Score breakdown

Greedy Function Approximation: A Gradient Boosting Machine

paper-0045 · paper · 2001

Jerome H. Friedman

Gradient boosting; the backbone of tabular ML to this day.

Academic, score -0.1097

MetricStatusValueNorm.WeightContributionSourceConfidenceProvenance
citation_countpresent29000.00.130540.50.06527OpenAlexmediumlink
library_holdingsmissingrecorded as missing, penalized by rule, never imputed−0.1recorded as missing; penalized by rule, never imputed
readership_persistencepresent15.01.00.050.05OpenAlexlowlink
syllabus_adoptionsmissingrecorded as missing, penalized by rule, never imputed−0.125recorded as missing; penalized by rule, never imputed

Broad Influence, score 0.2261

MetricStatusValueNorm.WeightContributionSourceConfidenceProvenance
citation_countpresent29000.00.130540.20.026108OpenAlexmediumlink
library_holdingsmissingrecorded as missing, penalized by rule, never imputed−0.125recorded as missing; penalized by rule, never imputed
readership_persistencepresent15.01.00.40.4OpenAlexlowlink
syllabus_adoptionsmissingrecorded as missing, penalized by rule, never imputed−0.075recorded as missing; penalized by rule, never imputed

Governance Practitioner, score -0.1924

MetricStatusValueNorm.WeightContributionSourceConfidenceProvenance
citation_countpresent29000.00.130540.250.032635OpenAlexmediumlink
library_holdingsmissingrecorded as missing, penalized by rule, never imputed−0.15recorded as missing; penalized by rule, never imputed
readership_persistencepresent15.01.00.10.1OpenAlexlowlink
syllabus_adoptionsmissingrecorded as missing, penalized by rule, never imputed−0.175recorded as missing; penalized by rule, never imputed

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