AbstractScenario discovery is a model-based approach to scenario development under deep uncertainty. Scenario discovery relies on the use of statistical machine learning algorithms. The most frequently used algorithm is the Patient Rule Induction Method (PRIM). This algorithm identifies regions in an uncertain model input space that are highly predictive of model outcomes that are of interest. To identify these regions, PRIM uses a hill-climbing optimization procedure. This suggests that PRIM can suffer from the usual defects of hill climbing optimization algorithms, including local optima, plateaus, and ridges and valleys. In case of PRIM, these problems are even more pronounced when dealing with heterogeneously typed data. Drawing inspira...
To cope with varying conditions, motor primitives (MPs) must support generalization over task parame...
The second largest cause of death in Palestine is Cancer at a rate 12.4% of all deaths. Predicting t...
The field of robust optimization deals with problems where uncertainty influences the optimal decisi...
<p>Scenario discovery is a model-based approach to scenario development under deep uncertainty. Scen...
AbstractScenario discovery is a model-based approach to scenario development under deep uncertainty....
AbstractScenario discovery is a novel model-based approach to scenario development in the presence o...
Scenario discovery is a novel model-based approach to scenario development in the presence of deep u...
Motivation: Approximate Bayesian computation (ABC) methods provide an elaborate approach to Bayesian...
The patient rule-induction method (PRIM) is a statistical learning method that seeks to locate regio...
Data mining and machine learning algorithms are trained on large datasets to find useful hidden patt...
Monte Carlo tree search (MCTS) is a sampling and simulation based technique for searching in large s...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
171 pagesMachine learning has become ubiquitous in many areas, including high-stake applications suc...
AbstractThis paper analyzes a data mining/bump hunting technique known as PRIM [1]. PRIM finds regio...
To cope with varying conditions, motor primitives (MPs) must support generalization over task parame...
The second largest cause of death in Palestine is Cancer at a rate 12.4% of all deaths. Predicting t...
The field of robust optimization deals with problems where uncertainty influences the optimal decisi...
<p>Scenario discovery is a model-based approach to scenario development under deep uncertainty. Scen...
AbstractScenario discovery is a model-based approach to scenario development under deep uncertainty....
AbstractScenario discovery is a novel model-based approach to scenario development in the presence o...
Scenario discovery is a novel model-based approach to scenario development in the presence of deep u...
Motivation: Approximate Bayesian computation (ABC) methods provide an elaborate approach to Bayesian...
The patient rule-induction method (PRIM) is a statistical learning method that seeks to locate regio...
Data mining and machine learning algorithms are trained on large datasets to find useful hidden patt...
Monte Carlo tree search (MCTS) is a sampling and simulation based technique for searching in large s...
Random forest (RF) is a widely used machine learning method that shows competitive prediction perfor...
The growing success of Machine Learning (ML) is making significant improvements to predictive models...
171 pagesMachine learning has become ubiquitous in many areas, including high-stake applications suc...
AbstractThis paper analyzes a data mining/bump hunting technique known as PRIM [1]. PRIM finds regio...
To cope with varying conditions, motor primitives (MPs) must support generalization over task parame...
The second largest cause of death in Palestine is Cancer at a rate 12.4% of all deaths. Predicting t...
The field of robust optimization deals with problems where uncertainty influences the optimal decisi...