This event group covers a women's college basketball game between the Dayton Flyers and Loyola Chicago Ramblers scheduled for February 25, 2026 at 7:00 PM ET. Markets on Polymarket and Kalshi are tracking the outcome of this single game, with resolution based on the final score including overtime.
Kalshi market contains a logical contradiction: both possible game outcomes (Dayton win and Loyola Chicago win) are stated to resolve to Yes, making the market unable to differentiate between the two teams and rendering it unresolvable.
Hero Tip:
Avoid trading on Kalshi until the platform corrects the Yes/No mapping. Polymarket's winner-take-all structure is logically sound and should be your reference framework.
Critical Divergence Points:
Polymarket:
Winner-take-all binary resolution. Dayton Flyers victory resolves to Dayton Flyers; Loyola Chicago victory resolves to Loyola Chicago Ramblers. Postponement keeps market open; cancellation with no makeup resolves 50-50. Resolution includes overtime. Key Quote: If the Dayton Flyers win, the market will resolve to Dayton Flyers. If the Loyola Chicago Ramblers win, the market will resolve to Loyola Chicago Ramblers.
Kalshi:
Contradictory binary structure. States If Dayton wins then Yes AND If Loyola Chicago wins then Yes, creating logical impossibility. No handling of postponement or cancellation stated. Key Quote: If Dayton wins the game originally scheduled for Feb 25, 2026, then the market resolves to Yes. If Loyola Chicago wins the game originally scheduled for Feb 25, 2026, then the market resolves to Yes.
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