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首页> 外文期刊>Behavior Genetics: An International Journal Devoted to Research in the Inheritance of Behavior in Animals and Man >An empirical comparison of information-theoretic selection criteria for multivariate behavior genetic models.
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An empirical comparison of information-theoretic selection criteria for multivariate behavior genetic models.

机译:多元行为遗传模型的信息理论选择标准的经验比较。

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Information theory provides an attractive basis for statistical inference and model selection. However, little is known about the relative performance of different information-theoretic criteria in covariance structure modeling, especially in behavioral genetic contexts. To explore these issues, information-theoretic fit criteria were compared with regard to their ability to discriminate between multivariate behavioral genetic models under various model, distribution, and sample size conditions. Results indicate that performance depends on sample size, model complexity, and distributional specification. The Bayesian Information Criterion (BIC) is more robust to distributional misspecification than Akaike's Information Criterion (AIC) under certain conditions, and outperforms AIC in larger samples and when comparing more complex models. An approximation to the Minimum Description Length (MDL; Rissanen, J. (1996). IEEE Transactions on Information Theory 42:40-47, Rissanen, J. (2001). IEEE Transactions on Information Theory 47:1712-1717) criterion, involving the empirical Fisher information matrix, exhibits variable patterns of performance due to the complexity of estimating Fisher information matrices. Results indicate that a relatively new information-theoretic criterion, Draper's Information Criterion (DIC; Draper, 1995), which shares features of the Bayesian and MDL criteria, performs similarly to or better than BIC. Results emphasize the importance of further research into theory and computation of information-theoretic criteria.
机译:信息论为统计推断和模型选择提供了有吸引力的基础。然而,关于协方差结构建模中不同信息理论标准的相对性能知之甚少,尤其是在行为遗传背景下。为了探讨这些问题,比较了信息理论拟合标准,以区分在各种模型,分布和样本量条件下的多元行为遗传模型。结果表明,性能取决于样本量,模型复杂性和分布规范。在某些条件下,贝叶斯信息准则(BIC)比Akaike的信息准则(AIC)更能抵抗分布错误,在较大样本中以及比较更复杂的模型时,贝叶斯信息准则(BIC)优于AIC。最小描述长度的近似值(MDL; Rissanen,J.(1996)。IEEE Transactions on Information Theory 42:40-47,Rissanen,J.(2001)。IEEE Transactions on Information Theory 47:1712-1717)准则,由于估算Fisher信息矩阵的复杂性,涉及经验Fisher信息矩阵的数据表现出可变的性能模式。结果表明,相对较新的信息理论标准Draper's Information Criterion(DIC; Draper,1995)具有贝叶斯和MDL标准的特征,其性能与BIC相似或更好。结果强调了进一步研究信息理论标准的理论和计算的重要性。

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