Abstract

Big data plays a major role in the learning, manipulation, and forecasting of information intelligence. Due to the imbalance of data delivery, the learning and retrieval of information from such large datasets can result in limited classification outcomes and wrong decisions. Traditional machine learning classifiers successfully handling the imbalanced datasets still there is inadequacy in overfitting problems, training cost, and sample hardness in classification. In order to forecast a better classification, the research work proposed the novel “Self-Boosted with Dynamic Semi-Supervised Clustering Method”. The method is initially preprocessed by constructing sample blocks using Hybrid Associated Nearest Neighbor heuristic over-sampling to replicate the minority samples and merge each copy with every sub-set of majority samples to remove the overfitting issue thus slightly reduce noise with the imbalanced data. After preprocessing the data, massive data classification requires big data space which leads to large training costs.

Full Text
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