?> ¿Para qué se utiliza el parámetro `seed`?... - Aide
QUESTION / RÉPONSE

¿Para qué se utiliza el parámetro `seed`?

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Réponse

El parámetro `seed` especifica una semilla para iniciar el generador de números pseudoaleatorios, asegurando la reproducibilidad de los resultados. El valor predeterminado es 0.
Action technique liée

Voir la documentation de bartScore

Voir l'Action
Thématiques

Voir aussi

bartProbit
bart

The bartProbit action fits a probit Bayesian Additive Regression Trees (BART) model to data where the response variable is binary. This is particularly useful for classification problems where the outcome is one of two categories (e.g., yes/no, success/failure, 0/1). The probit model assumes that the binary outcome is the result of an unobserved continuous latent variable following a standard normal distribution. The BART model itself is a non-parametric, ensemble method that combines multiple simple regression trees to create a powerful predictive model, offering a flexible alternative to traditional parametric models.

bartScore
bart

The bartScore action scores a data table using a previously fitted Bayesian additive regression trees (BART) model. It generates predicted values, residuals, and confidence limits for each observation in the input data.

bartGauss
bart

The bartGauss action fits Bayesian additive regression trees (BART) models for a continuous response variable that is assumed to follow a normal distribution. BART is a non-parametric regression method that uses a sum of regression trees to model the relationship between predictors and a response. It is particularly effective for capturing complex, non-linear relationships and interactions in the data without requiring pre-specification of the model form. The method is Bayesian, meaning it uses priors for the model parameters and provides a full posterior distribution for predictions, allowing for robust uncertainty quantification.