A college basketball game between Colorado State Rams and San Jose State Spartans scheduled for February 28, 2026 at 5:00 PM ET. Markets cover moneyline (winner), point spreads at -7.5 and -8.5, and over/under totals at 145.5 and 146.5 points.
Kalshi moneyline market contains a logical contradiction: both Colorado St. winning and San Jose St. winning are stated to resolve to Yes, making the market unresolvable. This is a data integrity failure that prevents proper settlement.
Hero Tip:
Treat Polymarket as the authoritative resolution source for this event group. The Kalshi moneyline market should not be traded until the platform clarifies whether it intends a binary Yes/No outcome or has corrected the resolution logic. All Polymarket derivative markets (spreads, totals) are internally consistent and resolvable.
Critical Divergence Points:
Polymarket: Moneyline resolves to either Colorado State Rams or San Jose State Spartans based on final score. Spreads resolve based on margin of victory (8+ points for -7.5, 9+ points for -8.5). Over/Under markets resolve based on combined score (146+ for 145.5 line, 147+ for 146.5 line). All markets postpone if game is delayed and resolve 50-50 if game is canceled with no makeup. Key Quote: The result will be determined based on the final score including any overtime periods.
Kalshi: Moneyline market states both Colorado St. winning and San Jose St. winning resolve to Yes, creating a logical impossibility. No spread or total markets are described. Key Quote: If Colorado St. wins...resolves to Yes. If San Jose St. wins...resolves to Yes.
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