SimpleFunctions
KalshiMay 24, 202615 days left

Game 3: Oklahoma City at Los Angeles L Winner?

This contract is priced at 24¢ on Kalshi. Current book: 23¢ bid, 24¢ ask, 1¢ spread.

Implied probability

24¢
$808K volume
$774K liquidity
110% of event volume

Event outcomes

2

Family volume

$732K

Best sibling

Oklahoma City 76¢

Ticker

KXNBAGAME-26MAY09OKCLAL-LAL

Market snapshot

Los Angeles L in market context.

This page tracks the Kalshi contract for Game 3: Oklahoma City at Los Angeles L Winner?. The displayed quote is 24¢ from the latest venue quote. The cached market record reports 24h volume of $624K. In the Game 3: Oklahoma City at Los Angeles L Winner family, this outcome ranks #2 of 2 by current quote across 2 sibling outcomes. The indicator bundle was refreshed May 9, 2026, 5:08 AM UTC.

Outcome

Los Angeles L

Family rank

#2 of 2

Venue

Kalshi

Current quote

24¢

Quote source

Latest venue quote

Timing

Listed until May 24, 2026

24h volume

$624K

Family context

2 outcomes · Game 3: Oklahoma City at Los Angeles L Winner

Quote range

23¢-76¢

Family leader

Oklahoma City 76¢

Last updated

May 9, 2026, 5:08 AM UTC · 10m ago

Venue identifier: KXNBAGAME-26MAY09OKCLAL-LAL. Family volume: $732K.

Price history

24¢ current

+10¢
25¢50¢75¢100¢
May 3, 2026May 9, 2026

Orderbook snapshot

23 / 24¢

Kalshi
1¢ spread
BidSize
23¢296K
22¢271K
21¢24K
20¢1.8K
19¢2.5K
AskSize
24¢4.6K
25¢522K
26¢465K
27¢6.0K
28¢3.0K

Contract terms

Resolution, venue, and identifiers.

Resolution rules

If Los Angeles L wins the Game 3: Oklahoma City at Los Angeles L professional basketball game originally scheduled for May 9, 2026, then the market resolves to Yes.

Venue

Kalshi

Closes

May 24, 2026

Identifier

KXNBAGAME-26MAY09OKCLAL-LAL

Event family

Game 3: Oklahoma City at Los Angeles L Winner.

This view keeps the individual contract next to its sibling outcomes. For long-tail search traffic, this is the useful context: where the current price sits inside the event, how much volume exists around the family, and which outcomes have actual depth.

Total volume

$732K

Outcomes

2

Highest price

Oklahoma City 76¢

Current share

85%

Indicators

Yield, cliff risk, volatility, and regime.

IY (Yes)

8252.6%

IY (No)

736.3%

Adj IY

7535%

CRI

3

RV

405%

VR

0.45

Regime

neutral

Score

0.5

Full indicator table

8252.6%
736.3%
Adj IY
7535%
3
RV
405%
VR
0.45
IAR
0.9/h
LAS
0.09

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