MicroStrategy计划出售5亿美元股票,或考虑买入更多比特币

Odaily星球日报Опубликовано 2022-09-11Обновлено 2022-09-11

Введение

MicroStrategy将继续监控市场状况,以决定是否筹集更多资金用于购买比特币。

商业软件开发商 MicroStrategy 计划出售最高达 5 亿美元的 A 类普通股,并且有可能购买更多比特币。

根据其周五提交给美国证券交易委员会(SEC )的新招股说明书,该公司已与代理商 Cowen and Company, LLC 和 BTIG, LLC 签订销售协议,计划出售最高达 5 亿美元的 A 类普通股,资金可能会用于购买更多比特币。

该文件称,“我们打算将此次发行的净收益用于一般企业用途,包括购买比特币,除非适用的招股说明书补充文件中另有说明。我们还没有确定专门用于任何特定目的的净收益金额。”

在前任首席执行官兼比特币多头 Michael Saylor 的领导下,MicroStrategy 自 2020 年以来开始将比特币纳入其资产负债表。亿万富翁 Michael Saylor 在今年 8 月份辞去首席执行官一职,但继续担任执行董事长并专注于其比特币战略。新任首席执行官 Phong Le 在 8 月初表示,MicroStrategy 仍计划长期持有比特币。在其发表此番言论之际,受整体加密市场波动和比特币价格暴跌的影响,MicroStrategy 披露 2022 年第二季度的数字资产减值损失为 9.178 亿美元。

MicroStrategy 在文件中的商业策略部分表示,“我们没有为我们寻求持有的比特币数量设定任何具体目标,我们将继续监控市场状况,以决定是否进行额外融资来购买更多的比特币。”

截至发稿时,比特币价格已经重回 21000 美元上方。

另外,Michael Saylor 正面临来自华盛顿总检察长的税务欺诈指控。9 月 1 日,华盛顿特区总检察长 Karl Racine 发推称,将起诉 Michael Saylor 的逃税行为。Karl Racine 表示,Michael Saylor 从未缴纳过任何华盛顿特区的所得税,指责后者犯有欺诈行为。

Karl Racine 称,他还将起诉 MicroStrategy,因为该公司涉嫌合谋帮助 Saylor 逃避缴税,Saylor 已经欠下“数亿美元”税款。

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