This event group covers a women's college basketball game between Bethune-Cookman Wildcats and Southern Jaguars scheduled for February 28, 2026 at 1:00 PM ET at Southern University. Markets across Polymarket and Kalshi are betting on the winner of this matchup.
Kalshi's resolution logic contains a logical contradiction where both possible game outcomes (Southern wins OR Bethune-Cookman wins) resolve to Yes, making the market unresolvable as a binary contract. Polymarket uses standard winner-take-all binary logic.
Hero Tip:
This is a critical data integrity failure on Kalshi. The market cannot function as written because every possible game outcome maps to Yes. Before trading, contact Kalshi support to confirm whether this is a drafting error or if the market is actually betting on game completion rather than winner determination.
Critical Divergence Points:
Polymarket: Standard binary winner-take-all structure. Resolves to either Bethune-Cookman Wildcats or Southern Jaguars based on final score including overtime. Postponement keeps market open; cancellation without makeup resolves 50-50. Key quote: If Bethune-Cookman wins, resolve to Bethune-Cookman; if Southern wins, resolve to Southern.
Kalshi: Contradictory dual-Yes resolution. Both Southern winning AND Bethune-Cookman winning resolve to Yes, with no No outcome specified. Key quote: If Southern wins resolve Yes; If Bethune-Cookman wins resolve Yes. This creates logical impossibility.
Our PredictionHero Resolution Divergence Alerts (RDA) are there to help users identify potential differences across platforms. They do not replace or supersede the official rules and description of any prediction market. Users are solely responsible for reviewing and understanding the applicable rules and resolution criteria before placing any trade or bet. If you notice a potential inconsistency, discrepancy, or error in an alert, please report it to our team so we can review and improve the accuracy of our data.
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