Sentiment Analysis Process


Sentiment analysis process — review, cleaning, classification, transformation, evaluation.

Exhibit 25.25   Sentiment analysis process — review, cleaning, classification, transformation, evaluation.

The Sentiment Analysis process typically follows these steps:

  • Review Dataset: Understand the data at hand, including its source, structure, and content.
  • Data Cleaning: Remove noise, irrelevant information, and inconsistencies to prepare the dataset for analysis.
  • Classification: Assign sentiment labels (positive, negative, neutral) to the text using classifiers.
  • Transformation: Convert the data into a suitable format for analysis.
  • Evaluation: Assess the performance of the model using metrics like accuracy, precision, recall, and F1 score.

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