Εντοπίστηκε ένα σφάλμα στη λειτουργία της ΠΥΞΙΔΑΣ όταν χρησιμοποιείται μέσω του προγράμματος περιήγησης Safari. Μέχρι να αποκατασταθεί το πρόβλημα, προτείνουμε τη χρήση εναλλακτικού browser όπως ο Chrome ή ο Firefox. A bug has been identified in the operation of the PYXIDA platform when accessed via the Safari browser. Until the problem is resolved, we recommend using an alternative browser such as Chrome or Firefox.
 

Bayesian variable selection and shrinkage using Lasso methods

Μικρογραφία εικόνας

Ημερομηνία

Συγγραφείς

Katsarps, Michail

Τίτλος Εφημερίδας

Περιοδικό ISSN

Τίτλος τόμου

Εκδότης

Επιβλέπων

Διαθέσιμο από

Περίληψη

Least squares method is the usual way of treating a multiple regression problem. But not all available predictors are meaningful for the response variable. Poor performance in terms of prediction accuracy and interpretation are problems arising when overfitting the data. Variable selection methods improve interpretation and prediction by producing models of lower dimension, while shrinkage techniques reduce the variance of predicted values by shrinking predictors’ coefficients towards zero.LASSO performs both shrinkage and variable selection by shrinking some coefficients towards zero and setting others exactly equal to zero. A tuning parameter is involved, which controls the shrinkage procedure while k-fold Cross Validation is used to specify its optimal value. Additionally, the lasso estimates can be defined as a Bayesian posterior mode when regression coefficients are placed under independent double-exponential (Laplace) priors.

Περιγραφή

Λέξεις-κλειδιά

Lasso methods, Bayesian model, Variables

Παραπομπή

Άδεια Creative Commons