Аналитики Matrixport оценили скрытый альфа-потенциал криптовалютных IPO на триллионы

cryptonews.ruОпубліковано о 2025-02-02Востаннє оновлено о 2025-10-03

Текущий цикл крипторынка развивается иначе, чем предыдущие. Исследователи Matrixport заявили: раньше капитал активно направлялся в ранние стадии проектов, но теперь акцент сместился на организации, уже готовые к IPO и обладающие масштабируемым бизнесом. Это отражает стратегию институциональных инвесторов, которые предпочитают минимизировать риски и поддерживать проверенные компании. В то же время альткоины, венчурные фонды и хедж-фонды показали слабую динамику и значительно уступили биткоину по доходности.

Розничные инвесторы в этом цикле остаются менее активными, чем раньше. Многие из них не участвуют в росте, предпочитая держать средства вне высокорисковых активов. Это также объясняется волатильностью и большой конкуренцией внутри криптосектора. Институциональные же участники концентрируются на компаниях, которые уже могут выйти на публичный рынок. Их интерес к IPO-готовым проектам становится ключевым фактором перераспределения капитала.

По словам аналитиков, на Уолл-стрит сохраняется сильная мотивация продлить текущий бычий цикл. Эксперты говорят о будущих криптовалютных IPO на сумму до $226 млрд. Потенциально это может привести к привлечению $30 млрд–$45 млрд нового капитала. Такой масштабный приток способен стать топливом для следующего этапа роста рынка и усилить институциональное присутствие.

Особенность IPO заключается в том, что они относительно небольшие по размеру. Однако именно низкая ликвидность размещений может усилить ценовые движения. Небольшой объем свободных акций способен резко повысить стоимость при высоком спросе. Для фондов и хедж-игроков это создает благоприятные возможности для распределения капитала и получения дополнительной прибыли. По мнению специалистов, скрытый альфа-потенциал нового цикла кроется именно в криптовалютных IPO.

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