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Efficient parallel spectral clustering algorithm design for large data sets under cloud computing environment

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Figure

Figure 1 Parallel computing similar matrix on MapReduce.
Figure 2 Parallelized Lanczos on MapReduce to calculate Laplacian’s feature vector.
Figure 3 K-means parallel process based Mapreduce.
Table 1 Comparison of clustering accuracy of stand-alone mode and parallel algorithm mode proposed in the paper
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