卡玛拉·哈里斯和唐纳德·特朗普在Polymarket上就谁将成为下一任美国总统达成一致

币界网2024-08-08 tarihinde yayınlandı2024-08-08 tarihinde güncellendi

币界网报道:
唐纳德·特朗普(Donald Trump)和卡玛拉·哈里斯(Kamala Harris)现在在Polymarket上并列,投注者给予他们入主白宫的同等几率。特朗普主题的模因币在过去一个月也大幅下跌。
前总统唐纳德·特朗普在白宫竞选中以明显领先于民主党人的优势开始了选举周期。现在,随着乔·拜登总统下台,卡玛拉·哈里斯成为该党候选人,这种领先地位已经不复存在。
(Polymarket)
在过去的一个月里,特朗普重新入主白宫的几率下降了13个百分点,而哈里斯的几率上升了34个百分点——首先是作为在竞选最后几天取代拜登的可能继任者,然后是特朗普的政治对手。

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