“…Handling imbalanced data is a challenging technical issue that is important in various application scenarios, such as medical area (e.g., medical diagnosis 4 ), informatics (e.g., text categorization 5 ), and financial markets (e.g., fraudulent credit card transactions 6 ). In addition to these more traditional fields, there are also some new ones, such as meteorology (e.g., wind speed forecasts 7 ), biology (e.g., estimation of plant transpiration 8 ), geography (e.g., prediction of vegetation conditions 9 ), and metabolomics. 10 The problem of data imbalance has always been a challenge that many scientists strive to solve, but only a few aspects related to imbalanced learning have been addressed with some solutions.…”