Small improvements in the systems about credit scoring can suppose great profits. Ensembles of classifiers achieve the better results for credit risk assessment. To look for the best base classifier used in ensembles on credit datasets is an important task. Via experiments, it is shown that the credal decision tree classifier is the best one to be used in ensembles. The study uses several of the most successful ensemble schemes and single classifiers.