Nearest Neighbour Search in high-dimensional spaces is a common problem in Computer Vision. Although no algorithm better than linear search is known, approximate algorithms are commonly used to tackle this problem. The drawback of using such algorithms is that their performance depends highly on parameter tuning. While this process can be automated using standard empirical optimization techniques, tuning is still time-consuming. In this paper, we propose to use Empirical Hardness Models to reduce the number of parameter configurations that Bayesian Optimization has to try, speeding up the optimization process. Evaluation on standard benchmarks of SIFT and GIST descriptors shows the viability of our approach
Bayesian Optimization (BO) is a common solution to search optimal hyperparameters based on sample ob...
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly blac...
Scaling Bayesian optimisation (BO) to high-dimensional search spaces is a active and open research p...
International audienceBayesian optimization is known to be a method of choice when it comes to solvi...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
For many computer vision and machine learning problems, large training sets are key for good perform...
For many computer vision and machine learning problems, large training sets are key for good perform...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
We propose two solutions for both nearest neigh-bors and range search problems. For the nearest neig...
Finding optimal parameter configurations for tunable GPU kernels is a non-Trivial exercise for large...
Existing models for nearest neighbor search in multidimensional spaces are not appropriate for query...
Bayesian optimization is an approach for globally optimizing black-box functions that are expensive ...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
Bayesian Optimization (BO) is a common solution to search optimal hyperparameters based on sample ob...
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly blac...
Scaling Bayesian optimisation (BO) to high-dimensional search spaces is a active and open research p...
International audienceBayesian optimization is known to be a method of choice when it comes to solvi...
In many computer vision problems, answering the nearest neighbor queries efficiently, especially in ...
For many computer vision and machine learning problems, large training sets are key for good perform...
For many computer vision and machine learning problems, large training sets are key for good perform...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
We propose two solutions for both nearest neigh-bors and range search problems. For the nearest neig...
Finding optimal parameter configurations for tunable GPU kernels is a non-Trivial exercise for large...
Existing models for nearest neighbor search in multidimensional spaces are not appropriate for query...
Bayesian optimization is an approach for globally optimizing black-box functions that are expensive ...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
Bayesian Optimization (BO) is a common solution to search optimal hyperparameters based on sample ob...
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly blac...
Scaling Bayesian optimisation (BO) to high-dimensional search spaces is a active and open research p...