St. Bonaventure Bonnies vs. Loyola Chicago Ramblers (W)
Volume:
$581,893
Markets
Outcome
Chance %
Price
Liquidity
Volume
24h
7d
Open Interest
Ends in
Result
Trade
Description
This event group covers the women's college basketball game between St. Bonaventure Bonnies and Loyola Chicago Ramblers scheduled for March 5, 2026 at 10:00 AM ET. Markets on both Polymarket and Kalshi are betting on the outcome of this single game.
Kalshi market contains a logical contradiction: both possible game outcomes (St. Bonaventure win and Loyola Chicago win) are mapped to the same resolution value (YES), making the market unresolvable and unable to differentiate between outcomes.
Hero Tip:
Do not trade on Kalshi. The market structure is broken—both teams winning resolves to YES. Trade only Polymarket, which has proper binary logic. Contact Kalshi support to report this as a critical data error.
Critical Divergence Points:
Polymarket: Binary winner-take-all market with clear differentiation. St. Bonaventure win resolves to 'St. Bonaventure Bonnies', Loyola Chicago win resolves to 'Loyola Chicago Ramblers'. Handles postponement (market stays open) and cancellation (50-50 split). Resolution based on final score including overtime.
Kalshi: Logically contradictory structure. States 'If St. Bonaventure wins... resolves to Yes' AND 'If Loyola Chicago wins... resolves to Yes.' Both outcomes map to identical YES resolution, making outcome differentiation impossible.
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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