A lot of studies on the summary measures of predictive strength of categorical response models consider the likelihood ratio index (LRI), also known as the McFadden-$R^2$, a better option than many other measures. We propose a simple modification of the LRI that adjusts for the effect of the number of response categories on the measure and that also rescales its values, mimicking an underlying latent measure. The modified measure is applicable to both binary and ordinal response models fitted by maximum likelihood. Results from simulation studies and a real data example on the olfactory perception of boar taint show that the proposed measure outperforms most of the widely used goodness-of-fit measures for binary and ordinal models. The proposed $R^2$ interestingly proves quite invariant to an increasing number of response categories of an ordinal model.
翻译:关于绝对反应模型预测力的简要计量方法的许多研究认为,可能性比率指数(LRI)也称为McFadden-$R2$)比许多其他措施更好,我们建议简单修改LRI,根据响应类别对措施的影响进行调整,同时调整其值,模仿潜在潜值测量值。修改后的措施适用于以最大可能性适应的二进制和正态反应模型。模拟研究的结果和关于对野牛罐头的嗅觉的真实数据实例表明,拟议的措施超过了对二进制和半成模型广泛使用的多数良好措施。提议的$R2$对于一个或成模型越来越多的响应类别来说是相当不易的。