Personalized product recommendation strategies based on customer data
Installation
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Electronics buyers → Often want: Accessories, Wearables
Fitness buyers → Often want: Apparel, Water bottles
Eco-conscious → Cross-category sustainable products
Recommendation Flow
1. GATHER context
└─ Check customer preferences (if available)
└─ Review purchase history
└─ Note loyalty tier
└─ Identify stated need
2. FILTER candidates
└─ Match categories
└─ Apply price range
└─ Check brand preferences
3. RANK options
└─ Rating (quality signal)
└─ Relevance to stated need
└─ Complementary to owned items
└─ Avoid recently purchased similar items
4. PRESENT recommendations
└─ Top 3 picks with reasons
└─ Include one "stretch" option if appropriate
└─ Note any loyalty discounts
Personalization Signals
Strong Signals (High Weight)
Explicit preference (user stated)
Recent purchase (last 30 days)
Repeated category purchases
Moderate Signals
Preferred brands
Price range boundaries
Category interests
Weak Signals (Supplementary)
General loyalty tier
Account age
Review engagement
Recommendation Templates
For New Customers (No History)
Based on what you're looking for:
1. [Best rated in category] - Most popular choice
2. [Mid-range option] - Great value
3. [Budget option] - If price is key
Tell me more about your preferences to refine these!
For Returning Customers
Based on your preferences and past purchases:
1. [Category match] - Matches your interest in [category]
2. [Brand match] - From [favorite brand]
3. [Complementary] - Pairs well with your [past purchase]
Your [tier] discount: [X]% off applies!
For Specific Need
For [stated need]:
1. [Best match] - [Why it fits]
2. [Alternative] - [Trade-off explanation]
3. [Premium option] - If you want the best
My top pick: [Product] because [reason].