Multi-fidelity Gaussian process modeling for chemical energy surfaces
نویسندگان
چکیده
منابع مشابه
Multi-fidelity Gaussian Process Bandit Optimisation
In many scientific and engineering applications, we are tasked with the optimisation of an expensive to evaluate black box function f . Traditional settings for this problem assume just the availability of this single function. However, in many cases, cheap approximations to f may be obtainable. For example, the expensive real world behaviour of a robot can be approximated by a cheap computer s...
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In many scientific and engineering applications, we are tasked with the optimisation of an expensive to evaluate black box function f . Traditional methods for this problem assume just the availability of this single function. However, in many cases, cheap approximations to f may be obtainable. For example, the expensive real world behaviour of a robot can be approximated by a cheap computer si...
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Article history: Received 17 July 2016 Received in revised form 10 November 2016 Accepted 23 January 2017 Available online xxxx
متن کاملGaussian Process Bandit Optimisation with Multi-fidelity Evaluations
In many scientific and engineering applications, we are tasked with the optimisation of an expensive to evaluate black box function f . Traditional methods for this problem assume just the availability of this single function. However, in many cases, cheap approximations to f may be obtainable. For example, the expensive real world behaviour of a robot can be approximated by a cheap computer si...
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ژورنال
عنوان ژورنال: Chemical Physics Letters: X
سال: 2019
ISSN: 2590-1419
DOI: 10.1016/j.cpletx.2019.100022