Майкл Сэйлор: «Главный драйвер роста цены биткоина — его растущее институциональное принятие»

investing.ruPublished on 2024-10-22Last updated on 2024-10-22

Майкл Сэйлор (Michael Saylor) подчеркнул, что стоимость биткоина будет расти в среднем на 29% в год, поскольку инвесторы оптимистично настроены в отношении перспектив цифрового золота:

«Акционеры настроены очень оптимистично по отношению к биткоину. Нет никого, кто купил бы акции MicroStrategy и при этом ненавидел криптовалюту. А главным драйвером роста цены монеты является ее растущее институциональное принятие».

По словам Сэйлора, благоприятную среду для повышения привлекательности первой криптовалюты могут создать либеральные и прозрачные решения по регулированию индустрии. Без регулирования добиться принятия биткоина консервативными институциональными фондами будет чрезвычайно сложно.

Власти США и Евросоюза не станут предпринимать репрессивных мер по изъятию биткоинов у крупных держателей, по аналогии с конфискацией золота в США во времена Великой депрессии, чтобы снизить влияние первой криптовалюты на финансовые рынки, уверен бизнесмен.

Ранее Майкл Сэйлор предложил американским банкам выдавать своим клиентам обеспеченные биткоином долларовые кредиты для развития рынка и извлечения дополнительной прибыли.

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