Hollow-tree Super: a directional and scalable approach for feature importance in boosted tree models
Stephane Doyen, Hugh Taylor, Peter Nicholas, Lewis Crawford, Isabella, Young, Michael Sughrue

TL;DR
HOTS is a novel scalable method for visualizing and understanding feature importance, including directionality and magnitude, in large boosted tree models, demonstrated on both standard and high-dimensional neuroscientific data.
Contribution
HOTS introduces a new approach to resolve and visualize feature importance in large-scale boosted tree models, addressing current limitations in scalability and interpretability.
Findings
HOTS effectively identified important features in the Iris dataset.
HOTS replicated known feature importance in neuroscientific data.
HOTS revealed key brain regions associated with schizophrenia.
Abstract
Current limitations in boosted tree modelling prevent the effective scaling to datasets with a large feature number, particularly when investigating the magnitude and directionality of various features on classification. We present a novel methodology, Hollow-tree Super (HOTS), to resolve and visualize feature importance in boosted tree models involving a large number of features. Further, HOTS allows for investigation of the directionality and magnitude various features have on classification. Using the Iris dataset, we first compare HOTS to Gini Importance, Partial Dependence Plots, and Permutation Importance, and demonstrate how HOTS resolves the weaknesses present in these methods. We then show how HOTS can be utilized in high dimensional neuroscientific data, by taking 60 Schizophrenic subjects and applying the method to determine which brain regions were most important for…
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