$7 Billion Iran Bet Forces U.S. to Tighten Rules on Prediction Markets

marsbit2026-03-16 tarihinde yayınlandı2026-03-16 tarihinde güncellendi

Özet

Polymarket and Kalshi, two prediction market platforms, are reportedly seeking funding at valuations of around $20 billion each. This coincides with increased regulatory scrutiny from U.S. lawmakers and the CFTC, driven by controversial contracts related to Iran. Approximately $529 million was wagered on contracts predicting the timing of an Iranian attack, and $150 million on contracts related to the potential ouster of Supreme Leader Khamenei. Six accounts allegedly profited around $1.2 million from well-timed trades just hours before an attack on Iranian officials. These events have intensified concerns about insider trading, market manipulation, and the use of sensitive or classified information. In response, U.S. legislators are drafting bills to restrict certain event contracts, while the CFTC is advancing new regulatory frameworks. Despite the controversy, prediction markets are gaining traction as information products. Major media outlets like CNBC and Dow Jones have partnered with these platforms to integrate predictive data into their reporting. However, the integration of such data into mainstream media raises questions about fairness, trust, and the potential influence on public perception. The core challenge lies in balancing innovation and growth with regulatory oversight, especially when contracts involve geopolitical events, assassinations, or military actions. The U.S. must decide whether to heavily regulate these markets or outright ban certain contract...

Written by: Andjela Radmilac

Compiled by: Saoirse, Foresight News

Polymarket and Kalshi are seeking funding at valuations that would place them among the top consumer fintech companies, while U.S. regulators are simultaneously accelerating the development of new rules for such products. It is reported that both companies are in early-stage funding negotiations, with valuations expected to reach approximately $20 billion each.

This funding boom coincides with a political storm.

Iran-related contracts have turned prediction markets from a niche forecasting tool into a controversial focal point involving insider information and war speculation. A Reuters investigation into the markets on Polymarket related to the timing of the attack and Khamenei's ouster found that approximately $529 million was wagered on contracts related to the timing of the attack, and about $150 million was bet on contracts related to Khamenei; meanwhile, sources indicate that six accounts, through precisely timed trades, collectively profited about $1.2 million.

Now, U.S. lawmakers are drafting relevant bills, and the U.S. Commodity Futures Trading Commission (CFTC) has also stated it will advance new regulatory rules.

Wall Street believes that event probability prediction will become part of the information system; but Washington is blocking it because it fears this system could benefit the wrong people at the worst possible time.

Why Wall Street is Bullish on Prediction Markets

Prediction markets can convert attention into trades, earn fees from those trades, and simultaneously generate real-time probability data, packaged as information products.

It is this data product that moves prediction markets out of the "gambling" category and classifies them as information tools similar to market data, polls, and financial terminals—because their output format is highly similar to market quotes.

Mainstream media have begun partnering with these platforms:

  • CNBC has signed a multi-year agreement with Kalshi to integrate its probability data into television and digital content starting in 2026.
  • Dow Jones has reached an exclusive deal with Polymarket to introduce prediction data into platforms like The Wall Street Journal and Barron's, treating contract prices as news infrastructure on par with earnings reports, interest rates, and election coverage.

These partnerships also amplify the impact of scandals: once probability data is embedded in mainstream media, it influences public perception of an event's likelihood and urgency. This is also why regulators believe platforms must adhere to higher standards in fairness, monitoring, and settlement.

This explains why, even as Iran-related trades spark political controversy, the valuations of both companies are rising.

Iran Incident Makes Prediction Markets a Washington Headache

The biggest advantage of prediction markets is early access to information. And the Iran-related contracts clearly show that these platforms are touching on sensitive information that the government tries to control.

On March 2, bets on the attack timing-related contracts reached $529 million, and contracts related to Khamenei's death and ouster reached about $150 million. Just hours before the attack on Iranian officials, six accounts suddenly injected funds and profited $1.2 million through these contracts.

As the conflict escalated, multiple reports pointed out that a large number of newly registered accounts made precise bets on Iran-related events. Such reports have thrust Polymarket from a crypto-niche platform directly into the sights of government regulation and law enforcement.

