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Model Metric Co-Learning for Time Series Classification.

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Figure

Figure 1: Illustration of the parameterized state space modelsused in this work. The parameterized state space model has acontainsrfixed topology, i.e
Figure 2: Outline of the MMCL framework.
Figure 3: (a) illustration of 3 NARMA sequences. (b) the classification accuracies on the synthetic (test) data sets
Table 1: Description of the data sets (left) and the performances (best is boldfaced)

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