“…Regularization involves the introduction of a bias in the parameter estimates with the aim of reducing their variance and, concomitantly, reducing the condition number of the problem [10]. Popular regularization techniques are i) the Tikhonov regularization [12,13], ii) the truncated singular value decomposition [9,12], and iii) the parameter subset selection [9,11,12]. Other studies recommend the use of reparametrization (RP) to address the practical identifiability problem of sloppy models [14 -19].…”