| wevid-package | Quantifying performance of a diagnostic test using the sampling distribution of the weight of evidence favouring case over noncase status |
| auroc.crude | Summary evaluation of predictive performance |
| auroc.model | Summary evaluation of predictive performance |
| cleveland | Example datasets |
| fitonly | Example datasets |
| lambda.crude | Summary evaluation of predictive performance |
| lambda.model | Summary evaluation of predictive performance |
| mean.Wdensities | Summary evaluation of predictive performance |
| pima | Example datasets |
| plotcumfreqs | Plot the cumulative frequency distributions in cases and in controls |
| plotroc | Plot crude and model-based ROC curves |
| plotWdists | Plot the distribution of the weight of evidence in cases and in controls |
| prop.belowthreshold | Proportions of cases and controls below a threshold of weight of evidence |
| recalibrate.p | Recalibrate posterior probabilities |
| summary-densities | Summary evaluation of predictive performance |
| summary.Wdensities | Summary evaluation of predictive performance |
| Wdensities | Compute densities of weights of evidence in cases and controls |
| weightsofevidence | Calculate weights of evidence in natural log units |
| wevid | Quantifying performance of a diagnostic test using the sampling distribution of the weight of evidence favouring case over noncase status |
| wevid.datasets | Example datasets |