12 research outputs found
Automatic Formulation of Stochastic Programs Via an Algebraic Modeling Language
This paper presents an open source tool that automatically generates the so-called deterministic equivalent in stochastic programming. The tool is based on the algebraic modeling language ampl. The user is only required to provide the deterministic version of the stochastic problem and the information on the stochastic process, either as scenarios or as a transitions-based event tre
A novel long non-coding natural antisense RNA is a negative regulator of Nos1 gene expression
Long non-coding natural antisense transcripts (NATs) are widespread in eukaryotic species. Although recent studies indicate that long NATs are engaged in the regulation of gene expression, the precise functional roles of the vast majority of them are unknown. Here we report that a long NAT (Mm-antiNos1 RNA) complementary to mRNA encoding the neuronal isoform of nitric oxide synthase (Nos1) is expressed in the mouse brain and is transcribed from the non-template strand of the Nos1 locus. Nos1 produces nitric oxide (NO), a major signaling molecule in the CNS implicated in many important functions including neuronal differentiation and memory formation. We show that the newly discovered NAT negatively regulates Nos1 gene expression. Moreover, our quantitative studies of the temporal expression profiles of Mm-antiNos1 RNA in the mouse brain during embryonic development and postnatal life indicate that it may be involved in the regulation of NO-dependent neurogenesis
Scenario trees and policy selection for multistage stochastic programming using machine learning
We propose a hybrid algorithmic strategy for complex stochastic optimization
problems, which combines the use of scenario trees from multistage stochastic
programming with machine learning techniques for learning a policy in the form
of a statistical model, in the context of constrained vector-valued decisions.
Such a policy allows one to run out-of-sample simulations over a large number
of independent scenarios, and obtain a signal on the quality of the
approximation scheme used to solve the multistage stochastic program. We
propose to apply this fast simulation technique to choose the best tree from a
set of scenario trees. A solution scheme is introduced, where several scenario
trees with random branching structure are solved in parallel, and where the
tree from which the best policy for the true problem could be learned is
ultimately retained. Numerical tests show that excellent trade-offs can be
achieved between run times and solution quality
Automatic Formulation of Stochastic Programs Via an Algebraic Modeling Language
This paper presents an open source tool that automatically generates the so-called deterministic equivalent in stochastic programming. The tool is based on the algebraic modeling language ampl. The user is only required to provide the deterministic version of the stochastic problem and the information on the stochastic process, either as scenarios or as a transitions-based event tree
The Benefits of Cooperation Under Uncertainty: the Case of Climate Change
This article presents an analysis of the behaviour of countries defining their climate policies in an uncertain context. The analysis is made using the S-CWS model, a stochastic version of an integrated assessment growth model. The model includes a stochastic definition of the climate sensitivity parameter. We show that the impact of uncertainty on policy design critically depends on the shape of the damage function. We also examine the benefits of cooperation in the context of uncertainty:We highlight the existence of an additional benefit of cooperation, namely risk reduction
Assessing the Future of Renewable and Smart Grid Technologies in Regional Energy Systems
Bounds for Multistage Stochastic Programs using Supervised Learning Strategies
Abstract. We propose a generic method for obtaining quickly good upper bounds on the minimal value of a multistage stochastic program. The method is based on the simulation of a feasible decision policy, synthesized by a strategy relying on any scenario tree approximation from stochastic programming and on supervised learning techniques from machine learning.
Day-ahead market bidding for a Nordic hydropower producer: taking the Elbas market into account
Stochastic programming, Mixed integer programming, Electricity auctions, Elbas, Hydroelectric scheduling, GARCH,