Constraining the parameters of physical models with $$>5-10$$ parameters is a widespread problem in fields like particle physics and astronomy. The generation of data to explore this parameter space often requires large amounts of computational resources. The commonly used solution of reducing the number of relevant physical parameters hampers the generality of the results. In this paper we show that this problem can be alleviated by the use of active learning. We illustrate this with examples from high energy physics, a field where simulations are often expensive and parameter spaces are high-dimensional. We show that the active learning techniques query-by-committee and query-by-dropout-committee allow for the identification of model poin...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
A step by step method is presented for reducing the need for a large number of response history anal...
Science concerns itself with modelling the world. These models provide a lens trough which to interp...
[[abstract]]Active learning is a kind of semi-supervised learning methods in which learning algorith...
This work addresses two challenges in combination: learning with a very limited number of labeled tr...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
Active Learning (AL) is a methodology from Machine Learning and Design of Experiments (DOE) in which...
In standard active learning, the learner’s goal is to reduce the predictive uncertainty with as litt...
In machine learning, active learning refers to algorithms that autonomously select the data points f...
This paper addresses two challenges in combination: learning with a very limited number of labeled t...
We present an efficient algorithm to actively select queries for learning the boundaries separating...
Several pool-based active learning (AL) algorithms were employed to model potential-energy surfaces ...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
The field of Machine Learning is concerned with the development of algorithms, models and techniques...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
A step by step method is presented for reducing the need for a large number of response history anal...
Science concerns itself with modelling the world. These models provide a lens trough which to interp...
[[abstract]]Active learning is a kind of semi-supervised learning methods in which learning algorith...
This work addresses two challenges in combination: learning with a very limited number of labeled tr...
Most active learning methods avoid model selection by training models of one type (SVMs, boosted tre...
Active Learning (AL) is a methodology from Machine Learning and Design of Experiments (DOE) in which...
In standard active learning, the learner’s goal is to reduce the predictive uncertainty with as litt...
In machine learning, active learning refers to algorithms that autonomously select the data points f...
This paper addresses two challenges in combination: learning with a very limited number of labeled t...
We present an efficient algorithm to actively select queries for learning the boundaries separating...
Several pool-based active learning (AL) algorithms were employed to model potential-energy surfaces ...
Several theoretical parameter spaces are analysed using techniques from machine learning. First, mac...
The field of Machine Learning is concerned with the development of algorithms, models and techniques...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
Recent decades have witnessed great success of machine learning, especially for tasks where large an...
A step by step method is presented for reducing the need for a large number of response history anal...