The core issues these platforms now face are: trust and fairness.

For prediction markets to function, users must believe the rules are stable, outcomes are determined consistently, and there is no insider advantage. Once the subject of trading is military action, the trust issue escalates into a political problem—because the motive for trading early could become a motive for leaking sensitive or even classified information.

This is also why the policy response has rapidly escalated.

Representative Mike Levin and Senator Chris Murphy are already drafting legislation aimed at restricting prediction markets. Congress will directly define which event contracts can be legally traded.

Additionally, CFTC Chairman Michael Selig stated that the agency has submitted an advance notice of proposed rulemaking to the White House Office of Management and Budget and is about to introduce a regulatory framework for prediction markets, which could affect all aspects from contract design to monitoring and enforcement.

The choice facing Washington is clear:

  • Acknowledge prediction markets as legal event contracts, strengthen regulation, clarify restrictions, and allow the industry to expand orderly under rules;
  • Directly prohibit contract categories related to war, assassination, and leader ousters because such trading极易 (is highly prone to) trigger insider trading and foster不良动机 (bad motives).

The data below reveals why this conflict is difficult to resolve:

Kalshi's own dispute also shows that regulation alone cannot fully solve the trust problem.

On March 5, Kalshi faced a class-action lawsuit where users accused the platform of refusing to pay approximately $54 million in winnings—users had bet that Iran's supreme leader would step down before March 1. The plaintiffs claimed the platform only activated a "death-related exception clause" after the Iranian leader was attacked, using it to refuse payment.

But Kalshi stated that its rules regarding trades on leader deaths were already clear, and it had refunded fees and compensated users for losses, meaning users did not lose money.

This is precisely the contradictory dilemma currently facing investors and policymakers.

Investors hope the industry will achieve growth, expand its reach, and justifiably integrate probability prediction data into the mainstream information system.

Users hope that when event outcomes are controversial and emotionally charged, the platform rules will be stable and credible.

Regulators希望杜绝 (hope to eliminate) these markets turning sensitive state actions into tradable products, avoiding situations where "access to confidential intelligence yields optimal trading returns." Because once these trading prices begin to influence the public information environment, the associated risks evolve into a governance challenge.

İlgili Sorular

QWhat is the total amount of money involved in the Iran-related contracts on Polymarket, and how was it distributed between the two main types of contracts?

AApproximately $679 million was involved in Iran-related contracts on Polymarket. This includes about $529 million bet on contracts related to the timing of an attack and approximately $150 million on contracts concerning the ousting or death of Supreme Leader Khamenei.

QWhy are US regulators and lawmakers moving to create new rules for prediction markets, specifically in response to the Iran-related events?

AUS regulators and lawmakers are moving to create new rules because the Iran-related contracts highlighted the risk of prediction markets being used for trading on sensitive or even classified information related to military actions and political assassinations. This raises concerns about insider trading, the potential to incentivize the leaking of state secrets, and the platforms' influence on public perception when their data is integrated into mainstream media.

QHow have mainstream media organizations partnered with prediction market platforms like Kalshi and Polymarket, and what does this signify for the industry?

AMainstream media organizations have formed significant partnerships with these platforms. CNBC has a multi-year deal with Kalshi to integrate its probability data into its TV and digital programming starting in 2026. Dow Jones has an exclusive partnership with Polymarket to bring prediction data to platforms like The Wall Street Journal and Barron's, treating the contract prices as part of their news infrastructure. This signifies the industry's attempt to legitimize itself as a provider of valuable information tools rather than mere gambling platforms.

QWhat specific incident involving six accounts on Polymarket raised suspicions of insider trading related to the Iran events?

AJust hours before a high-level Iranian official was attacked, six accounts suddenly deposited funds and placed bets on the relevant contracts. These accounts collectively profited approximately $1.2 million from their precisely timed trades, raising strong suspicions of insider trading based on non-public information about the impending event.

QWhat is the core dilemma facing investors, users, and regulators regarding the future of prediction markets, as illustrated by the article?

