商品描述
This book is the first to be devoted to the fusion between statistical causal inference and mathematical programming. The main purpose of the book is to provide the algorithms for solving the implication problem of conditional independence statements by using a computer. The concept of conditional independence is very much tied to the factorization of graphical models; hence it is very important to know the rules of conditional independence. Beginning with a brief introduction to linear programming, the book introduces the algebraic representations of conditional independence statements and their applications using linear programming methods. Through simple examples, it is shown that there are at least two different types of linear programming formulations for the implication problem. The first one is based on the concept of supermodular functions. Another is based on the fact that unnecessary information about the factorization of the probability distribution can be removed. This book also provides a detailed explanation of how to implement the solutions for the implication problem of conditional independence statements in R.
商品描述(中文翻譯)
這本書是首部專注於統計因果推斷與數學規劃融合的著作。書籍的主要目的是提供使用電腦解決條件獨立陳述的推論問題的演算法。條件獨立的概念與圖形模型的因式分解密切相關,因此了解條件獨立的規則非常重要。本書首先簡要介紹線性規劃,接著介紹條件獨立陳述的代數表示及其使用線性規劃方法的應用。通過簡單的例子,顯示出至少有兩種不同類型的線性規劃公式用於推論問題。第一種基於超模函數的概念。另一種則基於可以去除有關機率分佈因式分解的多餘資訊的事實。本書還詳細解釋了如何在 R 中實現條件獨立陳述的推論問題的解決方案。