Джон Дитон призвал инвесторов сохранять спокойствие на фоне распродаж

cryptonews.ruPubblicato 2025-04-17Pubblicato ultima volta 2025-11-18

Джон Дитон опубликовал комментарий в ответ на анализ рынка, представленный The Kobeissi Letter. Автор исходного поста напомнил, что курс криптовалюты биткоин (BTC) пережил более 10 падений свыше 25%, 6 — более 50% и 3 критических обвала сильнее, чем на 75%. В материале отмечено, что подобные циклы сопровождали глобальный рост монеты на протяжении всей истории.

The Kobeissi Letter заявил, что текущая распродажа относится к категории «рутинных» медвежьих периодов и, вероятно, ближе к завершению, чем к началу. В обсуждении также указано, что нынешняя ситуация стала «механическим снижением избыточного кредитного плеча» и не влияет на фундаментальные показатели.

На этот пост откликнулся юрист Ripple Джон Дитон. Он рассказал, что впервые приобрел биткоины в конце 2016 года и наблюдал рост до $19 000 в декабре 2017 года. Специалист отметил, что не продавал монеты и позже сожалел об этом, но признал, что «не умеет «ловить рынок»». Дитон также вспомнил март 2020 года, когда рыночная ситуация была крайне негативной, и он докупал биткоины по цене $7500. По словам эксперта, переживать распродажи и медвежьи периоды тяжело, но такие фазы проходят.

Публикация The Kobeissi Letter сопровождалась комментариями о необходимости сохранять перспективу и игнорировать шум. Автор напомнил, что фундаментальные показатели BTC реально не изменились, а волатильность создает возможности для входа в рынок. В дискуссии прозвучало мнение о том, что во время паники инвесторы часто игнорируют очевидные математические факторы.

Один из комментаторов в сети X отметил, что моменты, когда данные говорят одно, а толпа уверена в обратном, создают ощущение изоляции. Тогда инвесторы начинают сомневаться в собственных оценках, сталкиваясь с массовыми эмоциональными реакциями. Он добавил, что люди спорят с математикой из-за страха и непонимания, в то время как цифры остаются стабильными.

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