dualPC.R contains the R code for the main functions. dualPC_sim.R contains an example run with the different PC versions; it calls dualPC_algs.R which contains the individual runs. DAGfns.R contains functions for generating data and comparing the results. sims_collated/ contains the collected data from the simulations; plots/ contains the generated plots and the code used to create them.
dualPC.R contains the R code for the main functions.
Overview
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