Search results for "constrained optimization"

showing 10 items of 26 documents

Efficient linear fusion of partial estimators

2018

Abstract Many signal processing applications require performing statistical inference on large datasets, where computational and/or memory restrictions become an issue. In this big data setting, computing an exact global centralized estimator is often either unfeasible or impractical. Hence, several authors have considered distributed inference approaches, where the data are divided among multiple workers (cores, machines or a combination of both). The computations are then performed in parallel and the resulting partial estimators are finally combined to approximate the intractable global estimator. In this paper, we focus on the scenario where no communication exists among the workers, de…

Computer scienceBayesian probabilityInferenceAsymptotic distribution02 engineering and technology01 natural sciences010104 statistics & probability[INFO.INFO-TS]Computer Science [cs]/Signal and Image ProcessingArtificial Intelligence0202 electrical engineering electronic engineering information engineeringStatistical inferenceFusion rules0101 mathematicsElectrical and Electronic EngineeringComputingMilieux_MISCELLANEOUSMinimum mean square errorApplied MathematicsConstrained optimizationEstimator020206 networking & telecommunicationsComputational Theory and MathematicsSignal ProcessingComputer Vision and Pattern RecognitionStatistics Probability and Uncertainty[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processingAlgorithmDigital Signal Processing
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Efficient CNF Encoding of Boolean Cardinality Constraints

2003

In this paper, we address the encoding into CNF clauses of Boolean cardinality constraints that arise in many practical applications. The proposed encoding is efficient with respect to unit propagation, which is implemented in almost all complete CNF satisfiability solvers. We prove the practical efficiency of this encoding on some problems arising in discrete tomography that involve many cardinality constraints. This encoding is also used together with a trivial variable elimination in order to re-encode parity learning benchmarks so that a simple Davis and Putnam procedure can solve them.

Discrete mathematicsTheoryofComputation_MATHEMATICALLOGICANDFORMALLANGUAGESCardinalityUnit propagationComputer scienceConstrained optimizationData_CODINGANDINFORMATIONTHEORYVariable eliminationComputer Science::Computational ComplexityConjunctive normal formBoolean data typeSatisfiability
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Determination of Pareto frontier in multi-objective maintenance optimization

2011

Abstract The objective of a maintenance policy generally is the global maintenance cost minimization that involves not only the direct costs for both the maintenance actions and the spare parts, but also those ones due to the system stop for preventive maintenance and the downtime for failure. For some operating systems, the failure event can be dangerous so that they are asked to operate assuring a very high reliability level between two consecutive fixed stops. The present paper attempts to individuate the set of elements on which performing maintenance actions so that the system can assure the required reliability level until the next fixed stop for maintenance, minimizing both the globa…

DowntimeEngineeringOptimization problemOperations researchbusiness.industryConstrained optimizationPareto principleMulti-objective optimizationPreventive maintenanceIndustrial and Manufacturing EngineeringSpare partMaintenance actionsMaintenance optimization Multi-objective optimization Reliability Series–parallel systemsSafety Risk Reliability and QualitybusinessReliability Engineering & System Safety
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A New Nonparametric Estimate of the Risk-Neutral Density with Applications to Variance Swaps

2021

We develop a new nonparametric approach for estimating the risk-neutral density of asset prices and reformulate its estimation into a double-constrained optimization problem. We evaluate our approach using the S\&P 500 market option prices from 1996 to 2015. A comprehensive cross-validation study shows that our approach outperforms the existing nonparametric quartic B-spline and cubic spline methods, as well as the parametric method based on the Normal Inverse Gaussian distribution. As an application, we use the proposed density estimator to price long-term variance swaps, and the model-implied prices match reasonably well with those of the variance future downloaded from the CBOE websi…

FOS: Computer and information sciencesStatistics and ProbabilityVariance swapOptimization problemvariance swapStatistics - ApplicationsFOS: Economics and businessNormal-inverse Gaussian distributiondouble-constrained optimizationpricingEconometricsApplications (stat.AP)Asset (economics)normal inverse Gaussian distributionMathematicsParametric statisticslcsh:T57-57.97Applied MathematicsNonparametric statisticsEstimatorVariance (accounting)lcsh:Applied mathematics. Quantitative methodsPricing of Securities (q-fin.PR)risk-neutral densitylcsh:Probabilities. Mathematical statisticslcsh:QA273-280Quantitative Finance - Pricing of Securities
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Factorial graphical models for dynamic networks

