Winklevoss Twins抨击CFTC针对活动合同的新提议规则,称该提议将被法院驳回

币界网Publicado a 2024-08-11Actualizado a 2024-08-11

币界网报道:

Gemini联合创始人Tyler和Cameron Winklevoss抨击商品期货交易委员会(CFTC)提出了一项针对活动合约的新规则。

Tyler Winklevoss在社交媒体平台X上的一条新帖子中表示,监管机构应撤回其新提出的指导方针,因为它将拒绝美国公民获得活动合同或期货合同,这些合同为选举、游戏或发展等事件的结果提供“是”或“否”的选择。

“商品期货交易委员会应撤销其关于活动合约的拟议规则,该规则将明确禁止美国的所有活动合约,如世界上最大的预测市场Polymarket上交易的合约。美国人不应被剥夺进入这些强大市场的机会。”

根据Cameron Winklevoss的说法,去中心化的预测市场很重要,因为它们“提供了关于未来事件的有价值的信息,这些信息植根于财务问责制”。这位亿万富翁接着说,由于最高法院的最新裁决,CFTC提出的规则将在法庭上被推翻。

“对于以这种或那种形式使用了几十年并被证明是预测未来事件的极其可靠的工具的市场,全面禁止是没有任何考虑的…

这项拟议规则如果获得通过,将被法院推翻。最高法院最近在Loper Bright Enterprises诉Raimondo案中的裁决明确指出,监管机构不能通过制定规则来扩大权力,而这正是这项拟议规则将要做的。”

在最近的一份新闻稿中,商品期货交易委员会表示,它提议进行修改,以明确《商品交易法》(CEA)下的合同类型,作为保护公众利益的一种手段。该提案审查了涉及“游戏”的活动合同,根据联邦或州法律,这些活动被视为非法。

根据CFTC的说法,游戏涵盖了押注政治竞赛、奖励竞赛和体育竞赛结果的活动合同。

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