This event group covers a professional Swiss National League (NL) ice hockey match between Fribourg-Gottéron and Rapperswil-Jona Lakers scheduled for March 24, 2026. Markets on Polymarket and Kalshi are predicting the winner of this single game, with resolution based on the final score including overtime and shootouts.
Kalshi's market definition contains a logical contradiction: both possible game outcomes (Fribourg-Gottéron win or Rapperswil-Jona Lakers win) are stated to resolve to Yes, making the market unresolvable. Polymarket defines a proper binary outcome structure.
Hero Tip:
This is a critical data integrity failure on Kalshi's platform. Do not trade on Kalshi's version. Use Polymarket exclusively for this event, which has coherent binary resolution logic. Request clarification or correction from Kalshi before engaging.
Critical Divergence Points:
Polymarket:
Clean binary structure with mutually exclusive outcomes. Fribourg-Gottéron win resolves to Fribourg-Gottéron; Rapperswil-Jona Lakers win resolves to Rapperswil-Jona Lakers. Postponements extend market; cancellations resolve 50-50. Shootout goals counted as +1 to winner's score. Key Quote: 'The result will be determined based on the final score including any overtime periods and shootouts.'
Kalshi:
Logically incoherent resolution criteria. Both possible outcomes map to Yes: 'If Fribourg Gottéron wins...resolves to Yes' AND 'If SC Rapperswil-Jona Lakers wins...resolves to Yes.' This violates binary market logic and makes the market unresolvable. No clear handling of postponements or cancellations stated.
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