mvpa2.clfs.meta.ProxyClassifierSensitivityAnalyzer¶
 
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class mvpa2.clfs.meta.ProxyClassifierSensitivityAnalyzer(*args_, **kwargs_)¶
- Set sensitivity analyzer output just to pass through - Notes - Available conditional attributes: - calling_time+: Time (in seconds) it took to call the node
- clf_sensitivities: Stores sensitivities of the proxied classifier
- null_prob+: None
- null_t: None
- raw_results: Computed results before invoking postproc. Stored only if postproc is not None.
- trained_dataset: The dataset it has been trained on
- trained_nsamples+: Number of samples it has been trained on
- trained_targets+: Set of unique targets (or any other space) it has been trained on (if present in the dataset trained on)
- training_time+: Time (in seconds) it took to train the learner
 - (Conditional attributes enabled by default suffixed with - +)- Attributes - analyzer- auto_train- Whether the Learner performs automatic trainingwhen called untrained. - clf- descr- Description of the object if any - feature_ids- Return feature_ids used by the underlying classifier - force_train- Whether the Learner enforces training upon every call. - is_trained- null_dist- Return Null Distribution estimator - pass_attr- Which attributes of the dataset or self.ca to pass into result dataset upon call - postproc- Node to perform post-processing of results - space- Processing space name of this node - Methods - __call__(ds)- generate(ds)- Yield processing results. - get_postproc()- Returns the post-processing node or None. - get_space()- Query the processing space name of this node. - reset()- set_postproc(node)- Assigns a post-processing node - set_space(name)- Set the processing space name of this node. - train(ds)- The default implementation calls - _pretrain(),- _train(), and finally- _posttrain().- untrain()- Reverts changes in the state of this node caused by previous training - Initialize instance of ProxyClassifierSensitivityAnalyzer - Parameters: - enable_ca : None or list of str - Names of the conditional attributes which should be enabled in addition to the default ones - disable_ca : None or list of str - Names of the conditional attributes which should be disabled - Attributes - analyzer- auto_train- Whether the Learner performs automatic trainingwhen called untrained. - clf- descr- Description of the object if any - feature_ids- Return feature_ids used by the underlying classifier - force_train- Whether the Learner enforces training upon every call. - is_trained- null_dist- Return Null Distribution estimator - pass_attr- Which attributes of the dataset or self.ca to pass into result dataset upon call - postproc- Node to perform post-processing of results - space- Processing space name of this node - Methods - __call__(ds)- generate(ds)- Yield processing results. - get_postproc()- Returns the post-processing node or None. - get_space()- Query the processing space name of this node. - reset()- set_postproc(node)- Assigns a post-processing node - set_space(name)- Set the processing space name of this node. - train(ds)- The default implementation calls - _pretrain(),- _train(), and finally- _posttrain().- untrain()- Reverts changes in the state of this node caused by previous training - 
analyzer¶
 

 
  

