ERN: Truncated & Censored Models (Multiple) (Topic)最新文献

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Multivariate Customer Demand: Modeling and Estimation from Censored Sales 多元顾客需求:基于删减销售的建模与估计
ERN: Truncated & Censored Models (Multiple) (Topic) Pub Date : 2009-01-28 DOI: 10.2139/ssrn.1334353
C. Stefanescu
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引用次数: 29
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