AThe core dilemma is a three-way conflict of interests: Investors want the industry to grow and for its probability data to be widely adopted into the mainstream information ecosystem. Users demand that platform rules remain stable and trustworthy, especially when settling emotionally charged and controversial events. Regulators aim to prevent these markets from turning sensitive state actions into tradable products, fearing it creates incentives for leaking机密情报 (classified intelligence) and poses a significant governance risk when trading prices begin to influence public opinion and the information environment.

İlgili Okumalar

The "Impossible Triad" Is Fundamentally a Pseudo-Problem

The article argues that blockchain's fundamental limitation is not the scalability trilemma (decentralization, scalability, security), which has been largely solved, but the lack of **privacy** and, until recently, clear **legitimacy**. Blockchain is described as a slow, expensive, globally shared computer whose core value is censorship resistance and verifiability. While ideal for native digital assets like money (e.g., stablecoins), its default transparency acts as a **tax**, exposing all transactions and enabling MEV extraction, which deters serious institutional capital. Simultaneously, its permissionless nature created regulatory ambiguity. The piece contends that **privacy** is the missing critical feature. It rejects the false choice between total transparency and complete anonymity. Modern cryptography (like zero-knowledge proofs) enables **compliant privacy**: users can prove facts (solvency, KYC status, compliance) without revealing the underlying sensitive data (specific holdings, identities). This preserves auditability for regulators and eliminates the leak of financial information. With recent regulatory progress (e.g., the GENIUS Act) addressing legitimacy, adding default, provably compliant privacy becomes a pure upgrade. It transforms blockchain from a costly, public ledger into a confidential settlement layer, finally bridging the gap to mainstream institutional and individual adoption of on-chain finance.

链捕手2 saat önce

The "Impossible Triad" Is Fundamentally a Pseudo-Problem

链捕手2 saat önce

Optical Chips: Collective Capacity Expansion

The global optical chip industry is experiencing a massive wave of expansion driven by surging AI data center demand. Major players across the US, Japan, Europe, and China are aggressively investing to ramp up production capacity. In the US, Coherent is expanding its 6-inch Indium Phosphide (InP) semiconductor fab in Texas, supported by CHIPS Act funding and a $2 billion strategic investment from NVIDIA. Lumentum is building a new factory for InP optical devices, and Nokia is scaling its advanced photonic chip packaging and testing capabilities. NVIDIA's investments aim to secure future supply of critical lasers and optical interconnect products for AI infrastructure. Japan's JX Advanced Metals, a leading InP substrate supplier, plans a multi-billion yen investment to increase its capacity 7-10 times, strengthening its grip on the crucial upstream materials market. In Europe, IQE and Tower Semiconductor settled a patent dispute and signed a multi-year InP epitaxial wafer supply agreement, highlighting that next-generation silicon photonics platforms will integrate high-performance InP components. STMicroelectronics and Sivers Semiconductors are also expanding silicon photonics production and partnerships. China is rapidly building out its domestic supply chain. Dongshan Precision's subsidiary, Source Photonics, announced a $12 billion project to expand optical chip and module production. Companies like Sanan Optoelectronics and Yunnan Germanium are scaling up InP chip manufacturing and substrate production, moving towards vertical integration from materials to modules. While debate continues around the exact future architecture—whether CPO (Co-Packaged Optics), NPO, or pluggables will dominate—analysts like Morgan Stanley argue the underlying driver is unchangeable: the explosive growth in bandwidth demand. This will inevitably increase the volume of optical engines, lasers, and related content per GPU, regardless of the final technical path. The competition for "more light" in the AI era has intensified into a global, full-chain capacity race.

marsbit5 saat önce

Optical Chips: Collective Capacity Expansion

marsbit5 saat önce

Stablecoins Finally Find Real Yield: An In-Depth Look at On-Chain Reinsurance Re | A Conversation with Re Founder Karan Saroya

