Our first lookalike campaign was a disaster. We uploaded our entire user base as a seed, created a 10% expansion, and wondered why performance tanked. Turns out, we'd essentially told the algorithm to find "people who might install our app"—not exactly groundbreaking targeting. The magic of lookalikes isn't in the technology; it's in the seed.
How Lookalikes Actually Work
Platforms analyze thousands of signals from your seed audience—demographics, behaviors, interests, device patterns, app usage. Then they find similar users who haven't converted yet. The algorithm's quality depends entirely on what you feed it.
The Seed Quality Hierarchy
- Tier 1 (Best): High-LTV purchasers, long-retained users
- Tier 2: Recent purchasers, engaged users
- Tier 3: All purchasers, subscribers
- Tier 4: All installers (avoid for quality campaigns)
The Counter-Intuitive Truth
Smaller, higher-quality seeds often outperform larger seeds. 500 whales beat 50,000 casual users. The algorithm needs clear signals about what "good" looks like, not volume.
Seed Selection Strategies
Value-Based Seeds
Create seeds based on user value, not just actions:
- Top 10% spenders (by LTV)
- Users who purchased 3+ times
- Subscribers retained 6+ months
- Users with D30 retention + purchase
Behavioral Seeds
Sometimes behavior predicts value better than transactions:
- Daily active users (DAU)
- Feature power users
- Social sharers
- Content creators within app
Expansion Size Strategy
The tradeoff: smaller expansion = more similar but limited reach. Larger expansion = more reach but diluted quality.
- 1% expansion: Highest quality, limited scale. Use for premium products.
- 1-3% expansion: Sweet spot for most apps
- 3-5% expansion: Good balance of quality and scale
- 5-10% expansion: Scale play, expect lower quality
- 10%+ expansion: Often no better than broad targeting
Platform Differences Matter
Meta's 1% lookalike covers ~2.3M people in the US. TikTok and Google have different population calculations. A "1%" isn't universal across platforms.
Layered Lookalike Strategy
Don't use single lookalikes. Build a portfolio:
- Create multiple seeds (purchasers, retained users, high-engagers)
- Test different expansion sizes for each
- Exclude converting audiences from broader expansions
- Refresh seeds monthly with new data
Common Lookalike Mistakes
- Stale seeds: Audiences from 2 years ago don't reflect current users
- Too broad: "All installers" teaches the algorithm nothing
- No exclusions: Targeting existing users wastes spend
- Single audience: One lookalike can't scale forever
- Ignoring platform nuances: Each platform's LAL works differently
Privacy Era Challenges
Lookalikes depend on matching—harder with ATT and privacy changes:
- Seed match rates have dropped 30-50%
- Use larger seeds to compensate for matching loss
- First-party data becomes more valuable
- Consider moving to broad + creative testing
Optimize Your Audience Strategy
ClicksFlyer helps you identify your highest-value users for seed creation and track lookalike performance across platforms.