В CryptoQuant заявили о снижении активности в сети биткоина

cryptonews.ruPublished on 2024-05-24Last updated on 2025-02-24

  • Эксперты CryptoQuant заявили, что активность в сети биткоина снижается на фоне ослабления настроений инвесторов.
  • Также аналитики указали на уменьшение количества активных кошельков.

Активность в сети биткоина снижается на фоне ослабления настроений инвесторов. Об этом заявили аналитики компании CryptoQuant.

Bitcoin Network Activity Declines as Investor Sentiment Weakens

“If uncertainty persists, we must consider the possibility of another prolonged consolidation phase, similar to what began in March 2024.”– By @Avocado_onchain

Read more ⤵️https://t.co/oojUHDNSJ1 pic.twitter.com/oExbUdZDSl

— CryptoQuant.com (@cryptoquant_com) February 23, 2025

Они отметили, что количество активных кошельков и транзакций в сети биткоина демонстрирует спад. Кроме того, темпы аккумуляции первой криптовалюты через спотовые ETF замедлились, наблюдаются незначительные оттоки капитала, добавили эксперты.

«Суммы неизрасходованных исходящих транзакций (UTXO) также уменьшаются — масштабы этого спада подобны коррекционному периоду в сентябре 2023 года. Если эта тенденция продолжится, можем увидеть признаки выхода инвесторов, похожие на ситуацию во время пика рыночного цикла в 2017 году», — говорится в сообщении.

Впрочем, в CryptoQuant подчеркнули, что простое снижение количества UTXO не является достаточным основанием для подтверждения завершения текущего цикла, поскольку другие показатели все еще указывают на потенциально «бычий» тренд.

Кроме того, эксперты считают ослабление общих настроений инвесторов ключевой проблемой. По их словам, прошлый рост биткоина был обусловлен оптимизмом вокруг победы Дональда Трампа на выборах и создания стратегического крипторезерва.

«Однако Трамп не выдал конкретных исполнительных указов или законодательных инициатив. Дополнительное давление создают геополитические напряжения, в частности связанные с торговой политикой. Учитывая, что предыдущие бычьи драйверы уже учтены в цене, дальнейший рост потребует либо решения неопределенностей, либо появления новых положительных факторов», — отметили аналитики.

Они подытожили, что если неопределенность сохранится, нельзя исключать возможность очередной затяжной фазы консолидации, подобной той, что началась в марте 2024 года.

Напомним, ранее в CryptoQuant заявили о потенциальном начале медвежьей фазы на крипторынке.

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