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A FRAMEWORK FOR ARABIC SENTIMENT ANALYSIS USING MACHINE LEARNING CLASSIFIERS

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Figure

Table 1: CICIDS2017 dataset [5]
Table 5: Semi-balanced dataset
 Table 8.
Figure 5:  Scaling functions evaluation
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