
|
|
labs(
|
|
title = "Convergence par modèle",
|
|
y = "Range negLL (log scale)"
|
|
)
|
|
|
|
(p1 | p2) / (p3 | p4)
|
|
}
|
|
|
|
# ============================================================================
|
|
# EXEMPLE D'UTILISATION
|
|
# ============================================================================
|
|
|
|
# Charger vos données
|
|
# data <- read_csv("votre_fichier.csv")
|
|
# Colonnes requises: participant_id, trial, choice, reward
|
|
source("load_data.R")
|
|
|
|
# Estimation de tous les modèles
|
|
# all_results <- fit_all_participants_all_models(data)
|
|
# fit_all_participants_all_models(data %>% filter(participant_id == "qfmtmjjy"))
|
|
# Ou seulement certains modèles
|
|
all_results <- fit_all_participants_all_models(
|
|
data,
|
|
models_to_fit = c(
|
|
"HOMOGENEOUS", "GAIN_LOSS", "REE_BIASED_SIMPLE",
|
|
"REE_LEARNING_SIMPLE", "REE_LEARNING_BIASED_SIMPLE"
|
|
)
|
|
)
|
|
|
|
# Comparaison
|
|
# comparison <- compare_nested_models(all_results)
|
|
|
|
# Visualisation
|
|
# plot_model_comparison(comparison)
|
|
|
|
# Sauvegarder les résultats
|
|
# for (model_name in names(all_results)) {
|
|
# write_csv(all_results[[model_name]],
|
|
# paste0("results_", model_name, ".csv"))
|
|
# }
|
|
# write_csv(comparison$global_comparison, "global_comparison.csv")
|
|
# write_csv(comparison$best_models_per_participant, "best_models.csv")
|