bartz.mcmcloop.MainTrace¶
- class bartz.mcmcloop.MainTrace(has_chains, mesh, grow_prop_count, grow_acc_count, prune_prop_count, prune_acc_count, error_cov_inv, theta, log_likelihood, log_trans_prior, leaf_tree, var_tree, split_tree, offset, varprob)[source]¶
MCMC trace with trees and diagnostic values.
- grow_prop_count: Int32[Array, '*chains_and_samples']¶
The number of grow proposals made during one full MCMC cycle.
- grow_acc_count: Int32[Array, '*chains_and_samples']¶
The number of grow moves accepted during one full MCMC cycle.
- prune_prop_count: Int32[Array, '*chains_and_samples']¶
The number of prune proposals made during one full MCMC cycle.
- prune_acc_count: Int32[Array, '*chains_and_samples']¶
The number of prune moves accepted during one full MCMC cycle.
- error_cov_inv: Float32[Array, '*chains_and_samples'] | Float32[Array, '*chains_and_samples k k']¶
The inverse error covariance (scalar for univariate, matrix for multivariate). Identity in binary regression.
- theta: Float32[Array, '*chains_and_samples'] | None¶
The concentration parameter of the Dirichlet prior on the variable split probabilities, or
Noneif it was not sampled.
- log_likelihood: Float32[Array, '*chains_and_samples num_trees'] | None¶
The log likelihood ratio of the proposed move on each tree, or
None.
- log_trans_prior: Float32[Array, '*chains_and_samples num_trees'] | None¶
The log transition and prior Metropolis-Hastings ratio of the proposed move on each tree, or
None.
- leaf_tree: Float32[Array, '*chains_and_samples num_trees tree_size'] | Float32[Array, '*chains_and_samples num_trees k tree_size']¶
The leaf values.
- var_tree: UInt[Array, '*chains_and_samples num_trees tree_size//2']¶
The decision axes.
- split_tree: UInt[Array, '*chains_and_samples num_trees tree_size//2']¶
The decision boundaries.
- offset: Float32[Array, ''] | Float32[Array, 'k']¶
Constant shift added to the sum of trees.