BIS颁布新的加密货币法规-最新加密货币新闻

币界网Publicado a 2024-07-18Actualizado a 2024-07-18

币界网报道:

国际清算银行(BIS)公布了可能对加密货币行业产生重大影响的新规则。巴塞尔银行监管委员会于7月17日发布的报告要求对银行管理加密货币风险进行更严格的控制,并要求进行详细的披露。主要重点是提高透明度和稳定性,特别是影响Tether的USDT和Circle的USDC等稳定币。

内容隐藏1新规定意味着什么?2行业反应如何?3重要见解

新规定意味着什么?

这些法规的关键要素之一是将稳定币归类为有利的“1b类”监管类别的严格标准。这一调整意味着USDT和USDC等稳定币现在将面临更严格的监管,这可能会使合规性更具挑战性。访问NEWSLINKER获取最新技术新闻。

国际清算银行的这些举措突显了监管机构对广泛使用的区块链稳定币相关风险的日益关注。有趣的是,这一监管转变与香港金融管理局关于稳定币许可制度的咨询文件不谋而合。

行业反应如何?

行业领导者对这些发展表示担忧。Custodia Bank首席执行官Caitlin Long批评国际清算银行偏袒某些稳定币,而将公共区块链上的稳定币边缘化。她指出,美国等主要金融管辖区可能不符合这些新准则。

与国际清算银行的立场相反,金融领域的一些有影响力的人物主张公共区块链。贝莱德加密资产主管表示,相较于私有区块链,他们更倾向于公共区块链,这反映了行业内持续的争论。尽管如此,国际清算银行的指导方针倾向于允许私人区块链上的稳定币,如摩根大通的JPMCoin。

重要见解

    更严格的控制可能会使USDT和USDC等稳定币更难遵守。美国可能不会采用国际清算银行的新加密货币指导方针。公共区块链与私人区块链的争论在金融领域仍在继续。新法规可能会将竞争动态转向允许的稳定币。

随着讨论的深入,道富银行可能推出稳定币,这可能会引入来自成熟金融实体的更多竞争,挑战公共区块链的主导地位。国际清算银行的新规定可能会显著重塑竞争格局,推动更多金融机构转向允许的稳定币。

总之,国际清算银行的新规定和行业的反应可能会给加密货币市场带来相当大的变化。公共区块链稳定币和允许的稳定币之间的持续竞争可能会对金融体系的未来结构产生重大影响。

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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