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Prediction Model for Bike Rental Counts based on Environmental & Temporal Factors in Washington DC

  • Developed and trained model with team to develop a predictive model to Bike Rental Counts
  • Performed EDA using Tidyverse and mitigated multicollinearity by removing redundant features with VIF > 10
  • Utilized Exhaustive search to identify the best features using model metrics, such as Adj R2, Mallow's Cp and BIC, reducing model from 20 to 13 variables without decreasing model performance.