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Washington at New Orleans: Rebounds

📊 $611 traded 🏦 Source: Kalshi
Total Volume
$611
Open Interest
611
Active Markets
20
Markets
20

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Prices in cents (1¢ = 1%). Trade on Kalshi.

All Outcomes (20)
Outcome Probability Yes Bid Yes Ask 24h Change Volume
Zion Williamson: 7+ 52%
49¢ 52¢ $500 Trade →
Herbert Jones: 4+ 52%
49¢ 54¢ $111 Trade →
Herbert Jones: 8+ 0%
$0 Trade →
Zion Williamson: 6+ 0%
61¢ 66¢ $0 Trade →
Trey Murphy III: 5+ 0%
55¢ 57¢ $0 Trade →
Trey Murphy III: 6+ 0%
39¢ 43¢ $0 Trade →
Trey Murphy III: 4+ 0%
68¢ 75¢ $0 Trade →
Zion Williamson: 8+ 0%
36¢ 40¢ $0 Trade →
Trey Murphy III: 8+ 0%
15¢ 20¢ $0 Trade →
Zion Williamson: 10+ 0%
15¢ 20¢ $0 Trade →
Herbert Jones: 6+ 0%
17¢ 22¢ $0 Trade →
Herbert Jones: 2+ 0%
99¢ $0 Trade →
Herbert Jones: 10+ 0%
$0 Trade →
Trey Murphy III: 2+ 0%
99¢ $0 Trade →
Zion Williamson: 12+ 0%
$0 Trade →
Derik Queen: 2+ 0%
99¢ $0 Trade →
Derik Queen: 4+ 0%
98¢ $0 Trade →
Derik Queen: 10+ 0%
98¢ $0 Trade →
Derik Queen: 8+ 0%
98¢ $0 Trade →
Derik Queen: 6+ 0%
98¢ $0 Trade →

About This Market

This prediction market offers forecasts on rebound outcomes for the Washington at New Orleans game, letting traders express expectations about how many rebounds will be recorded. It matters because rebounds influence possession, pace, and often the final result of the game, making them a meaningful stat to trade on.

Washington and New Orleans bring differing styles and personnel that shape rebounding prospects: one team may emphasize inside scoring and offensive rebounding while the other contests the glass with size or tempo. Recent roster changes, rotations, and coaching emphasis on defense or transition can shift typical rebound patterns compared with historical averages. Market participants should consider both teams' season-long rebounding rates and any matchup-specific anomalies between the squads.

Market prices reflect collective expectations about the rebound outcomes for this specific matchup; higher prices indicate stronger market consensus that a particular outcome will occur. Use those prices as a summary of market sentiment while also checking game-day news and official market rules before trading.

Key Factors

Frequently Asked Questions

When does the Washington at New Orleans: Rebounds market close?

The event page shows the market close as TBD; final trading typically stops at the time specified on the market page or at the official game start per platform rules, so check the market listing for the announced close time before placing trades.

What exactly do the 15 outcomes represent in this rebounds market?

While structures vary by market, a 15-outcome setup commonly divides possible rebound totals into discrete buckets (for a team or combined game total) or lists many individual-player rebound thresholds; the market description on the event page will state whether outcomes are team totals, combined totals, or player-specific and how each outcome maps to a rebound range.

Which players on Washington and New Orleans most directly affect the rebounds outcome?

Primary contributors are the teams' starting bigs and primary frontcourt rebounders, plus any high-minute forwards or guards who crash the glass; last-minute lineup announcements, injury reports, or rest decisions for those players will be the biggest single-game drivers of the market.

How will the market determine the official rebound total used to resolve outcomes?

Resolution typically relies on the official box score from the league (NBA) as cited in the market rules; whether overtime counts and which stat conventions apply should be confirmed in the market's resolution rules on the event page.

How should I factor recent head-to-head rebounding history between these teams into my assessment?

Head-to-head trends can highlight matchup tendencies (for example, one team consistently winning the offensive rebounding battle), but they should be weighted alongside current-season rebounding rates, recent form, and roster availability because single-game sample sizes and system changes can make past matchups less predictive.

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