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Social Media Sentiment Analysis using Machine Learning and Optimization Techniques

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Figure

Fig. (1) : General Methodology for sentiment analysis
Fig (3) : Feature Extraction process
Figure 3.5 illustrates a sample of a linear SVM has been trained on examples from two classes
Table (1): Confusion Matrix

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