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E Learning Optimization Using Supervised Artificial Neural Network

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Figure

Table 1. Categorized data set description.
Table 2. Results of the algorithm with 50 hidden neurons.
Figure 2. Plot of the regression values (R).
Figure 4. Plot of the training state.

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