Sentiment Analysis — Classification

Sentiment Analysis — Classification.

Exhibit 25.26   Sentiment analysis classification: Each data instance is pre-assigned a sentiment label — positive, negative, neutral.

Classification in Sentiment Analysis involves using machine learning algorithms (classifiers) to assign sentiment labels to text based on features within the data. Classifiers are trained on labelled datasets, where each data instance is pre-assigned a sentiment label (e.g., positive, negative, neutral). The classifier learns patterns from this training data and applies them to predict the sentiment of new, unseen data. Besides Sentiment Analysis, classifiers are also used in spam detection, fraud detection, image recognition, and other applications.


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