SimpleFunctions
KalshiNov 3, 2027543 days left

Will the total vote count for all participants in Montana 02 House General Election be above 300000?

This contract is priced at 21¢ on Kalshi. Current book: 16¢ bid, 23¢ ask, 7¢ spread.

Implied probability

21¢
$300 volume
$300 liquidity
100% of event volume

Event outcomes

5

Family volume

$300

Best sibling

Above 250K 74¢

Ticker

KXMIDTERMVOTETURN-MT02-300000

Market snapshot

Above 300K in market context.

This page tracks the Kalshi contract for Will the total vote count for all participants in Montana 02 House General Election be above 300000?. The displayed quote is 21¢ from the latest venue quote. The cached market record reports 24h volume of $300. In the Will the total vote count for all participants in Montana 02 House General Election be above family, this outcome ranks #5 of 5 by current quote across 5 sibling outcomes. The indicator bundle was refreshed May 9, 2026, 4:23 AM UTC.

Outcome

Above 300K

Family rank

#5 of 5

Venue

Kalshi

Current quote

21¢

Quote source

Latest venue quote

Timing

Listed until Nov 3, 2027

24h volume

$300

Family context

5 outcomes · Will the total vote count for all participants in Montana 02 House General Election be above

Quote range

16¢-74¢

Family leader

Above 250K 74¢

Last updated

May 9, 2026, 4:23 AM UTC · 1m ago

Venue identifier: KXMIDTERMVOTETURN-MT02-300000. Family volume: $300.

Price history

21¢ current

+20¢
25¢50¢75¢100¢
May 7, 2026May 8, 2026

Orderbook snapshot

16 / 23¢

Kalshi
7¢ spread
BidSize
100¢1.2K
16¢32
15¢100
14¢200
3¢130
AskSize
23¢100
25¢200
63¢381
64¢130

Contract terms

Resolution, venue, and identifiers.

Resolution rules

If the total vote count for all participants in Montana 02 House General Election is above 300000, then the market resolves to Yes.

Venue

Kalshi

Closes

Nov 3, 2027

Identifier

KXMIDTERMVOTETURN-MT02-300000

Event family

Will the total vote count for all participants in Montana 02 House General Election be above.

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

$300

Outcomes

5

Highest price

Above 250K 74¢

Current share

100%

Indicators

Yield, cliff risk, volatility, and regime.

IY (Yes)

352.6%

IY (No)

12.8%

Adj IY

176%

CRI

5

Overround

1.2%

Regime

neutral

Score

0.5

Full indicator table

352.6%
12.8%
Adj IY
176%
5
Overround
1.2%

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