基于压缩编码的估计与推理

C. S. Wallace, P. Freeman
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引用次数: 586

摘要

通常的统计模型所表示的一组数据中的系统变化,可用于将数据编码为比纯随机数据更紧凑的形式。编码的形式有两个部分。第一个声明模型中未知参数的推断估计,第二个使用基于这些参数估计所隐含的数据概率分布的最优代码来声明数据。选择给出最紧凑编码的模型和估计会导致一个有趣的一般推理过程。在严格的形式下,它具有很好的通用性和几个很好的性质,但在计算上是不可行的。提出了一种近似形式,并探讨了它与其他方法的关系。
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Estimation and Inference by Compact Coding
SUMMARY The systematic variation within a set of data, as represented by a usual statistical model, may be used to encode the data in a more compact form than would be possible if they were considered to be purely random. The encoded form has two parts. The first states the inferred estimates of the unknown parameters in the model, the second states the data using an optimal code based on the data probability distribution implied by those parameter estimates. Choosing the model and the estimates that give the most compact coding leads to an interesting general inference procedure. In its strict form it has great generality and several nice properties but is computationally infeasible. An approximate form is developed and its relation to other methods is explored.
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