2015

AbstractDynamic network models describe many important scientific processes, from cell biology and epidemiology to sociology and finance. Estimating dynamic networks from noisy time series data is a difficult task since the number of components involved in the system is very large. As a result, the number of parameters to be estimated is typically larger than the number of observations. However, a characteristic of many real life networks is that they are sparse. For example, the molecular structure of genes make interactions with other components a highly-structured and, therefore, a sparse process. Until now, the literature has focused on static networks, which lack specific temporal inte…

Flexibility (engineering)Dynamic network analysisSociology and Political ScienceSocial PsychologyProcess (engineering)CommunicationConstrained optimizationcomputer.software_genreAutoregressive modelGraphical modelData miningTime seriescomputerBlock (data storage)Network Science
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Improvement of Inventory Control under Parametric Uncertainty and Constraints

2011

The aim of the present paper is to show how the statistical inference equivalence principle (SIEP), the idea of which belongs to the authors, may be employed in the particular case of finding the effective statistical decisions for the multi-product inventory problems with constraints. To our knowledge, no analytical or efficient numerical method for finding the optimal policies under parametric uncertainty for the multi-product inventory problems with constraints has been reported in the literature. Using the (equivalent) predictive distributions, this paper represents an extension of analytical results obtained for unconstrained optimization under parametric uncertainty to the case of con…

Inventory controlMathematical optimizationNumerical analysisStatistical inferenceConstrained optimizationEquivalence principle (geometric)Extension (predicate logic)Pivotal quantityMathematicsParametric statistics
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Explicit Algorithms for a New Time Dependent Model Based on Level Set Motion for Nonlinear Deblurring and Noise Removal

2000

In this paper we formulate a time dependent model to approximate the solution to the nonlinear total variation optimization problem for deblurring and noise removal introduced by Rudin and Osher [ Total variation based image restoration with free local constraints, in Proceedings IEEE Internat. Conf. Imag. Proc., IEEE Press, Piscataway, NJ, (1994), pp. 31--35] and Rudin, Osher, and Fatemi [ Phys. D, 60 (1992), pp. 259--268], respectively. Our model is based on level set motion whose steady state is quickly reached by means of an explicit procedure based on Roe's scheme [ J. Comput. Phys., 43 (1981), pp. 357--372], used in fluid dynamics. We show numerical evidence of the speed of resolution…

Level set (data structures)DeblurringOptimization problemApplied MathematicsConstrained optimizationWhite noiseComputational MathematicsRunge–Kutta methodssymbols.namesakeGaussian noisesymbolsAlgorithmImage restorationMathematicsSIAM Journal on Scientific Computing
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Continuous-time portfolio optimization under terminal wealth constraints

1995

Typically portfolio analysis is based on the expected utility or the mean-variance approach. Although the expected utility approach is the more general one, practitioners still appreciate the mean-variance approach. We give a common framework including both types of selection criteria as special cases by considering portfolio problems with terminal wealth constraints. Moreover, we propose a solution method for such constrained problems.

Mathematical optimizationComputer scienceGeneral MathematicsConstrained optimizationManagement Science and Operations ResearchReplicating portfolioPortfolioPost-modern portfolio theoryProject portfolio managementPortfolio optimizationMathematical economicsSoftwareExpected utility hypothesisModern portfolio theoryZOR Zeitschrift f�r Operations Research Methods and Models of Operations Research
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A New Crowded Comparison Operator in Constrained Multiobjective Optimization for Capacitors Sizing and Siting in Electrical Distribution Systems

2005

This paper presents a new Crowded Comparison Operator (CCO) for NSGA-II to solve the Multiobjective and constrained problem of optimal capacitors placement in electrical distribution systems.

Mathematical optimizationComputer scienceMathematicsofComputing_NUMERICALANALYSISConstrained optimizationComputingMethodologies_ARTIFICIALINTELLIGENCEMulti-objective optimizationSizinglaw.inventionGenetic algorithm capacitor sizing and sitingSettore ING-IND/33 - Sistemi Elettrici Per L'EnergiaDistribution systemCapacitorOperator (computer programming)lawHardware_INTEGRATEDCIRCUITS
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Algorithms for Rational Discrete Least Squares Approximation Part I: Unconstrained Optimization

1976

In this paper a modification of L. Wittmeyer’s method ([1], [14]) for rational discrete least squares approximation is given which corrects for its failure to converge to a non-optimal point in general. The modification makes necessary very little additional computing effort only. It is analysed thoroughly with respect to its conditions for convergence and its numerical properties. A suitable implementation is shown to be benign in the sense of F. L. Bauer [2]. The algorithm has proven successful even in adverse situations.

Mathematical optimizationComputer scienceNon-linear least squaresDiscrete optimizationConvergence (routing)Point (geometry)Quadratic unconstrained binary optimizationUnconstrained optimizationTotal least squaresAlgorithmLeast squares
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