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首页> 外文期刊>Frontiers in Ecology and Evolution >Errors in Statistical Inference Under Model Misspecification: Evidence, Hypothesis Testing, and AIC
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Errors in Statistical Inference Under Model Misspecification: Evidence, Hypothesis Testing, and AIC

机译:模型错误指定下的统计推断错误:证据,假设检验和AIC

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The methods for making statistical inferences in scientific analysis have diversified even within the frequentist branch of statistics, but comparison has been elusive. We approximate analytically and numerically the performance of Neyman-Pearson hypothesis testing, Fisher significance testing, information criteria, and evidential statistics (Royall, 1997). This last approach is implemented in the form of evidence functions: statistics for comparing two models by estimating, based on data, their relative distance to the generating process (i.e. truth) (Lele, 2004). A consequence of this definition is the salient property that the probabilities of misleading or weak evidence, error probabilities analogous to Type 1 and Type 2 errors in hypothesis testing, all approach 0 as sample size increases. Our comparison of these approaches focuses primarily on the frequency with which errors are made, both when models are correctly specified, and when they are misspecified, but also considers ease of interpretation. The error rates in evidential analysis all decrease to 0 as sample size increases even under model misspecification. Neyman-Pearson testing on the other hand, exhibits great difficulties under misspecification. The real Type 1 and Type 2 error rates can be less, equal to, or greater than the nominal rates depending on the nature of model misspecification. Under some reasonable circumstances, the probability of Type 1 error is an increasing function of sample size that can even approach 1! In contrast, under model misspecification, an evidential analysis retains the desirable properties of always having a greater probability of selecting the best model over an inferior one and of having the probability of selecting the best model increase monotonically with sample size. We show that the evidence function concept fulfills the seeming objectives of model selection in ecology, both in a statistical as well as scientific sense, and that evidence functions are intuitive and easily grasped. We find that consistent information criteria are evidence functions but the MSE minimizing (or efficient) information criteria (e.g. AIC, AICc, TIC) are not. The error properties of the MSE minimizing criteria switch between those of evidence functions and those of Neyman-Pearson tests depending on models being compared.
机译:科学分析中进行统计推断的方法甚至在统计的常识性分支内也多种多样,但比较却难以捉摸。我们在分析和数值上近似估算Neyman-Pearson假设检验,Fisher显着性检验,信息标准和证据统计的性能(Royall,1997)。最后一种方法是以证据功能的形式实现的:统计数据用于比较两个模型,方法是根据数据估计它们与生成过程的相对距离(即真相)(Lele,2004年)。该定义的结果是显着的属性,即在假设检验中具有误导性或弱证据的概率,类似于类型1和类型2错误的错误概率,随着样本量的增加,都接近0。我们对这些方法的比较主要集中在错误发生的频率上,无论是正确指定模型还是错误指定模型,而且考虑到易于解释。即使在模型错误指定的情况下,证据样本中的错误率也会随着样本大小的增加而全部降低为0。另一方面,内曼-皮尔森(Neyman-Pearson)测试在规格错误的情况下显示出很大的困难。类型1和类型2的实际错误率可以小于,等于或大于标称错误率,具体取决于模型错误指定的性质。在某些合理的情况下,类型1错误的概率是样本大小的递增函数,甚至可以接近1!相反,在模型错误指定的情况下,证据分析保留了理想的属性,即总是具有比劣等模型更好的选择最佳模型的可能性,并且随着样本量的增加单调增加选择最佳模型的可能性。我们证明了证据功能概念在统计和科学意义上都满足了生态学中模型选择的看似目标,并且证据功能直观且易于掌握。我们发现一致的信息标准是证据功能,但MSE最小化(或有效)信息标准(例如AIC,AICc,TIC)不是。根据所比较的模型,MSE最小化准则的错误属性在证据函数的错误属性和Neyman-Pearson检验的错误属性之间切换。

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