International audienceThis works extends the Random Embedding Bayesian Optimization approach by integrating a warping of the high dimensional subspace within the covariance kernel. The proposed warping, that relies on elementary geometric considerations, allows mitigating the drawbacks of the high extrinsic dimensionality while avoiding the algorithm to evaluate points giving redundant information. It also alleviates constraints on bound selection for the embedded domain, thus improving the robustness, as illustrated with a test case with 25 variables and intrinsic dimension 6
In order to grapple with the conundrum in the scalability of kernel-based learning algorithms, the m...
Random embeddings project high-dimensional spaces to low-dimensional ones; they are careful construc...
Finding optimal parameter configurations for tunable GPU kernels is a non-Trivial exercise for large...
International audienceThis works extends the Random Embedding Bayesian Optimization approach by inte...
Bayesian optimization techniques have been successfully applied to robotics, planning, sensor placem...
Bayesian optimization techniques have been successfully applied to robotics, planning, sensor placem...
The challenge of taking many variables into account in optimization problems may be overcome under t...
Bayesian optimization has proven to be a highly effective methodology for the global optimization of...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
We propose an extrinsic Bayesian optimization (eBO) framework for general optimization problems on m...
International audienceThe challenge of taking many variables into account in optimization problems m...
Random embedding has been applied with empirical success to large-scale black-box optimization probl...
International audienceBayesian optimization is known to be a method of choice when it comes to solvi...
Kernel methods are one of the mainstays of machine learning, but the problem of kernel learning rema...
Bayesian optimization has proven to be a highly effective methodology for the global optimization of...
In order to grapple with the conundrum in the scalability of kernel-based learning algorithms, the m...
Random embeddings project high-dimensional spaces to low-dimensional ones; they are careful construc...
Finding optimal parameter configurations for tunable GPU kernels is a non-Trivial exercise for large...
International audienceThis works extends the Random Embedding Bayesian Optimization approach by inte...
Bayesian optimization techniques have been successfully applied to robotics, planning, sensor placem...
Bayesian optimization techniques have been successfully applied to robotics, planning, sensor placem...
The challenge of taking many variables into account in optimization problems may be overcome under t...
Bayesian optimization has proven to be a highly effective methodology for the global optimization of...
Bayesian optimization (BO) is one of the most powerful strategies to solve expensive black-box optim...
We propose an extrinsic Bayesian optimization (eBO) framework for general optimization problems on m...
International audienceThe challenge of taking many variables into account in optimization problems m...
Random embedding has been applied with empirical success to large-scale black-box optimization probl...
International audienceBayesian optimization is known to be a method of choice when it comes to solvi...
Kernel methods are one of the mainstays of machine learning, but the problem of kernel learning rema...
Bayesian optimization has proven to be a highly effective methodology for the global optimization of...
In order to grapple with the conundrum in the scalability of kernel-based learning algorithms, the m...
Random embeddings project high-dimensional spaces to low-dimensional ones; they are careful construc...
Finding optimal parameter configurations for tunable GPU kernels is a non-Trivial exercise for large...