Activities per year
Abstract
Understanding how changes in explanatory features affect the unconditional distribution of the outcome is important in many applications. However, existing black-box predictive models are not readily suited for analyzing such questions. In this work, we develop an approximation method to compute the feature importance curves relevant to the unconditional distribution of outcomes, while leveraging the power of pre-trained black-box predictive models. The feature importance curves measure the changes across quantiles of outcome distribution given an external impact of change in the explanatory features. Through extensive numerical experiments and real data examples, we demonstrate that our approximation method produces sparse and faithful results, and is computationally efficient.
Original language | English |
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Publisher | arXiv |
Publication status | Published - 7 Dec 2024 |
Keywords
- stat.ML
- cs.LG
- stat.CO
- stat.ME
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6th International Conference on Computational Statistics
Jing Zhou (Speaker)
27 Aug 2024 → 30 Aug 2024Activity: Participating in or organising an event › Participation in conference
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Bernoulli-IMS 11th World Congress on Probability and Statistics 2024
Jing Zhou (Speaker)
12 Aug 2024 → 16 Aug 2024Activity: Participating in or organising an event › Participation in external training
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ICSA – Canada Chapter 2024 Symposium
Jing Zhou (Speaker)
7 Jun 2024 → 9 Jun 2024Activity: Participating in or organising an event › Invited talk