March 4, 2024, 1:45 a.m. | Mark White

R-bloggers www.r-bloggers.com

The Academy Awards are a week away, and I’m sharing my

machine-learning-based predictions for Best Picture as well as some

insights I took away from the process (particularly XGBoost’s

sparsity-aware split finding). Oppenheimer is a heavy favorite

at 9...


Continue reading: Modeling the Oscar for Best Picture (and Some Insights About XGBoost)

awards insights machine modeling oppenheimer oscar predictions process r bloggers reading sparsity the academy xgboost

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