税收吞掉过半收益?加密巨鲸的 3 个合法保利策略

深潮Published on 2025-08-26Last updated on 2025-08-27

富有的投资者几乎从不直接出售加密货币。

撰文:JetStart

编译:Chopper,Foresight News

如果你以错误的方式出售加密货币,超一半收益可能都得缴成税。想象一下:赚了 20 万美元,却要直接给美国国税局交 11 万。以下是富有的投资者如何合法保住利润的方法。

赚大钱,就会遇到大麻烦。银行会盘问你的每一笔交易,税务部门会盯着你的一举一动。就连买辆车、买套房都可能变成噩梦。不提前规划,收益可能很快就没了。

策略一:借钱,而非卖出

把你的比特币或以太坊当抵押品,借出现金或稳定币。这样不用动持仓就能盘活资金。

举例:100 万美元的比特币,按 30% 的抵押率,能借到 30 万美元。既能持有代币,又能免税拿到资金。

这办法管用的原因很简单:贷款不算收入。

借钱时,美国国税局不会把这当成应税事项。你的加密货币仍在自己掌控中,不会触发资本利得税。

巨头们会通过低抵押率来稳妥借钱。

策略二:卖出前先搬家

不同国家对加密货币收益的征税规则不一样。套现前搬到这些地方,可能省下数百万税费。

热门选择包括波多黎各(根据第 60 号法案,税率为 0%)以及阿联酋(收入和资本利得均免税)。

策略三:利用离岸实体

在开曼群岛、英属维尔京群岛或塞舌尔等免税区成立公司。由公司而非你个人持有加密货币。公司卖出加密货币时,不会触发你的个人资本利得税。只要架构搭建得当,这种方式完全合法。

不必由你亲自提取利润,你的离岸公司可以将资金以贷款的形式借给你。贷款不被视作收入,因此无需缴纳税款。你可以将这笔资金用于购置房地产、支付薪资或是进行投资。

加密巨鲸们这样操作会带来一系列好处:

  • 个人钱包能保持私密性,更难被追踪。

  • 银行对账单上显示的是贷款还款,而非应税收入。

  • 链上活动可避免直接出售加密货币的操作痕迹。

  • 若架构设置合理,就能合法地将税费降至最低,甚至免除税费。

总结

富有的投资者几乎从不直接出售他们的加密货币。他们借助抵押借贷、移民策略以及离岸实体等方式来保护自己的利润。如今,理解这些规则比以往任何时候都更为重要。

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