Southeast Missouri State Redhawks vs. Lindenwood Lions (W)
Volume:
$6,435
Markets
Outcome
Chance %
Price
Liquidity
Volume
24h
7d
Open Interest
Ends in
Result
Trade
Description
This event group covers the women's college basketball matchup between Southeast Missouri State Redhawks and Lindenwood Lions scheduled for February 14, 2026 at 2:00 PM ET. The markets track which team wins the game, with resolution based on the final score including overtime.
Kalshi contains a logical contradiction where both possible game outcomes (Southeast Missouri St. win or Lindenwood win) are mapped to the same resolution (Yes), making the market fundamentally unresolvable. Polymarket uses standard categorical resolution with mutually exclusive outcomes.
Hero Tip:
This is a critical data integrity failure on Kalshi. The market cannot resolve to Yes for both teams winning simultaneously. Treat Polymarket as the reliable source. Avoid trading Kalshi until the platform issues a correction or clarification statement.
Critical Divergence Points:
Kalshi: Both outcomes map to Yes resolution. Quote: 'If Southeast Missouri St. wins... resolves to Yes. If Lindenwood wins... resolves to Yes.' This is logically impossible.
Polymarket: Standard categorical winner resolution. Quote: 'If Southeast Missouri State Redhawks win, resolve to Southeast Missouri State Redhawks. If Lindenwood Lions win, resolve to Lindenwood Lions.' Includes postponement and cancellation edge cases.
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.
Follow the signals, not the noise
Get insights on market conviction, notable shifts, and what the data is quietly signaling.