BACKGROUND: Active learning is a powerful tool for guiding an experimentation process. Instead of doing all possible experiments in a given domain, active learning can be used to pick the experiments that will add the most knowledge to the current model. Especially, for drug discovery and development, active learning has been shown to reduce the number of experiments needed to obtain high-confidence predictions. However, in practice, it is crucial to have a method to evaluate the quality of the current predictions and decide when to stop the experimentation process. Only by applying reliable stopping criteria to active learning can time and costs in the experimental process actually be saved. RESULTS: We compute active learning traces on si...
In a previous paper Amman et al. (Macroecon Dyn, 2018) compare the two dominant approaches for solvi...
Active machine learning enables the automated selection of the most valuable next experiments to imp...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
<p>BACKGROUND: Active learning is a powerful tool for guiding an experimentation process. Instead of...
High throughput and high content screening involve determination of the effect of many compounds on ...
High throughput and high content screening involve determination of the effect of many compounds on ...
<p>BACKGROUND: Drug discovery and development has been aided by high throughput screening methods th...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Deciding when to stop: efficient experimentation to learn to predict drug-target interaction
Replacing biological experiments that study the binding activity of compounds with predictive machin...
Active learning refers to the settings in which a machine learning algorithm (learner) is able to s...
Computer aided synthesis planning, suggesting synthetic routes for molecules of interest, is a rapid...
In a previous paper Amman and Tucci (2018) compare the two dominant approaches for solving models wi...
From observational data alone, a causal DAG is only identifiable up to Markov equivalence. Intervent...
In machine learning, active learning is becoming increasingly more widely used, especially for type...
In a previous paper Amman et al. (Macroecon Dyn, 2018) compare the two dominant approaches for solvi...
Active machine learning enables the automated selection of the most valuable next experiments to imp...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
<p>BACKGROUND: Active learning is a powerful tool for guiding an experimentation process. Instead of...
High throughput and high content screening involve determination of the effect of many compounds on ...
High throughput and high content screening involve determination of the effect of many compounds on ...
<p>BACKGROUND: Drug discovery and development has been aided by high throughput screening methods th...
We investigate the following data mining problem from Computational Chemistry: From a large data set...
Deciding when to stop: efficient experimentation to learn to predict drug-target interaction
Replacing biological experiments that study the binding activity of compounds with predictive machin...
Active learning refers to the settings in which a machine learning algorithm (learner) is able to s...
Computer aided synthesis planning, suggesting synthetic routes for molecules of interest, is a rapid...
In a previous paper Amman and Tucci (2018) compare the two dominant approaches for solving models wi...
From observational data alone, a causal DAG is only identifiable up to Markov equivalence. Intervent...
In machine learning, active learning is becoming increasingly more widely used, especially for type...
In a previous paper Amman et al. (Macroecon Dyn, 2018) compare the two dominant approaches for solvi...
Active machine learning enables the automated selection of the most valuable next experiments to imp...
We investigate the following data mining problem from Computational Chemistry: From a large data set...