Tree ensemble kernels for Bayesian optimization with known constraints over mixed-feature spaces Alexander Thebelt

Neural Information Processing Systems 

Tree ensembles can be well-suited for black-box optimization tasks such as algorithm tuning and neural architecture search, as they achieve good predictive performance with little or no manual tuning, naturally handle discrete feature spaces, and are relatively insensitive to outliers in the training data.

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