1.1 KiB
1.1 KiB
Data Mining Techniques
There are several key techniques used to mine data.
1. Classification (Predictive)
- Goal: Assign items to predefined categories (classes).
- Supervised Learning: We know the categories beforehand.
- Example: Is this email Spam or Not Spam?
2. Regression (Predictive)
- Goal: Predict a continuous number.
- Example: Predicting the price of a house based on its size and location.
3. Clustering (Descriptive)
- Goal: Group similar items together.
- Unsupervised Learning: We don't know the groups beforehand.
- Example: Grouping customers into segments (e.g., "High Spenders", "Budget Shoppers").
4. Association Rules (Descriptive)
- Goal: Find relationships between items.
- Market Basket Analysis: "People who buy Bread often also buy Butter."
- Key Terms:
- Support: How often items appear together.
- Confidence: How likely item B is purchased if item A is purchased.
5. Outlier Detection
- Goal: Find unusual data points that don't fit the pattern.
- Example: Detecting credit card fraud (a huge transaction in a usually quiet account).