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Optimization Algorithms for Scalable Stream Batch Clustering with k Estimation
2022
Applied Sciences
The increasing volume and velocity of the continuously generated data (data stream) challenge machine learning algorithms, which must evolve to fit real-world problems. The data stream clustering algorithms face issues such as the rapidly increasing volume of the data, the variety of the number of clusters, and their shapes. The present work aims to improve the accuracy of sequential clustering batches of data streams for scenarios in which clusters evolve dynamically and continuously,
doi:10.3390/app12136464
fatcat:g6hes5igmndpdbuk2zbnhhudfu