Builders
- class bamt.builders.builders_base.ParamDict[source]
Bases:
TypedDict- init_edges: Sequence[str] | None
- init_nodes: List[str] | None
- remove_init_edges: bool
- white_list: Tuple[str, str] | None
- bl_add: List[str] | None
- class bamt.builders.builders_base.StructureBuilder(descriptor: Dict[str, Dict[str, str]])[source]
Bases:
objectBase Class for Structure Builder. It can restrict nodes defined by RESTRICTIONS
- class bamt.builders.builders_base.VerticesDefiner(descriptor: Dict[str, Dict[str, str]], regressor: object | None)[source]
Bases:
StructureBuilderMain class for defining vertices
- overwrite_vertex(has_logit: bool, use_mixture: bool, classifier: Callable | None, regressor: Callable | None)[source]
Level 2: Redefined nodes according structure (parents) :param classifier: an object to pass into logit, condLogit nodes :param regressor: an object to pass into gaussian nodes :param has_logit allows edges from cont to disc nodes :param use_mixture allows using Mixture
- class bamt.builders.builders_base.EdgesDefiner(descriptor: Dict[str, Dict[str, str]])[source]
Bases:
StructureBuilder
- class bamt.builders.builders_base.BaseDefiner(data: DataFrame, descriptor: Dict[str, Dict[str, str]], scoring_function: Tuple[str, Callable] | Tuple[str], regressor: object | None = None)[source]
Bases:
VerticesDefiner,EdgesDefiner
- class bamt.builders.hc_builder.HillClimbDefiner(data: DataFrame, descriptor: Dict[str, Dict[str, str]], scoring_function: Tuple[str, Callable] | Tuple[str], regressor: object | None = None)[source]
Bases:
BaseDefinerObject to define structure and pass it into skeleton
- apply_K2(data: DataFrame, init_edges: List[Tuple[str, str]] | None, progress_bar: bool, remove_init_edges: bool, white_list: List[Tuple[str, str]] | None)[source]
- Parameters:
init_edges – list of tuples, a graph to start learning with
remove_init_edges – allows changes in a model defined by user
data – user’s data
progress_bar – verbose regime
white_list – list of allowed edges
- apply_group1(data: DataFrame, progress_bar: bool, init_edges: List[Tuple[str, str]] | None, remove_init_edges: bool, white_list: List[Tuple[str, str]] | None)[source]
This method implements the group of scoring functions. Group: “MI” - Mutual Information, “LL” - Log Likelihood, “BIC” - Bayesian Information Criteria, “AIC” - Akaike information Criteria.
- class bamt.builders.hc_builder.HCStructureBuilder(data: DataFrame, descriptor: Dict[str, Dict[str, str]], scoring_function: Tuple[str, Callable], regressor: object | None, has_logit: bool, use_mixture: bool)[source]
Bases:
HillClimbDefinerFinal object with build method