Login / Signup

Inferring feature importance with uncertainties with application to large genotype data.

Pål Vegard JohnsenInga StrümkeMette LangaasAndrew Thomas DeWanSigne Riemer-Sørensen
Published in: PLoS computational biology (2023)
Estimating feature importance, which is the contribution of a prediction or several predictions due to a feature, is an essential aspect of explaining data-based models. Besides explaining the model itself, an equally relevant question is which features are important in the underlying data generating process. We present a Shapley-value-based framework for inferring the importance of individual features, including uncertainty in the estimator. We build upon the recently published model-agnostic feature importance score of SAGE (Shapley additive global importance) and introduce Sub-SAGE. For tree-based models, it has the advantage that it can be estimated without computationally expensive resampling. We argue that for all model types the uncertainties in our Sub-SAGE estimator can be estimated using bootstrapping and demonstrate the approach for tree ensemble methods. The framework is exemplified on synthetic data as well as large genotype data for predicting feature importance with respect to obesity.
Keyphrases
  • machine learning
  • electronic health record
  • big data
  • deep learning
  • metabolic syndrome
  • insulin resistance
  • randomized controlled trial
  • weight loss
  • adipose tissue
  • physical activity
  • skeletal muscle