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A practical guide to Market Basket Analysis, explaining how item associations drive cross-selling and smarter merchandising.
Market Basket Analysis (MBA) is a data mining technique used to identify patterns and relationships between products that customers frequently purchase together. It helps businesses understand buying behaviour and optimize product placement, cross-selling, and promotions.
Definition
Market Basket Analysis is a statistical method that evaluates co-occurrence patterns in transaction data to determine which items are commonly bought together.
Market Basket Analysis is commonly used in retail and e‑commerce. By analyzing purchase data, businesses can uncover associations such as:
This is done using association rule learning, typically with the Apriori or FP‑Growth algorithms.
Key metrics include:
Support(A → B):
Support = (Transactions containing A and B) ÷ (Total transactions)
Confidence(A → B):
Confidence = Support(A and B) ÷ Support(A)
Lift(A → B):
Lift = Confidence(A → B) ÷ Support(B)
A supermarket discovers through Market Basket Analysis that shoppers who buy pasta frequently also buy tomato sauce. As a result, they bundle these items or place them near each other to increase sales.
Market Basket Analysis helps businesses:
No, it is used in banking, telecom, healthcare, and e‑commerce.
Apriori and FP‑Growth.
It works best with large transactional datasets but can be applied to smaller ones.