加密货币市场是否已触底?分析师Jason Pizzino表示,以下是各种信号所暗示的

币界网Опубліковано о 2024-08-15Востаннє оновлено о 2024-08-15

币界网报道:

分析师兼交易员Jason Pizzino正在权衡加密货币市场是否会经历更多下行的可能性。

在一段新视频中,Pizzino告诉他的332000名YouTube用户,在过去几周加密货币总市值的下降趋势上,“有相当好的迹象表明,我们可能已经看到了低点”。

根据Pizzino的说法,其中一个迹象是,加密货币总市值在达到每周50%的回撤水平后,最近的下跌趋势发生了逆转。

“你可以看到,这种反弹在牛市区间(50%)出现了停滞。所以这正是你希望看到的平衡市场。”

这位加密货币分析师还表示,加密货币总市值从周期底部到周期顶部再回到50%回撤水平所需的周数几乎相似。

“现在,就时间框架而言……你在这里也得到了类似的时间平衡——你大约有21到26周的上行时间。我们刚刚完成了21周的下行时间。

所以很高兴看到时间的平衡,最重要的是,它已经达到了50%的水平。”

Pizzino进一步表示,加密货币恐惧与贪婪指数和交易量指标进一步强化了他对加密货币市场调整可能已经结束的信念。加密货币恐惧与贪婪指数是一种衡量市场恐惧或贪婪水平的工具,极端恐惧的读数表明超卖情况,极端贪婪的读数表明超买情况。

“因此,许多这些信号都是在市场处于良好阶段时出现的。你会感到极度恐惧,然后在非常强劲的交易量下出现强劲反弹。”

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