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A Data Stream Ensemble Assisted Multifactorial Evolutionary Algorithm for Offline Data-driven Dynamic Optimization
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TL;DR: A data-driven optimization algorithm to deal with the challenges presented by the dynamic environments by adopting a data stream ensemble learning method to train the surrogates and a multi-task evolutionary algorithm is employed to simultaneously optimize the problems in the past environments assisted by the ensemble surrogate.
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Abstract: Existing work on data-driven optimization focuses on problems in static environments, but little attention has been paid to problems in dynamic environments. This paper proposes a data-driven optimization algorithm to deal with the challenges presented by the dynamic environments. First, a data stream ensemble learning method is adopted to train the surrogates so that each base learner of the ensemble learns the time-varying objective function in the previous environments. After that, a multi-task evolutionary algorithm is employed to simultaneously optimize the problems in the past environments assisted by the ensemble surrogate. This way, the optimization tasks in the previous environments can be used to accelerate the tracking of the optimum in the current environment. Since the real fitness function is not available for verifying the surrogates in offline data-driven optimization, a support vector domain description that was designed for outlier detection is introduced to select a reliable solution. Empirical results on six dynamic optimization benchmark problems demonstrate the effectiveness of the proposed algorithm compared with four state-of-the-art data-driven optimization algorithms.
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Citations
Introduction to Optimization
Yaochu Jin,Handing Wang,Chaoli Sun +2 more
- 01 Jan 2021
TL;DR: In this article, the authors introduce the fundamentals of optimization, including the mathematical formulation of an optimization problem, convexity and types of optimization problems, single-and multi-objective optimization, and other important aspects of optimization such as robust optimization and dynamic optimization.
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Solving Expensive Optimization Problems in Dynamic Environments with Meta-learning
TL;DR: A simple yet effective meta-learning-based optimization framework for solving expensive dynamic optimization problems, allowing any off-the-shelf continuously differentiable surrogate model to be used in a plug-in manner, either in data-driven evolutionary optimization or BO approaches.
Offline Big or Small Data-Driven Optimization and Applications
Yaochu Jin,Handing Wang,Chaoli Sun +2 more
- 01 Jan 2021
TL;DR: In this article, a big data driven offline optimization algorithm that adaptively clusters the data to reduce the computation time for trauma systems optimization is presented, and three model management strategies for offline small data-driven optimization are described.
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Large sample properties of simulations using latin hypercube sampling
TL;DR: In this paper, a method for producing Latin hypercube samples when the components of the input variables are statistically dependent is described, and the estimate is also shown to be asymptotically normal.
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Support vector domain description
TL;DR: This paper shows the use of a data domain description method, inspired by the support vector machine by Vapnik, called the support vectors domain description (SVDD), which can be used for novelty or outlier detection and is compared with other outlier Detection methods on real data.
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