Approximating Probability Distribution Function based upon Mixture Distribution Optimized by Genetic Algorithm and its Application to Tail Distribution Analysis using Importance Sampling Method
スポンサーリンク
概要
著者
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Tan Kangrong
Faculty Of Economics Kurume University
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Tokinaga Shozo
Graduate School Of Economics Kyushu University
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Tokinaga Shozo
Graduate School Economics Kyushu University
関連論文
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