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Minimum Message Length Ridge Regression for Generalized Linear Models

机译:广义线性模型的最小消息长度岭回归

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This paper introduces an information theoretic model selection and ridge parameter estimation criterion for generalized linear models based on the minimum message length principle. The criterion is highly general in nature, and handles a range of target distributions, including the normal, binomial, Poisson, geometric and gamma distributions. Estimation of the regression parameters, the ridge hyperparameter and the set of covariates associated with the targets is all performed within the same framework by minimisation of the message length. Experiments on simulated and real data suggest that the criterion is com-petetive with, and often superior to, the corrected Akaike information criterion in terms of both parameter estimation and model selection tasks.
机译:介绍了基于最小消息长度原理的广义线性模型的信息理论模型选择和岭参数估计准则。该标准本质上是高度通用的,并且处理一系列目标分布,包括正态分布,二项式分布,泊松分布,几何分布和伽马分布。通过最小化消息长度,可以在同一框架内对回归参数,岭超参数以及与目标相关联的一组协变量进行估算。在模拟数据和真实数据上进行的实验表明,该标准在参数估计和模型选择任务方面与经过修正的Akaike信息标准具有竞争性,并且通常优于该标准。

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