How we tackled the biggest challenge in audience simulation: Accuracy
One of the first things people ask about Poll-Sim is: “How accurate can AI really be when predicting how real people will react?”
We took this seriously and built our system around three key principles:
Granular, real-world audience grouping You can simulate broad publics (e.g. Australian Public by generations or US population by age & eco-social class) or go hyper-local, like Victorians/Melbournians broken down by living/born locations.
Objective, detailed group descriptions with balanced coverage Every audience group comes with rich, neutral background info covering culture, values, political leanings, economic context, in-group variations, and more — so the AI has solid context instead of guessing.
Real demographic percentages Groups are weighted by actual population data (for example, our Victorian major cities breakdown uses real proportions like 27% third-generation Anglo-Celtic, 24% established migrants, etc.). This ensures the overall simulated result reflects realistic audience composition rather than treating every subgroup equally.
The result? Much more grounded, believable simulations — whether you're testing a speech, policy idea, product announcement, or controversial post.
We’re still iterating fast based on user feedback. If you’ve tried Poll-Sim, I’d love to hear how accurate the results felt to you (or where we can improve).
Try it here → https://www.poll-sim.com
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