How can seed network diversity influence accuracy?
- Seed network diversity affects accuracy:
- Account age variation: Mix of new and established accounts. Fresh accounts may receive different treatment.
- Engagement history: Seeds with some activity patterns versus completely clean accounts.
- Provider coverage: All major providers plus regional services relevant to your audience.
- Geographic spread: Seeds in different regions if your audience is distributed.
- Homogeneous seed networks may not capture the variation in real audience experience.
- More diverse networks produce more representative results but are harder to maintain.
- Observers in different ports with different backgrounds provide richer intelligence.
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