SimpleFunctions
KalshiMay 23, 202615 days left

Will Cleveland score over 96.5 points?

This contract is priced at 75¢ midpoint on Kalshi. Current book: 57¢ bid, 93¢ ask, 36¢ spread.

Implied probability

75¢
$0 volume
2.0 LAS liquidity
0% of event volume

Event outcomes

16

Family volume

$3K

Best sibling

Detroit over 95.5 points scored 74¢

Ticker

KXNBATEAMTOTAL-26MAY09DETCLE-CLE96

Market snapshot

Cleveland over 96.5 points scored in market context.

This page tracks the Kalshi contract for Will Cleveland score over 96.5 points?. The displayed quote is 75¢ from the visible bid/ask midpoint because the last venue price is zero. In the KXNBATEAMTOTAL-26MAY09DETCLE family, this outcome ranks #7 of 16 by current quote across 16 sibling outcomes. The indicator bundle was refreshed May 9, 2026, 6:38 AM UTC.

Outcome

Cleveland over 96.5 points scored

Family rank

#7 of 16

Venue

Kalshi

Current quote

75¢

Quote source

Bid/ask midpoint

Timing

Listed until May 23, 2026

Reported volume

Family context

16 outcomes · KXNBATEAMTOTAL-26MAY09DETCLE

Quote range

1¢-74¢

Family leader

Detroit over 95.5 points scored 74¢

Last updated

May 9, 2026, 6:38 AM UTC · 8m ago

Venue identifier: KXNBATEAMTOTAL-26MAY09DETCLE-CLE96. Family volume: $3K.

Price history

75¢ current

+52¢
25¢50¢75¢100¢
May 8, 2026May 9, 2026

Orderbook snapshot

57 / 93¢

Kalshi
36¢ spread
BidSize
57¢2
54¢10
53¢75
47¢70
45¢4.4K
AskSize
93¢10
94¢50
96¢257
97¢602
98¢5.0K

Contract terms

Resolution, venue, and identifiers.

Resolution rules

If the number of points scored by Cleveland in the Detroit vs Cleveland professional basketball game originally scheduled for May 9, 2026 is above 96.5, then the market resolves to Yes.

Venue

Kalshi

Closes

May 23, 2026

Identifier

KXNBATEAMTOTAL-26MAY09DETCLE-CLE96

Event family

KXNBATEAMTOTAL-26MAY09DETCLE.

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

$3K

Outcomes

16

Highest price

Detroit over 95.5 points scored 74¢

Current share

0%

Indicators

Yield, cliff risk, volatility, and regime.

IY (Yes)

1897.0%

IY (No)

3333.4%

Adj IY

3333%

CRI

1

RV

2545%

VR

3.83

Regime

neutral

Score

0.5

Full indicator table

1897.0%
3333.4%
Adj IY
3333%
1
RV
2545%
VR
3.83
IAR
2.3/h
Overround
6.3%

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