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Recovering Probability Distributions from Missing Data

机译:从丢失的数据中恢复概率分布

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A probabilistic query may not be estimable from observed data corrupted by missing values if the data are not missing at random (MAR). It is therefore of theoretical interest and practical importance to determine in principle whether a probabilistic query is estimable from missing data or not when the data are not MAR. We present algorithms that systematically determine whether the joint probability distribution or a target marginal distribution is estimable from observed data with missing values, assuming that the data-generation model is represented as a Bayesian network, known as m-graphs, that not only encodes the dependencies among the variables but also explicitly portrays the mechanisms responsible for the missingness process. The results significantly advance the existing work.
机译:如果数据不是随机丢失(MAR),则可能无法根据丢失值损坏的观察数据来估计概率查询。因此,原则上确定在数据不是MAR的情况下是否可以根据丢失的数据来估计概率查询具有理论意义和实践意义。我们提出的算法可以系统地确定联合概率分布或目标边际分布是否可从具有缺失值的观测数据中估算出来,假设数据生成模型表示为贝叶斯网络(称为m-图),不仅可以对变量之间的依赖关系,但也明确描绘了造成缺失过程的机制。结果大大推进了现有工作。

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