摩根大通:比对黄金投资数据,比特币即将见顶

Odaily星球日报Опубліковано о 2024-03-08Востаннє оновлено о 2024-03-08

Анотація

比特币ETF的合理规模约为620亿美元,目前已达到530亿美元。

原文作者 | JP Morgan

编译 | Odaily星球日报南枳

摩根大通:比对黄金投资数据,比特币即将见顶

本周四,由 Nikolaos Panigirtzoglou 领导的摩根大通分析师团队发布了一篇比特币 ETF 研究报告,报告指出:“风险是经常被忽视的关键因素,比特币应该与黄金在投资组合中相匹配”。报告表示,目前以金融投资为目的所持有的黄金总价值为 3.3 万亿美元,若比特币市值上升至同一数值,则比特币价格将上涨一倍以上。

(Odaily星球日报注:按照 67000 USDT 计算,比特币目前市值为 13164 亿美元,距离 3.3 万亿美元还有 150% 。黄金总市值为 14.5 万亿美元。)

报告指出,大多数投资者在跨资产配置时将考虑风险和波动性,而比特币的波动性约为黄金的 3.7 倍,因此期望比特币在投资组合中达到与黄金相当的名义金额是不现实的(即市值难以达到 3.3 万亿美元)。如果比特币在风险投资中与黄金匹配,应当将 3.3 万亿市值除以 3.7 ,合理的市值应为 8900 亿美元。

分析师表示,“这意味着比特币的(合理)价格为 45, 000 USDT,远低于当前水平。换句话说,在当前的 66, 000 USDT 价位,比特币在投资者投资组合中的配置规模已经超过了基于波动率调整的黄金。

ETF 流入资金预计为 620 亿美元

以金融投资为目的所持有的 3.3 万亿美元黄金中,只有 7% 以基金形式所持有,约 2300 亿美元,其余以金条、硬币的形式保存。

因此同样地以 3.7 的波动比例计算,比特币 ETF 的合理规模约为 620 亿美元,这也是比特币 ETF 潜在的目标上限,随着时间推移,可能在两到三年内实现。但很大一部分净流入可能来自从现有(投资)工具向 ETF 的持续轮动转移。

(Odaily星球日报注:Dune 统计数据显示,比特币现货 ETF 目前共持有 791, 085 枚 BTC,资管规模达到了 530 亿美元,距离摩根大通所提出的合理规模仅有 90 亿美元的差距。)

Farside Investors 数据显示,截止 3 月 8 日 15 时,自比特币现货 ETF 通过以来,累计净流入为 93.7 亿美元。

摩根大通:比对黄金投资数据,比特币即将见顶

因此若保持相同速度,将于今年 5 月抵达摩根大通的预测上限。)

参考资料:摩根大通此前预测报告

Odaily星球日报对 Nikolaos Panigirtzoglou 领导的摩根大通分析师团队此前报告进行了整理,其近期预测和观点如下:

2 月 29 日报告: 4 月份进行的减半活动可能会引发比特币价格大幅下跌,预计下跌至 42000 USDT;

2 月 22 日报告:散户投资者对加密货币的热情在 2 月份反弹,因此可能是本月加密货币市场强劲上涨的原因之一。主线是 AI 和 Meme;(注:当日 WLD 收盘价 8.15 USDT,PEPE 收盘价 0.0 { 5 } 121 USDT)

1 月 25 日报告:GBTC 获利回吐基本结束,比特币下跌空间有限;(注:BTC 当日收盘价 39961 USDT)

1 月 18 日报告:随着 GBTC 获利回吐,比特币价格可能面临更大压力;(注:BTC 当日收盘价 41327 USDT)

1 月 12 日报告:以太坊现货 ETF 在 5 月前获批的可能性不超过 50% ;

1 月 11 日报告: 2024 年全年比特币现货 ETF 预计将有 360 亿美元资金流入,GBTC 预计流出 130 亿美元。

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