An important task in many scientific and engineering disciplines is to set up experiments with the goal of finding the best instances (substances, compositions, designs) as evaluated on an unknown target function using limited resources. We study this problem using machine learning principles, and introduce the novel task of active k-optimization. The problem consists of approximating the k best instances with regard to an unknown function and the learner is active, that is, it can present a limited number of instances to an oracle for obtaining the target value. We also develop an algorithm based on Gaussian processes for tackling active k-optimization, and evaluate it on a challenging set of tasks related to structure-activity relationsh...
<p>High throughput and high content screening involve determination of the effect of many compounds ...
Active learning traditionally relies on instance based utility measures to rank and select instances...
In traditional methods for black-box optimization, a considerable number of objective function evalu...
Abstract. An important task in many scientific and engineering disci-plines is to set up experiments...
We study the task of approximating the k best instances with regard to a function us-ing a limited n...
The field of Machine Learning is concerned with the development of algorithms, models and techniques...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Active Learning (AL) is a methodology from Machine Learning and Design of Experiments (DOE) in which...
A new type of experiment that aims to determine the optimal quantities of a sequence of factors is e...
Active learning (AL) is a machine learning algorithm that can achieve greater accuracy with fewer la...
Replacing biological experiments that study the binding activity of compounds with predictive machin...
High throughput and high content screening involve determination of the effect of many compounds on ...
A fundamental issue in active learning of Gaussian processes is that of the exploration-exploitation...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Abstract. A fundamental issue in active learning of Gaussian processes is that of the exploration-ex...
<p>High throughput and high content screening involve determination of the effect of many compounds ...
Active learning traditionally relies on instance based utility measures to rank and select instances...
In traditional methods for black-box optimization, a considerable number of objective function evalu...
Abstract. An important task in many scientific and engineering disci-plines is to set up experiments...
We study the task of approximating the k best instances with regard to a function us-ing a limited n...
The field of Machine Learning is concerned with the development of algorithms, models and techniques...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Active Learning (AL) is a methodology from Machine Learning and Design of Experiments (DOE) in which...
A new type of experiment that aims to determine the optimal quantities of a sequence of factors is e...
Active learning (AL) is a machine learning algorithm that can achieve greater accuracy with fewer la...
Replacing biological experiments that study the binding activity of compounds with predictive machin...
High throughput and high content screening involve determination of the effect of many compounds on ...
A fundamental issue in active learning of Gaussian processes is that of the exploration-exploitation...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Abstract. A fundamental issue in active learning of Gaussian processes is that of the exploration-ex...
<p>High throughput and high content screening involve determination of the effect of many compounds ...
Active learning traditionally relies on instance based utility measures to rank and select instances...
In traditional methods for black-box optimization, a considerable number of objective function evalu...