Approximation method for computationally expensive nonconvex multiobjective optimization problems
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University of JyväskyläISBN
978-951-39-4968-6ISSN Search the Publication Forum
1456-5390Keywords
monitavoiteoptimointi Pareto-optimointi Pareto-tehokkuus laskennallinen vaativuus multiobjective optimization computational cost computational efficiency Pareto front approximation surrogate function interactive decision making decision maker psychological convergence Pareto dominancy Pareto optimality päätöksenteko optimointi menetelmät laskennalliset menetelmät approksimointi
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