- Aanalyzing data from a randomized control trial using both:
-Traditional statistical methods and the more recent machine learning techniques - Interpreting Multivariate Models
-Quantifying treatment effect
-Calculating baseline risk
-Calculating predicted risk reduction - Evaluating Treatment Effect Models
-Comparing predicted and empirical risk reductions
-Computing C-statistic-for-benefit - Interpreting ML models for Treatment Effect Estimation
-Implement T-learner
- Extracting disease labels from clinical reports
-Text matching
-Evaluating a labeler
-Negation detection
-Dependency parsing - Question Answering with BERT
-Preprocessing text for input
-Extracting answers from model output
- Interpreting Deep Learning Models
-Understanding output using GradCAMs - Feature Importance in Machine Learning
-Permutation Method
-SHAP Values