2021
DOI: 10.48550/arxiv.2107.11508
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Imbalanced Big Data Oversampling: Taxonomy, Algorithms, Software, Guidelines and Future Directions

Abstract: Learning from imbalanced data is among the most challenging areas in contemporary machine learning. This becomes even more difficult when considered the context of big data that calls for dedicated architectures capable of high-performance processing. Apache Spark is a highly efficient and popular architecture, but it poses specific challenges for algorithms to be implemented for it. While oversampling algorithms are an effective way for handling class imbalance, they have not been designed for distributed env… Show more

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