Scenario Discovery is a widely used method in model-based decision support for identifying common input space properties across ensembles of exploratory model runs. For model runs with behavior over time, these properties are identified by reducing each run to a single value, which obscures potentially decision-relevant dynamics. We address the problem of considering dynamics in Scenario Discovery by applying time series clustering to the ensemble of model runs, and then finding the common input properties for each cluster. This separates the input space into multiple scenarios, each corresponding to a distinct model dynamic. Policy interventions can be targeted at different scenarios by analyzing overlap of these subspaces. Our work expand...
This paper is intended to mine historical data by presenting a scenario clustering approach to ident...
There is a widespread belief that certain patterns of stock prices over time portend specific future...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
Many societal, environmental and technological challenges can be characterized as wicked problems by...
The continuous improvement of fuel cycle simulators in conjunction with the increase of computing ca...
This paper presents a scenario clustering approach intended to mine historical data warehouses to id...
Test scenario generation for testing automated and autonomous driving systems requires knowledge abo...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
This paper is about extracting knowledge from large sets of videos, with a particular reference to t...
Dynamic processes generating time series are a phenomenon occurring in many events and systems worth...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...
This paper introduces a Bayesian method for clustering dynamic processes and applies it to the chara...
Multistage stochastic programs are effective for solving long-term planning problems under uncertain...
This paper is intended to mine historical data by presenting a scenario clustering approach to ident...
There is a widespread belief that certain patterns of stock prices over time portend specific future...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
Many societal, environmental and technological challenges can be characterized as wicked problems by...
The continuous improvement of fuel cycle simulators in conjunction with the increase of computing ca...
This paper presents a scenario clustering approach intended to mine historical data warehouses to id...
Test scenario generation for testing automated and autonomous driving systems requires knowledge abo...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...
International audienceChronicles are temporal patterns well suited for an abstract representation of...
This paper is about extracting knowledge from large sets of videos, with a particular reference to t...
Dynamic processes generating time series are a phenomenon occurring in many events and systems worth...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...
This paper introduces a Bayesian method for clustering dynamic processes and applies it to the chara...
Multistage stochastic programs are effective for solving long-term planning problems under uncertain...
This paper is intended to mine historical data by presenting a scenario clustering approach to ident...
There is a widespread belief that certain patterns of stock prices over time portend specific future...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...