SignalPlus宏观分析(20240126):GBTC资金持续流出

Odaily星球日报Опубліковано о 2024-01-26Востаннє оновлено о 2024-01-26

Анотація

随著BTC现货ETF的批准尘埃落定,市场观点变得更加负面,后续价格走势令人失望,BTC难以维持在4万美元以上。

SignalPlus宏观分析(20240126):GBTC资金持续流出

SignalPlus宏观分析(20240126):GBTC资金持续流出

欧洲央行连续第三次维持利率不变,不过行长 Lagarde 通过声明和评论表达了鸽派转向的立场;先前声明中的评论“由于劳动单位成本持续增长,价格压力仍然居高不下”在这次欧洲央行声明中被省略,同时 Lagarde 在记者会上表示“通胀放缓正在进行中”,且价格压力将“在这一年中进一步缓解”,此外,虽然她重申委员会认为“讨论降息还为时过早”,但她对这一评论也有所保留,表示如果通胀放缓取得更多进展,降息“有可能”在夏季或夏季前发生。

SignalPlus宏观分析(20240126):GBTC资金持续流出

与美国类似,政策制定者已经明确转向,并提前宣布对抗通胀的胜利,但有迹象表明投入价格可能已达短期底部,我们可能很快就会需要应对价格的反弹,特别是如果航道关闭和油价上涨的情况继续恶化。

SignalPlus宏观分析(20240126):GBTC资金持续流出

美国方面,第四季度经济数据显示美国经济情况仍十分强劲,GDP 增长 3.3% ,大幅超出预期的 2.0% ,个人消费支出也优于预期,强劲的政府支出、库存增加和正面的净出口构成了增长的主要因素,最终需求也保持在目标水平。

SignalPlus宏观分析(20240126):GBTC资金持续流出

SignalPlus宏观分析(20240126):GBTC资金持续流出

美联储和债券市场在软著陆的叙事中再次取得胜利,GDP 走强、消费支出保持稳健、价格压力持续放缓以及就业市场逐渐降温(初请失业金人数 + 2.7 万)推动收益率在牛陡走势中走低;此外,欧洲央行的鸽派立场、中国的救市计划以及略低于预期的东京 CPI 也帮助维持资产价格,虽然 Tesla 股价大跌 11% ,Intel 业绩预测惨淡,但 S&P 500 指数仍徘徊在历史高点附近。

SignalPlus宏观分析(20240126):GBTC资金持续流出

随著 BTC 现货 ETF 的批准尘埃落定,市场观点变得更加负面,后续价格走势令人失望,BTC 难以维持在 4 万美元以上。

SignalPlus宏观分析(20240126):GBTC资金持续流出

ETF 推出的 9 天后,净流出加速至约 1.53 亿美元,与第一周 12 亿美元的流入形成鲜明对比。JPM 比较了 BTC 现货 ETF 和 GLD(黄金 ETF),后者在推出一年后仅吸引了 35 亿美元的资金流入,远低于各界预测的 100-500 亿美元,迄今为止,BTC 现货 ETF 推出一周后的资金流入表现也落后于 GLD,主要是受到 GBTC 持续赎回的影响。

考虑到长期 GBTC 持有者仍有巨额收益未实现,加上 Grayscale 相比于新 ETF 费用较高,短期内 GBTC 的资金流出很可能会持续,当前的市场防守情绪也将持续较长一段时间。

SignalPlus宏观分析(20240126):GBTC资金持续流出

SignalPlus宏观分析(20240126):GBTC资金持续流出

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