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DMCT-NOTES/unit 4/01_Classification_Basics.md
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Classification Basics

What is Classification?

Classification is the process of predicting the class label of a data item.

  • Goal: To assign a category to a new item based on past data.
  • Example:
    • Input: A bank loan application.
    • Output Class: "Safe" or "Risky".

Classification vs Prediction

  • Classification: Predicts a category (Discrete value).
    • Example: Yes/No, Red/Blue/Green.
  • Prediction (Regression): Predicts a number (Continuous value).
    • Example: Predicting the price of a house ($500k, $505k...).

The Process

  1. Training Phase (Learning):
    • The algorithm learns from a "Training Set" where the correct answers (labels) are known.
    • It builds a Model (e.g., a Decision Tree).
  2. Testing Phase (Classification):
    • The model is tested on new, unseen data ("Test Set").
    • We check the Accuracy: Percentage of correct predictions.