Шансы Litecoin на одобрение ETF с его участием - 90%

cryptonews.ruPublished on 2024-05-04Last updated on 2025-03-04

После успешного дебюта спотовых ETF на базе биткоина (BTC) и эфириума (ETH) в 2024 году, сейчас в криптосообществе обсуждают, какой альткоин войдёт в основу следующего аналогичного продукта.

По словам аналитика Bloomberg ETF Джеймса Сейфарта, у Litecoin (LTC) больше всего шансов получить одобрение SEC США, а именно 90%.

По его мнению, это связано с уникальным положением Litecoin в системе регулирования. LTC не участвует ни в одном судебном процессе, во время которого его назвали бы ценной бумагой.

Чтобы получить согласование, необходим зелёный свет от Отдела торговли и рынков и Отдела корпоративных финансов Комиссии по ценным бумагам и биржам SEC.

Примечательно, что за последние недели заявки на Litecoin и HBAR показали определённый прогресс, что, правда, может быть результатом стратегии эмитентов.

Dogecoin и HBAR, похоже, также имеют неплохие шансы на одобрение. Другие популярные альткоины, такие как Solana, XRP, Cardano и Polkadot, остаются в неопределённом положении.

По словам эксперта, главный вопрос заключается в том, будет ли SEC рассматривать эти цифровые активы как ценные бумаги. Если да, то это затруднит их листинг в структуре ETF на основе сырьевых товаров.

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