As science and technology progress and develop rapidly in this day and age, various industry applications have changed the data in a new way, and the explosive growth of data has made traditional data mining unable to perform the current data mining work. The aim of this paper is to study the aggregation digging of big data based around flocking automation algorithms under circumstances of cloud. There is a fuzzy-mean aggregation arrangement with mixed frog leaping in this paper. Through simulation analysis of different clustering algorithms, hybrid frog-hopping and as well as the merging arrangement introduced in this paper, it is concluded that the merging algorithm achieves an improvement of up to 90% accuracy on the iritual membrane dataset. It was demonstrated that the arrangement provides effective agglomerations. When the number of iterations is 500, the fitness value of the algorithm on Dataset 1 is 1.59 × 104, and its convergence speed is faster than the other algorithms.
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