Search Results for author: Simon Teshuva

Found 2 papers, 1 papers with code

From Prediction to Action: Critical Role of Performance Estimation for Machine-Learning-Driven Materials Discovery

no code implementations27 Nov 2023 Mario Boley, Felix Luong, Simon Teshuva, Daniel F Schmidt, Lucas Foppa, Matthias Scheffler

Materials discovery driven by statistical property models is an iterative decision process, during which an initial data collection is extended with new data proposed by a model-informed acquisition function--with the goal to maximize a certain "reward" over time, such as the maximum property value discovered so far.

Gaussian Processes

Better Short than Greedy: Interpretable Models through Optimal Rule Boosting

1 code implementation21 Jan 2021 Mario Boley, Simon Teshuva, Pierre Le Bodic, Geoffrey I Webb

Rule ensembles are designed to provide a useful trade-off between predictive accuracy and model interpretability.

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