| hBayesDM-package | Hierarchical Bayesian Modeling of Decision-Making Tasks |
| alt_delta | Rescorla-Wagner (Delta) Model |
| alt_gamma | Rescorla-Wagner (Gamma) Model |
| bandit2arm_delta | Rescorla-Wagner (Delta) Model |
| bandit4arm2_kalman_filter | Kalman Filter |
| bandit4arm_2par_lapse | 3 Parameter Model, without C (choice perseveration), R (reward sensitivity), and P (punishment sensitivity). But with xi (noise) |
| bandit4arm_4par | 4 Parameter Model, without C (choice perseveration) |
| bandit4arm_lapse | 5 Parameter Model, without C (choice perseveration) but with xi (noise) |
| bandit4arm_lapse_decay | 5 Parameter Model, without C (choice perseveration) but with xi (noise). Added decay rate (Niv et al., 2015, J. Neuro). |
| bandit4arm_singleA_lapse | 4 Parameter Model, without C (choice perseveration) but with xi (noise). Single learning rate both for R and P. |
| bart_ewmv | Exponential-Weight Mean-Variance Model |
| bart_par4 | Re-parameterized version of BART model with 4 parameters |
| cgt_cm | Cumulative Model |
| choiceRT_ddm | Drift Diffusion Model |
| choiceRT_ddm_single | Drift Diffusion Model |
| cra_exp | Exponential Subjective Value Model |
| cra_linear | Linear Subjective Value Model |
| dbdm_prob_weight | Probability Weight Function |
| dd_cs | Constant-Sensitivity (CS) Model |
| dd_cs_single | Constant-Sensitivity (CS) Model |
| dd_exp | Exponential Model |
| dd_hyperbolic | Hyperbolic Model |
| dd_hyperbolic_single | Hyperbolic Model |
| estimate_mode | Function to estimate mode of MCMC samples |
| extract_ic | Extract Model Comparison Estimates |
| gng_m1 | RW + noise |
| gng_m2 | RW + noise + bias |
| gng_m3 | RW + noise + bias + pi |
| gng_m4 | RW (rew/pun) + noise + bias + pi |
| hBayesDM | Hierarchical Bayesian Modeling of Decision-Making Tasks |
| HDIofMCMC | Compute Highest-Density Interval |
| igt_orl | Outcome-Representation Learning Model |
| igt_pvl_decay | Prospect Valence Learning (PVL) Decay-RI |
| igt_pvl_delta | Prospect Valence Learning (PVL) Delta |
| igt_vpp | Value-Plus-Perseverance |
| multiplot | Function to plot multiple figures |
| peer_ocu | Other-Conferred Utility (OCU) Model |
| plot.hBayesDM | General Purpose Plotting for hBayesDM. This function plots hyper parameters. |
| plotDist | Plots the histogram of MCMC samples. |
| plotHDI | Plots highest density interval (HDI) from (MCMC) samples and prints HDI in the R console. HDI is indicated by a red line. Based on John Kruschke's codes. |
| plotInd | Plots individual posterior distributions, using the stan_plot function of the rstan package |
| printFit | Print model-fits (mean LOOIC or WAIC values in addition to Akaike weights) of hBayesDM Models |
| prl_ewa | Experience-Weighted Attraction Model |
| prl_fictitious | Fictitious Update Model |
| prl_fictitious_multipleB | Fictitious Update Model |
| prl_fictitious_rp | Fictitious Update Model, with separate learning rates for positive and negative prediction error (PE) |
| prl_fictitious_rp_woa | Fictitious Update Model, with separate learning rates for positive and negative prediction error (PE), without alpha (indecision point) |
| prl_fictitious_woa | Fictitious Update Model, without alpha (indecision point) |
| prl_rp | Reward-Punishment Model |
| prl_rp_multipleB | Reward-Punishment Model |
| pst_gainloss_Q | Gain-Loss Q Learning Model |
| pst_Q | Q Learning Model |
| ra_noLA | Prospect Theory, without loss aversion (LA) parameter |
| ra_noRA | Prospect Theory, without risk aversion (RA) parameter |
| ra_prospect | Prospect Theory |
| rdt_happiness | Happiness Computational Model |
| rhat | Function for extracting Rhat values from an hBayesDM object |
| task2AFC_sdt | Signal detection theory model |
| ts_par4 | Hybrid Model, with 4 parameters |
| ts_par6 | Hybrid Model, with 6 parameters |
| ts_par7 | Hybrid Model, with 7 parameters (original model) |
| ug_bayes | Ideal Observer Model |
| ug_delta | Rescorla-Wagner (Delta) Model |
| wcs_sql | Sequential Learning Model |