美国参议院着眼2026年秋季推出加密货币税收法案,力推《CLARITY法案》

TheNewsCryptoPublicado em 2026-06-24Última atualização em 2026-06-24

Resumo

美国参议院正推进针对加密货币的专项税收立法工作,目标是在2026年秋季前推出相关法案。参议员史蒂夫·戴恩斯透露,共和党议员已为此制定了立法框架,并表示立法进程将“宜早不宜迟”。该框架与众议院近期提出的加密税收法案思路相似。 国会日益关注虚拟资产的清晰税收规则,参议院财政委员会此前已就质押奖励、挖矿等数字资产涉税问题举行听证会。众议院方面也已提出多个草案,涉及质押、挖矿、去中心化金融及稳定币交易等议题。 与此同时,旨在建立全面加密监管框架的《数字资产市场清晰法案》仍是立法优先事项。该法案已获参议院银行委员会两党投票通过,目前正在讨论中。超过200家加密公司呼吁参议院领导层推动该法案投票,认为明确的监管将促进美国数字资产市场的创新与投资。 市场参与者密切关注这两项立法进展,因为税收与监管对加密行业和投资者至关重要。分析认为,参议院的税收条款与《清晰法案》是互补举措,旨在共同构建更完整的数字资产监管框架。尽管两项法案均未最终获批,但国会的活跃动向表明加密立法进程正在加速。

随着参议院进一步推进专门的加密货币税收立法,美国立法者持续推动数字资产监管。参议员史蒂夫·戴恩斯透露,共和党参议员们已经制定了框架。在接受彭博税务采访时,参议员史蒂夫·戴恩斯表示,“会早不会晚”。他还说,“我们已经制定了一个框架。”这意味着国会已为审议和讨论制定了框架。尽管戴恩斯未透露更多信息,但他补充说,该计划与众议院近期提出的加密货币税收法案非常相似。

来源:彭博税务

国会对于为虚拟资产制定更清晰税收规则日益增长的兴趣,促使参议院制定该提案。参议院财政委员会此前已讨论过加密货币税收立法,特别是在关于质押奖励、挖矿以及与数字资产报告相关的其他问题的听证会期间。

此外,众议院也已提出数版加密货币税收立法草案,包括众议院筹款委员会提出的草案。该立法涉及质押、挖矿、去中心化金融操作、稳定币交易等问题。

《CLARITY法案》仍是首要任务

尽管参议院正在推进其税收提案,但立法者们仍在讨论《数字资产市场CLARITY法案》。该法案旨在为加密货币建立全面的监管体系,并为联邦监管机构界定监管权限。参议院银行委员会已通过两党投票以15比9的结果通过了该法案。虽然参议院仍在等待其他条款,但该法案已进入讨论阶段。

与此同时,行业团体仍然是该法案的倡导者,超过200家加密货币公司呼吁参议院领导层将该法案付诸表决。他们表示,明确的法规将刺激美国数字资产市场的创新和投资。

监管明确性仍居议程首位

市场参与者将密切关注这两项进展,因为税收和监管对加密业务和投资者始终至关重要。人们认为,参议院的税收条款和《CLARITY法案》是相辅相成的举措,旨在为数字资产创建一个更完善的框架。尽管这两项提案尚未最终获得批准,但国会的活跃度表明加密货币立法进程正在加速。未来几个月可能会相当令人关注。

加密新闻摘要:

瑞波在卢森堡获得初步MiCA批准,以推动欧洲范围扩张

标签区块链彭博Clarity ACT加密货币税收加密货币税收参议员美国美国国会

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Perguntas relacionadas

Q美国参议院计划何时推出专门的加密货币税收法案?

A美国参议院的目标是在2026年秋季发布加密货币税收法案。

Q参议员Steve Daines在采访中透露了什么关于加密货币税收立法的信息?

ASteve Daines透露,共和党参议员已经制定了一个立法框架,并表示法案的推出将是“宜早不宜迟”。他还指出,该计划与众议院最近提出的加密货币税收法案非常相似。

Q除了税收法案,国会目前还在优先讨论哪一项与加密货币相关的法案?

A国会目前仍在优先讨论《数字资产市场清晰法案》(CLARITY Act),该法案旨在建立全面的加密货币监管框架,并明确联邦机构的监管权限。

Q行业团体对《CLARITY法案》持什么态度?

A行业团体是该法案的倡导者,超过200家加密货币公司呼吁参议院领导层将该法案付诸表决。他们认为明确的监管将刺激美国数字资产市场的创新和投资。

Q文章认为参议院的税收提案和《CLARITY法案》之间是什么关系?

A文章认为,参议院的税收提案和《CLARITY法案》是互补的举措,旨在为数字资产创建一个更完整的法律框架。

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