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Openai/694257a5-9a50-8004-b15d-8af3ca7857db
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==== JAMA Guide to Statistics and Methods ==== * Pattern-Mixture Models for Missing Data<ref>{{cite web|title=Pattern-Mixture Models for Missing Data|url=https://chatgpt.com/share/Pattern-Mixture%20Models%20for%20Missing%20Data|publisher=Pattern-Mixture Models for Missing Data|access-date=2025-12-18}}</ref> 中文標題:缺失資料的 Pattern-Mixture Models 類型:Methods/Statistics(JAMA Guide to Statistics and Methods) 導讀:當缺失資料可能非隨機(MNAR)時,pattern-mixture models 以「缺失模式」分層建模並做敏感度分析,用來檢驗主要結論對缺失假設的穩健性。 JAMA Network<ref>{{cite web|title=JAMA Network|url=https://jamanetwork.com/journals/jama/article-abstract/2840739|publisher=JAMA Network|access-date=2025-12-18}}</ref>
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