The encoding of solutions in black-box optimization is a delicate, handcrafted balance between expressiveness and domain knowledge between exploring a wide variety of solutions, and ensuring that those solutions are useful. Our main insight is that this process can be automated by generating a dataset of high-performing solutions with a quality diversity algorithm (here, MAP-Elites), then learning a representation with a generative model (here, a Varia-tional Autoencoder) from that dataset. Our second insight is that this representation can be used to scale quality diversity optimization to higher dimensions-but only if we carefully mix solutions generated with the learned representation and those generated with traditional variation operat...
Optimization plays an important role in solving many inverse problems. Indeed, the task of inversion...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
This article proposes a competitive divide-and-conquer algorithm for solving large-scale black-box o...
The way solutions are represented, or encoded, is usually the result of domain knowledge and experie...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Many important problems in science and engineering, such as drug design, involve optimizing an expen...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
Abell T, Malitsky Y, Tierney K. Features for Exploiting Black-Box Optimization Problem Structure. In...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
The representation, or encoding, utilized in evolutionary algorithms has a substantial effect on the...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
University of Technology Sydney. Faculty of Engineering and Information Technology.Black-box optimiz...
Packages to encode Machine Learned models into optimization problems is an underdeveloped area, desp...
Black-Box Tuning (BBT) is a derivative-free approach to optimize continuous prompt tokens prepended ...
The deep learning community has devised a diverse set of methods to make gradient optimization, usin...
Optimization plays an important role in solving many inverse problems. Indeed, the task of inversion...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
This article proposes a competitive divide-and-conquer algorithm for solving large-scale black-box o...
The way solutions are represented, or encoded, is usually the result of domain knowledge and experie...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Many important problems in science and engineering, such as drug design, involve optimizing an expen...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
Abell T, Malitsky Y, Tierney K. Features for Exploiting Black-Box Optimization Problem Structure. In...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
The representation, or encoding, utilized in evolutionary algorithms has a substantial effect on the...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
University of Technology Sydney. Faculty of Engineering and Information Technology.Black-box optimiz...
Packages to encode Machine Learned models into optimization problems is an underdeveloped area, desp...
Black-Box Tuning (BBT) is a derivative-free approach to optimize continuous prompt tokens prepended ...
The deep learning community has devised a diverse set of methods to make gradient optimization, usin...
Optimization plays an important role in solving many inverse problems. Indeed, the task of inversion...
Key to defining effective and efficient optimization algorithms is exploiting problem structure and ...
This article proposes a competitive divide-and-conquer algorithm for solving large-scale black-box o...