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Efficient analysis of data streams

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Figure

Figure 2.2.2: Two example similarity graphs and their corresponding adjacency matrices.
Figure 2.4.3: Possible micro-cluster locations in a toy example.
Table 2.5.1: Select of nMicro parameter for CluStream.
Table 2.5.2: Selection of window size parameter for windowed algorithm.
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