Stablecoin Real Yield Found: A Deep Dive into On-Chain Reinsurance with Re's Karan Saroya As stablecoin supply exceeds $170 billion, the search for sustainable, non-speculative yield intensifies. Re, an on-chain reinsurance platform, provides an answer: connecting stablecoin capital to the trillion-dollar traditional reinsurance market. Re operates as a regulated reinsurer, accepting stablecoin deposits as collateral to back US insurance companies. These insurers pay premiums, generating yield that flows back to on-chain depositors. Currently supporting 35 insurers and underwriting $500 million, Re projects scaling to over $1 billion soon. Key insights from a Bankless podcast with founder Karan Saroya and investor Avichal of Electric Capital: 1. **Uncorrelated, Real-World Yield:** Re offers stablecoin holders access to reinsurance returns (targeting 12-14%+), an asset class entirely separate from crypto or equity markets. 2. **Operational Efficiency via Smart Contracts:** Re replaces traditional, labor-intensive capital fundraising with smart contracts, allowing a ~12-person team to compete with industry giants. 3. **Regulatory Leverage:** For every $1 of collateral, regulations allow backing $5-7 in written premiums. This leverage amplifies returns from the underlying risk-free rate. 4. **DeFi Integration:** Depositors receive receipt tokens, which can be used in protocols like Morpho for "looping," potentially pushing yields to 18-20%+. 5. **The "DeFi Mullet" Model:** A compliant front-end (regulated reinsurer) paired with a decentralized back-end (smart contracts, DeFi capital markets). 6. **RE Governance Token:** Modeled on Lloyd's of London, the token governs the central capital pool's allocation, counterparty acceptance, and parameters. 7. **Real Economic Impact:** Capital funds real-world productivity (factories, clinics, businesses) via insurance, moving beyond crypto's internal loops. The discussion highlights a pivotal moment: DeFi's supply-side infrastructure is now met by real demand for productive yield, potentially kickstarting a flywheel where vast on-chain stablecoin capital seeks these real-world returns.

链捕手6 saat önce

Stablecoins Finally Find Real Yield: An In-Depth Look at On-Chain Reinsurance Re | A Conversation with Re Founder Karan Saroya

链捕手6 saat önce

1996 or 1999? Walsh's First Test is 'How to View AI'

"1996 or 1999? Wall's First Big Test Is 'How to View AI'" Federal Reserve Chairman Wall's initial challenge is not whether to raise or cut rates, but a more fundamental judgment: what kind of boom is the current AI boom? This will determine the Fed's policy path and define his legacy. Economics is split between two opposing views, according to reporter Nick Timiraos. One sees imminent productivity gains that will increase supply and cool inflation, allowing the Fed to hold steady. The other argues that while productivity benefits are distant, demand shocks are here now, and waiting for data confirmation risks missing the intervention window, forcing sharper rate hikes later. Wall has signaled a leaning toward the first view, echoing 1996-era Alan Greenspan, who embraced strong, productivity-driven growth without fear of inflation. However, Wall faces a different macro environment than Greenspan did, with tariff pressures, expanding fiscal deficits, and diminishing globalization benefits, which could force more significant inflation pressures even if AI benefits materialize. Wall's logic, expressed before taking office, is that AI-driven productivity gains won't show in official data for years. If the Fed waits for confirmation, it might mistakenly tighten policy and choke off the very growth that could suppress inflation. This argues for using forward-looking narratives over lagging data. Chicago Fed President Austan Goolsbee presents a key counter-argument. He distinguishes between expected and unexpected productivity booms. A widely anticipated boom, like the current AI wave, can cause people to spend future wealth gains in advance, overheating the economy before productivity actually rises, thus requiring preemptive rate hikes. He cites rising costs for AI data centers as evidence of such overheating. Fed Governor Christopher Waller offers a rebuttal to Goolsbee, noting the "expected spending" mechanism only works if people can borrow against future income, which many households cannot do due to borrowing constraints. Wall also faces a paradox related to his desire to reduce the Fed's use of "forward guidance" (pre-announcing policy moves). This practice was established in 1999 when Greenspan began signaling hikes to avoid market shocks. If the economy follows a less optimistic path, Wall may be forced to choose between using the guidance he wants to abolish or risking market volatility by staying silent. The ultimate question defining Wall's first major test remains: Is this 1996 or 1999?

marsbit7 saat önce

1996 or 1999? Walsh's First Test is 'How to View AI'

marsbit7 saat önce

İşlemler

Spot
Futures
活动图片