Can You Make a Steady Profit by Blindly Following Polymarket's Pre-Game Win Probability to Bet on NBA Games?

Odaily星球日报Publicado a 2026-04-17Actualizado a 2026-04-17

Resumen

**Can You Consistently Profit by Blindly Following Pre-Game Win Probabilities on Polymarket for NBA Games?** A backtest of the entire NBA 2025-26 regular season (1,096 games) was conducted to test the strategy of always betting $100 on the team with the higher pre-game win probability on Polymarket. The results show that this strategy is not profitable. The total amount wagered was $109,600, with a return of $107,545.20, resulting in a net loss of $2,054 and a Return on Investment (ROI) of -1.87%. This indicates that the market is highly efficient, and pre-game probabilities are accurately priced, leaving no simple arbitrage opportunity. In fact, blindly following the market would have been slightly less profitable than betting against it. However, a deeper analysis by team revealed significant differences. Certain teams consistently outperformed market expectations when they were favored to win: * Portland Trail Blazers (POR): 19% ROI * Philadelphia 76ers (PHI): 14% ROI * San Antonio Spurs (SAS): 12% ROI * Los Angeles Lakers (LAL): 11% ROI * Charlotte Hornets (CHA): 9% ROI In contrast, the market was highly efficient for the top-performing teams, offering minimal returns (e.g., Boston Celtics ROI: 4%, Denver Nuggets ROI: -5%). Results for the weakest teams were too inconsistent due to small sample sizes. The key finding is that team-specific factors, rather than the probability percentage itself, drive potential value, making a one-size-fits-all strategy ineffec...

Trading NBA games on Polymarket, perhaps you, like many others, have had this experience: before the game, you see one team with a significantly higher win probability than their opponent, only for them to collapse in the fourth quarter and get swept away by a scoring run (like the recent Hornets and Heat game—I lost so much on that bet it made me question my life).

Since everyone says Polymarket is a "truth machine," does that mean I can easily make money by blindly buying the team with the higher pre-game win probability?

To test this hypothesis, I backtested the 1,096 regular-season games of the NBA 2025-26 season. The data revealed the truth—

Blindly following the market won't make you money, but it won't lose you much either; the pre-game probabilities are fully priced in.

Blindly Buying the Market Favorite is a Guaranteed Loss

The backtesting strategy was very simple:

  • Used the average probability from 3 minutes before the game as a benchmark
  • Traded $100 on each game
  • Always bought the side with the "higher win probability"

Results:

  • Total amount wagered: $109,600. Total amount returned: $107,545.20. Net loss: $2,054.
  • ROI: -1.87%

This shows that Polymarket's prices are quite efficient; the market has fully priced in the teams' win probabilities, leaving no "arbitrage" opportunity.

The difference in ROI likely comes from other dimensions like transaction costs and emotional premiums. If you insist on "buying blindly," you might as well bet against the market—you could even make a 1.87% profit.

The Real Value: Not All Teams Are Created Equal

The above backtest was for the entire set of a thousand games. I then broke it down from multiple angles to try and find parts that break free from the market's gravity:

  • By week: Random walk
  • By probability: Still a random walk. That is, betting on pre-game win probabilities of 50%, 60%, 70%, or 80% showed no difference in returns.
  • By team: Here, clear differences emerged.

Some teams simply live up to the market's trust—

When the market thinks they will win, they are more likely to actually win.

  • POR (Trail Blazers): ROI 19%
  • PHI (76ers): ROI 14%
  • SAS (Spurs): ROI 12%
  • LAL (Lakers): ROI 11%
  • CHA (Hornets): ROI 9%

Why is there such a difference for these teams? As the author previously had little understanding of NBA teams themselves, an initial hypothesis was formed:

Are they the strongest or the weakest teams, thus having high expectation consistency?

But upon verification, this was not the case. Except for SAS (Spurs), the other four teams were only ranked in the middle to slightly above average positions.

So what about the teams with the best records? The market has already fully priced them in. Blindly buying them yields an average ROI of only 2.16%; the pre-game betting odds contain no水分 (water/hidden value).

  • DET (Pistons): ROI 1%
  • BOS (Celtics): ROI 4%
  • NYK (Knicks): ROI 3%
  • OKC (Thunder): ROI -2%
  • DEN (Nuggets): ROI -5%

What about the weakest teams?

Here, there is extreme divergence instead. These teams are almost never favored by the market. For example, the Nets (BKN) were only favored (win probability >50%) in 7 games, won 5 of them, resulting in a high ROI of 21%; while the Pacers (IND) were favored in 8 games, won 4, but had an ROI of -20%. The sample size is too small to serve as a trading reference.

This means, theoretically (only theoretically!), POR (Trail Blazers), PHI (76ers), SAS (Spurs), LAL (Lakers), and CHA (Hornets) are the range defined by the existing data for following.

