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局部因果关系分析的隐变量发现算法
引用本文:姚宏亮,吴立辉,王 浩,李俊照.局部因果关系分析的隐变量发现算法[J].计算机科学与探索,2014(4):456-466.
作者姓名:姚宏亮  吴立辉  王 浩  李俊照
作者单位:合肥工业大学计算机与信息学院,合肥230009
基金项目:The National Natural Science Foundation of China under Grant Nos. 61175051, 61070131, 61175033 (国家自然科学基金).
摘    要:结构分析的隐变量发现方法难以有效地发现隐变量且可解释性较差。基于因果关系和局部结构的不确定性,提出了一种基于局部因果关系分析的隐变量发现算法(hidden variable discovering algorithm based on local causality analysis,LCAHD)。LCAHD算法给出了因果结构熵的定义,将因果知识和不确定性知识相融合,以因果关系的不确定性程度作为隐变量存在的判定依据,并对这一依据进行了理论上的论证。LCAHD算法首先通过寻找目标变量的马尔科夫毯来提取局部依赖结构,并基于扰动学习获得扰动数据,联合扰动数据和观测数据学习局部依赖结构中的因果关系;然后利用因果结构熵对局部因果结构中因果关系的不确定性进行度量,并利用隐变量和因果关系不确定性之间的相关性判定条件,确定隐变量的存在性。分别针对标准网络和股票网络进行了实验,结果表明,该算法能准确地确定隐变量的位置,具有较好的解释性。

关 键 词:隐变量  马尔科夫毯  扰动学习  因果关系分析  因果结构熵

Hidden Variable Discovering Algorithm Based on Local Causality Analysis
YAO Hongliang,WU Lihui,WANG Hao,LI Junzhao.Hidden Variable Discovering Algorithm Based on Local Causality Analysis[J].Journal of Frontier of Computer Science and Technology,2014(4):456-466.
Authors:YAO Hongliang  WU Lihui  WANG Hao  LI Junzhao
Affiliation:( School of Computer and Information, Hefei University of Technology, Hefei 230009, China)
Abstract:Hidden variable discovering algorithm of structural analysis is difficult to discover hidden variables effec-tively and possesses poor interpretability. Based on the causality and the uncertainty of local structure, this paper presents a hidden variable discovering algorithm based on local causality analysis (LCAHD). LCAHD algorithm intro-duces the definition of causal structure entropy, which integrates causal knowledge and uncertainty knowledge, regards the uncertainty of causality as the judgment of the existence of hidden variables, and proves the judgment theoreti-cally. Firstly, LCAHD algorithm obtains the Markov blanket of interested variable to extract the local dependency structure, then utilizes interventional to generate interventional data, and joints interventional data and observational data to study local causality in the local dependency structure. Secondly, it utilizes causal structure entropy to measure the uncertainty of causality in the local causal structure, and utilizes the judging criteria of hidden variables and the uncertainty of causality to determine the existence of hidden variables. This paper carries on experiments on the stan-dard network and stock network respectively. The experimental results show that this algorithm can effectively deter-mine the location of hidden variables with strong interpretability.
Keywords:hidden variables  Markov blanket  intervention learning  causality analysis  causal structure entropy
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