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arxiv:2503.23595

Multi-Objective Optimization and Hyperparameter Tuning With Desirability Functions

Published on Mar 30
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Abstract

The article introduces the desirability function approach for multi-objective optimization and hyperparameter tuning, demonstrating its application through examples in classical, surrogate-model based, and hyperparameter tuning scenarios.

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The goal of this article is to provide an introduction to the desirability function approach to multi-objective optimization (direct and surrogate model-based), and multi-objective hyperparameter tuning. This work is based on the paper by Kuhn (2016). It presents a `Python` implementation of Kuhn's `R` package `desirability`. The `Python` package `spotdesirability` is available as part of the `sequential parameter optimization` framework. After a brief introduction to the desirability function approach is presented, three examples are given that demonstrate how to use the desirability functions for classical optimization, surrogate-model based optimization, and hyperparameter tuning.

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