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Grid-Enabled Adaptive Metamodeling and Active Learning for Computer Based Design

机译:基于计算机设计的支持支持的自适应元形和主动学习

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Many complex, real world phenomena are difficult to study directly using controlled experiments. Instead, the use of computer simulations has become commonplace as a feasible alternative. However, due to the computational cost of these high fidelity simulations, the use of neural networks, kernel methods, and other surrogate modeling techniques have become indispensable. Surrogate models are compact and cheap to evaluate, and have proven very useful for tasks such as optimization, design space exploration, prototyping, and sensitivity analysis. Consequently, in many scientific fields there is great interest in techniques that facilitate the construction of such regression models, while minimizing the computational cost and maximizing model accuracy. This paper presents a fully automated machine learning toolkit for regression modeling and active learning to tackle these issues. A strong focus is placed on adaptivity, self-tuning and robustness in order to maximize efficiency and make the algorithms and tools easily accessible to other scientists in computational science and engineering.
机译:许多复杂的现实世界现象很难直接使用受控实验学习。相反,使用计算机模拟已经成为可行的替代方案。然而,由于这些高保真仿真的计算成本,使用神经网络,内核方法和其他代理建模技术已经变得不可或缺。代理模型是紧凑且廉价的评估,并已证明对优化,设计空间探索,原型设计和敏感性分析等任务非常有用。因此,在许多科学领域,对促进这种回归模型的构建的技术非常兴趣,同时最小化计算成本和最大化的模型精度。本文介绍了一个全自动机器学习工具包,用于回归建模和主动学习,以解决这些问题。强烈的重点是适应性,自我调整和稳健性,以最大限度地提高效率,使算法和工具可以在计算科学和工程中的其他科学家易于访问。

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