1. What are the contributions in "Improved overlap-based undersampling for imbalanced dataset classification with application to epilepsy and parkinson's disease" ?
In this paper, the authors proposed an adaptive threshold OBU ( AdaOBU ) with an automatic elimination threshold adaptable to the degree of class overlap for more accurate identification and elimination of overlapped negative instances.
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2. What have the authors stated for future works in "Improved overlap-based undersampling for imbalanced dataset classification with application to epilepsy and parkinson's disease" ?
Future work will address limitations of the methods.. Results showed that the performance of BoostOBU could be highly depen- dant on how BLSMOTE performs, thus other oversampling methods that could provide better results may be explored.. This issue may be addressed with other soft clustering algorithms that showed less dependency on similarity measure such as ones used in Ref. 44, 45.. Alternatively, projecting data onto a lower-dimensional space using a technique such as Principle Components Analysis may be considered.
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