Sustainable water resources management in arid and semi-arid areas needs robust models, which allow accurate
and reliable predictive modeling. This issue has motivated the researchers to develop hybrid models that offer
solutions on modelling problems and accurate predictions of groundwater potential zonation. For this purpose,
this research aims to investigate the capability and robustness of a novel hybrid model, namely the logistic model
tree (LMT) and compares it with state-of-the-art models such as the support vector machine and C4.5 models that
locate potential zones for groundwater springs. A spring location dataset consisting of 359 springs was provided
by field surveys and national reports and from which three different sample data sets (S1–S3) were randomly
prepared (70% for training and 30% for validation). Additionally, 16 spring-related factors were analyzed using
regression logistic analysis to find which factors play a significant role in spring occurrence. Twelve significant
geo-environmental and morphometric factors were identified and applied in all models. The accuracy of models
was evaluated by three different threshold-dependent and –Independent methods including efficiency (E), true
skill statistic (TSS), and area under the receiver operating characteristics curve (AUC-ROC) methods. Results
showed that the LMT model had the highest accuracy performance for all three validation datasets
(Emean = 0.860, TSSmean = 0.718, AUC-ROCmean = 0.904); although a slight sensitivity to change in input data
was sometimes observed for this model. Furthermore, the findings showed that relative slope position (RSP) was
the most important factor followed by distance from faults and lithology.