56131
4221
{"search_strategy":"beam","use_nominal_sets":"false","post_processing_count":"20","maximum_coverage_fraction":"1.0","numeric_operators":"<html>≤, ≥<\/html>","overall_ranking_loss":"0.0","post_processing_do_autorun":"true","search_depth":"4","search_strategy_width":"4","nr_threads":"1","alpha":"0.5","beam_seed":"","maximum_subgroups":"100","maximum_time":"1.0","minimum_coverage":"2","nr_bins":"8","numeric_strategy":"all","beta":"1.0"}
search_strategy
beam
4221
use_nominal_sets
false
4221
post_processing_count
20
4221
maximum_coverage_fraction
1.0
4221
numeric_operators
<html>≤, ≥</html>
4221
overall_ranking_loss
0.0
4221
post_processing_do_autorun
true
4221
search_depth
4
4221
search_strategy_width
4
4221
nr_threads
1
4221
alpha
0.5
4221
beam_seed
4221
maximum_subgroups
100
4221
maximum_time
1.0
4221
minimum_coverage
2
4221
nr_bins
8
4221
numeric_strategy
all
4221
beta
1.0
4221
Cortana
coverage
openml.evaluation.coverage(1.0)
23
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quality
openml.evaluation.quality(1.0)
0.9955779910087585
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probability
openml.evaluation.probability(1.0)
0.6956521739130435
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positives
openml.evaluation.positives(1.0)
16
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cortana_quality
openml.evaluation.cortana_quality(1.0)
0.9955779910087585
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