Oakland Golden Grizzlies vs. Purdue Fort Wayne Mastodons (W)
Volume:
$5,596
Markets
Outcome
Chance %
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24h
7d
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Description
This event group covers a women's college basketball game between Oakland Golden Grizzlies and Purdue Fort Wayne Mastodons scheduled for February 18, 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's resolution logic contains a logical contradiction: both mutually exclusive game outcomes (Oakland win and Purdue Fort Wayne win) are stated to resolve to Yes, which is impossible in a binary event. This makes the Kalshi market fundamentally unresolvable as written.
Hero Tip:
Avoid trading on Kalshi until the platform issues a corrected resolution criteria. The market as currently specified cannot be settled without arbitrary platform discretion. Polymarket offers clear, mutually exclusive resolution paths and should be preferred.
Critical Divergence Points:
Polymarket: Binary winner-take-all structure with three explicit outcomes: Oakland Golden Grizzlies (if Oakland wins), Purdue Fort Wayne Mastodons (if Purdue Fort Wayne wins), or 50-50 split (if game canceled with no makeup). Resolution based on final score including overtime. Source: NCAA.org.
Kalshi: Contradictory Yes-resolution logic stating both Oakland victory AND Purdue Fort Wayne victory each resolve to Yes. No explicit No-resolution condition or cancellation protocol provided. 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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