Preguntas relacionadas

QAccording to the article, can you consistently make a profit by blindly following the pre-game win probability on Polymarket for NBA games?

ANo, the article's backtest of the 2025-26 NBA season showed that blindly buying the team with the higher pre-game win probability resulted in an overall loss of 1.87%, indicating the market is efficiently priced.

QWhat was the return on investment (ROI) for the simple strategy of always buying the 'higher win rate' team before each game?

AThe ROI for the strategy was -1.87%, meaning a loss of $2,054 on a total investment of $109,600 across 1,096 games.

QWhich specific NBA teams, according to the data, provided a positive ROI when their pre-game win probability was high?

AThe teams with a positive ROI were POR (Trail Blazers) at 19%, PHI (76ers) at 14%, SAS (Spurs) at 12%, LAL (Lakers) at 11%, and CHA (Hornets) at 9%.

QDid the ROI vary significantly when the strategy was applied to the strongest teams in the league?

ANo, the ROI for the strongest teams was very low, averaging only 2.16%, indicating the market had already efficiently priced their high pre-game win probabilities.

QWhat conclusion does the article draw about the overall efficiency of the Polymarket for NBA games?

AThe article concludes that the Polymarket is a 'truth machine' and its prices are quite efficient, as the market has fully priced in team win probabilities, leaving no simple arbitrage opportunity for a blind-follow strategy.

Lecturas Relacionadas

From Return to Resignation: Chen Hang's 437 Days at DingTalk

The 437-Day Return and Departure of Chen Hang at DingTalk This article chronicles the 437-day period from March 31, 2025, to June 11, 2026, when Chen Hang (also known as "No Move") returned as CEO of DingTalk, the enterprise communication platform he originally founded, only to later step down. Chen Hang, the creator of DingTalk in 2015, was brought back by Alibaba in 2025 after the company acquired his subsequent startup, HHO. His return was driven by Alibaba's renewed focus on AI and DingTalk's strategic role as its key to-B AI application. However, his aggressive management style, marked by strict work policies like mandatory clock-ins and extended hours, quickly caused internal friction and was criticized as being at odds with Alibaba's culture. Despite the internal turmoil, Chen Hang drove significant product launches. In August 2025, he unveiled "AI DingTalk 1.0," featuring new products like the AI-native entry point "DingTalk ONE." By March 2026, he announced "Wukong," touted as the world's first enterprise-grade AI-native work platform, representing a fundamental rebuild of DingTalk's architecture. The turning point came in early June 2026. A detailed internal post criticizing DingTalk's work culture went viral, followed by a public critique from a former executive. This prompted an unprecedented public rebuke from the Alibaba Partners Committee, which stated such management was not aligned with company values. One day later, on June 11, Alibaba announced Chen Hang's departure. He was succeeded by Chen Yusen, a 32-year-old technical expert known for founding cybersecurity firm Changting Technology. While Chen Hang's tenure laid the technical foundation for DingTalk's AI transformation with "Wukong," his leadership style ultimately led to his replacement as the company seeks a new direction under younger leadership.

marsbitHace 6 min(s)

From Return to Resignation: Chen Hang's 437 Days at DingTalk

marsbitHace 6 min(s)

The 2026 Landscape of Decentralized AI: Why Blockchain is the Inevitable 'Antidote' for AI?

Decentralized AI 2026 Landscape: Why Blockchain is AI's Essential "Antidote" Centralized AI faces structural bottlenecks—expensive compute, concentrated control, unverifiable outputs, and difficult data access—that cannot be solved by capital or code alone. Blockchain offers a path to make intelligence open, verifiable, and economically accessible. The decentralized AI stack comprises: * **Infrastructure:** The foundation with compute, verifiable inference, distributed training, data/storage, and privacy/verification layers. Projects like Akash, Render, and Filecoin provide cheaper, decentralized alternatives for raw resources. * **Middleware:** The coordination layer for agent discovery, identity, and commerce. Key players include Bittensor (a network of specialized AI subnets), Virtuals (an agent economy OS), and frameworks providing agent identity and tooling. * **Applications & Services:** Dominated by Agentic Finance (AI agents executing on-chain actions based on natural language) and Agentic Payments (machine-to-machine transactions using blockchain as a settlement layer). Projects like Giza, Infinit Labs, and x402 are enabling these use cases. Key trends for 2026-2027 show AI demand outgrowing infrastructure, compute becoming an asset class, and tokenomics emerging as a structural advantage for coordinating capital, compute, and data. While still early—with adoption uneven and revenue often trailing token incentives—projects like Bittensor, NEAR, and Venice demonstrate decentralized AI is evolving from a narrative into a new model for coordinating intelligence.

Foresight NewsHace 27 min(s)

The 2026 Landscape of Decentralized AI: Why Blockchain is the Inevitable 'Antidote' for AI?

Foresight NewsHace 27 min(s)

Trading

Spot
Futuros
活动图片