##Statistics Seminar##\\ Department of Mathematics and Statistics
^ **DATE:**|Thursday, October 17, 2024 |
^ **TIME:**|1:15pm -- 2:15pm |
^ **LOCATION:**|WH 100E |
^ **SPEAKER:**|Samruddhi Thakar, Binghamton University |
^ **TITLE:**|Quantifying Uncertainty in Random Forests via Confidence Intervals and Hypothesis Tests |
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**Abstract**
This work develops formal statistical inference procedures for predictions generated by supervised
learning ensembles. Ensemble methods based on bootstrapping, such as bagging
and random forests, have improved the predictive accuracy of individual trees, but fail to
provide a framework in which distributional results can be easily determined. Instead of
aggregating full bootstrap samples, we consider predicting by averaging over trees built
on subsamples of the training set and demonstrate that the resulting estimator takes the
form of a U-statistic. As such, predictions for individual feature vectors are asymptotically
normal, allowing for confidence intervals to accompany predictions. In practice, a
subset of subsamples is used for computational speed; here our estimators take the form
of incomplete U-statistics and equivalent results are derived. We further demonstrate that
this setup provides a framework for testing the significance of features. Moreover, the internal
estimation method we develop allows us to estimate the variance parameters and
perform these inference procedures at no additional computational cost. Simulations and
illustrations on a real data set are provided.
Reference:
Mentch, L., & Hooker, G. (2016). Quantifying uncertainty in random forests via confidence intervals and hypothesis tests. Journal of Machine Learning Research, 17(26), 1-41.