CFTC瞄准政治预测市场-最新加密货币新闻

币界网Published on 2024-08-11Last updated on 2024-08-11

币界网报道:

美国商品期货交易委员会(CFTC)提出了一项新提案,禁止在政治预测市场进行交易,导致加密货币行业出现重大动荡。这项拟议的监管可能会严重影响美国Polymarket等流行预测市场的未来。

内容隐藏1政治压力和反对2法律和监管争议3潜在影响

政治压力和反对

包括伊丽莎白·沃伦在内的知名民主党人主张迅速实施这一规定,认为应该禁止在政治事件和其他比赛中下注。他们认为,此类活动加剧了政治体系内现有的透明度问题,押注选举结果尤其危险。访问COINTURK FINANCE获取最新的金融和商业新闻。

相比之下,该提案遭到了加密货币和金融科技行业的强烈抵制。Gemini的Cameron Winklevoss等行业领导者以及Crypto.com和Robinhood等公司认为,该规定既不必要也危险。Winklevoss呼吁CFTC撤回该提案,并与行业利益相关者进行讨论。

法律和监管争议

法律界也批评CFTC可能超越其监管权限。Dragonfly Capital的法律顾问强调,CFTC可能需要证明其对这些合同的管辖权,特别是在最高法院废除雪佛龙原则之后。许多人认为,CFTC不是赌博或选举监管机构,缺乏干预这些市场的权力。

预测市场在美国广受欢迎,流通量近6亿美元,通常与唐纳德·特朗普和卡玛拉·哈里斯等人物有关。这种大量的财务参与解释了加密货币行业强烈反对CFTC的提议。

潜在影响

关键要点:

    由于拟议的禁令,像Polymarket这样的政治预测市场可能会面临重大挫折。加密货币和金融科技领域的主要参与者对此表示强烈反对。可能会出现法律挑战,质疑CFTC对政治预测市场的管辖权。伊丽莎白·沃伦和其他民主党人正在推动快速实施,理由是透明度和安全问题。

这些因素共同表明,美国政治预测市场的未来充满争议,具有重大的经济和法律影响。

正在进行的辩论提出了一个问题:政策制定者的禁令呼吁会得到支持吗?还是加密货币行业的抵制会塑造政治预测市场的未来?结果还有待观察。

您可以在Telegram、Twitter(X)和Coinmarketcap上关注我们的新闻。免责声明:本文所含信息不构成投资建议。投资者应该意识到加密货币具有高波动性,因此存在风险,应该进行自己的研究。

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