“…The accuracy, precision, F1-Score, and recall measurement results of every method are shown in Table 3 In keeping with the outcomes of this study and present state-of-the-art technologies for identifying fraud. For example, our framework obtains an accuracy of 99%, outperforming the CNN-SVM [27], Harris water optimization-RNN [40], and Decision Tree [39] models, producing 90% to 97% accuracy. Moreover, our model has superior precision, recall, and F1-Score ratings of 91%, 97%, and 91%, surpassing the Bidirectional Gated Recurrent Units [41], Decision Tree [38], and K-Nearest Neighbors with CatBoost [39] on these measures.…”