89% пользователей платформы прогнозирования Polymarket несут убытки

investing.ruPubblicato 2024-11-08Pubblicato ultima volta 2024-11-08

Happycoin.club - Почти 89% пользователей популярной платформы прогнозирования Polymarket на блокчейне Polygon теряют деньги. Конечно, соотношение победителей и проигравших игроков может меняться в зависимости от цели ставки, но всё же оно примерно одинаковое.

Так, согласно Dune Analytics, после объявления результатов выборов президента США 14,3% пользователей Polymarket получили прибыль. Около 85,7% игроков понесли убытки.

Большинство пользователей Polymarket несут убытки

Ставки на кандидатов в президенты США показали, что самое большое количество ставок на Polymarket совершались с кошельков, на которых хранится менее $100. Однако по размеру взносов лидируют крупные игроки, которые владеют цифровыми активами на $50 000 и больше.

Аналитики подсчитали, что с более чем 100 000 кошельков были сделаны от 1 до 5 ставок, а с 95 000 кошельков пользователи совершали по 20-50 ставок.

Благодаря выборам президента США Polymarket стала ведущей платформой криптопрогнозирования по объёму торгов. Во время голосования площадка обработала более 371 млн сделок, но на следующий день этот показатель резко упал всего до 37 млн.

Чтобы восстановить высокий объём торгов, Polymarket уже принимает ставки на ожидания, связанные с президентством Дональда Трампа: его политические решения, действия, распределение должностей в кабинете министров и многое другое.

Читайте оригинальную статью на сайте Happycoin.club

Letture associate

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