CFTC向举报人奖励超过100万美元,以表彰其在加密货币交易案件中的重要提示

币界网2024-08-10 tarihinde yayınlandı2024-08-10 tarihinde güncellendi

币界网报道:

美国商品期货交易委员会(CFTC)已向一名加密货币举报人奖励了100多万美元。

根据8月8日的新闻稿,举报人的信息使CFTC能够对数字资产市场的不当交易采取执法行动。

告密者的提示揭示了隐藏的不当交易

CFTC执法总监Ian McGinley表示:“识别数字资产市场中的非法行为是CFTC的首要任务,尤其是在普通美国人越来越多地成为数字资产骗局的受害者之际。”。

他还强调了该机构对这一领域的关注,指出在上一个财政年度,CFTC近一半的执法行动与数字资产案件有关。他补充说,该机构在此期间收到的大多数举报线索也与数字资产有关。

举报人的身份受到《商品交易法》(CEA)的保护,他向CFTC提供了“足够具体和可信的信息”,揭露了以前未知的不当交易活动。

CFTC举报人办公室主任Brian Young表示,这些信息使监管机构能够在与数字资产市场有关的案件中采取果断行动。

杨指出:“举报人在CFTC在数字资产领域的执法行动中发挥着越来越重要的作用。”。

CFTC的举报计划

CFTC的举报人计划是根据2010年《多德-弗兰克华尔街改革和消费者保护法案》建立的,在鼓励内部人士提供有关不当行为的信息方面发挥了关键作用。

自2014年首次获得奖励以来,该计划已颁发总计约3.8亿美元的奖励,与导致近32亿美元货币制裁的执法行动挂钩。值得注意的是,只要满足特定标准,举报人奖励可以与CFTC领导的行动以及其他国内外监管机构发起的行动联系起来。

根据《商品交易法》(CEA),举报人有资格获得因其信息而收取的10%至30%的货币制裁。值得注意的是,所有举报人奖励都是由CFTC的客户保护基金支付的,该基金的资金完全来自CEA违规者支付的货币制裁。没有从受伤客户那里获得资金来支持该计划。

CEA还为举报人提供保密保护,除非在有限的情况下,否则不会披露他们的身份或任何合理预期会泄露他们身份的信息。

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