沃什上任第一天,市场给个“下马威”:预期今年加息

marsbitОпубликовано 2026-05-23Обновлено 2026-05-23

Введение

美联储新任主席沃什于5月22日正式就职,上任首日即面临市场严峻考验。由于伊朗冲突推高能源与运输成本加剧通胀压力,加上美联储理事沃勒同日发表强硬鹰派言论,称未来加息与降息可能性“五五开”,市场加息预期急剧升温。美债遭抛售,2年期收益率升至2月以来新高,期货市场已完全定价美联储今年将加息25个基点。 沃勒在讲话中明确表示通胀已成为政策核心“驱动力”,并支持删除政策声明中的“宽松偏向”措辞。他承认近期数据已改变其长期宽松立场,虽称油价冲击可能消退且近期未必立即加息,但也无法排除未来因通胀持续而加息的可能性。 沃什即将于6月中旬首次主持FOMC会议,压力巨大。数据显示通胀指标已升至三年来高位。分析指出,若沃什在6月会议上选择不加息,即便经济未过热,市场也可能将此解读为变相宽松,因为在不加息的情况下应对广泛通胀风险等同于政策放松。 市场预期从年初的多次降息大幅转向为目前预期加息,形成鲜明反差。尽管长端美债估值略显便宜,但分析师指出,在宏观风险未变的情况下,其收益率仍面临结构性上行压力。 沃什是在白宫宣誓就职的格林斯潘以来首位美联储主席,其独立性备受关注。特朗普曾希望其更顺从降息要求,但当前市场明确传递信号:通胀是最紧迫议题,新主席几乎没有缓冲时间。

撰文:鲍奕龙

沃什正式执掌美联储,却在上任首日便遭市场当头一棒。

5月22日周五,特朗普在白宫主持宣誓仪式,正式将美联储权杖交予沃什。沃什接手美联储之际,伊朗战争引发的能源与运输成本飙升,正持续向通胀传导。

华尔街见闻提及,同日美联储理事沃勒发表鹰派讲话,明确表示通胀是未来政策决策的"驱动力",称未来加息与降息“五五开”,这一表态直接推动加息预期急剧升温。

当日美债市场遭抛售,对利率敏感的2年期美债收益率上行4个基点,创今年2月以来新高。

(美债主要期限收益率本周走势)

期货市场目前已完全计入今年25个基点的加息预期。

(市场预期美联储年内将加息25基点)

TS Lombard经济学家Steven Blitz直言,若沃什在6月首次主持货币政策会议时选择不加息,市场将不会给他任何宽容空间。

沃勒强硬转向,通胀成政策"驱动力"

就在沃什宣誓就职的同一时刻,美联储理事沃勒在法兰克福一场题为"政策风险已经改变"的演讲中发出了迄今为止最为鹰派的信号,其立场转变之显著令市场瞩目。

沃勒表示:

通胀没有朝正确方向前进,我支持删除政策声明中的'宽松偏向'措辞,以明确传递降息与加息的可能性已不相上下。

他进一步指出:

我已无法排除,若通胀不能尽快回落,未来将需要加息。

沃勒坦承,近期劳动力市场报告与通胀数据令他改变了此前长期持有的宽松立场。

他同时表示,油价冲击或许很快会消退,但强调这不意味着"近期就应考虑加息",加息需要通胀预期出现"脱锚"的条件。

此前美联储4月会议纪要显示,"许多"官员已倾向于放弃宽松偏向,包括三位在4月声明中就此问题提出异议的地区联储主席,沃勒的最新表态与这一趋势相互印证。

沃什首秀在即,6月会议压力巨大

沃什将于6月中旬首次主持联邦公开市场委员会(FOMC)会议,市场观察人士对沃什即将面对的处境并不乐观。

美联储首选通胀指标已升至三年来最高水平,4月整体物价增速达到6%。市场隐含的一年期通胀预期约为4%。

TS Lombard经济学家Blitz则表示,若沃什在6月决定不加息,即便届时经济增长依然稳健、远未过热,市场也会将其解读为变相宽松。Blitz说:

在通胀风险广泛上升的背景下,未能在6月加息,实际上等同于放松。

毕马威美国首席经济学家Diane Swonk则指出,中东局势是在此前已然存在的价格压力之上再度加码。她说:

这是美联储无法对战争及其通胀影响,采取忽略处理的诸多原因之一。

当前市场对美联储加息25个基点的预期,与年初市场普遍押注多次降息的情形形成鲜明反差。

(今年2月前后,市场对美联储利率走势预期变化对比)

尽管受本周能源价格走低影响,10年期美债收益率未出现大幅上行。

但高盛的George Cole指出,长端美债虽相对公允价值略显便宜,但估值尚未偏离到足以支撑更深幅反弹的程度。

(长端美债相对公允价值略显便宜)

George Cole强调,在宏观风险格局未发生实质转变之前,长端收益率仍面临供给压力及债务融资周期的结构性上行风险。

独立性考验,历史性就职时刻背后的隐忧

沃什是自格林斯潘以来首位在白宫宣誓就职的美联储主席,这一细节本身已被市场视为信号。

特朗普寄望于这位他在今年1月提名的前美联储理事对降息要求更为顺从,此前沃什在提名竞争中击败了白宫经济学家哈塞特、沃勒以及贝莱德高管Rick Rieder。

美联储的独立性压力在近期尤为突出。

华尔街见闻提及,特朗普盟友、哥伦比亚特区联邦检察官Jeanine Pirro,曾就美联储25亿美元总部翻新工程对鲍威尔展开刑事调查,该调查已撤销,但鲍威尔表示这是向官员施压以促其降息的借口。

沃什此次就任四年任期,成为美联储第17任主席委员会主席。

然而,市场已然明示:无论政治环境如何,通胀才是当下最紧迫的议题,而这位新主席几乎没有时间从容布局。

Связанные с этим вопросы

Q沃什上任美联储主席后,市场有何即时反应?

A沃什上任首日,市场即给出‘下马威’:美债市场遭抛售,对利率敏感的2年期美债收益率大幅上行;同时,期货市场已完全计入美联储今年将加息25个基点的预期。

Q美联储理事沃勒发表了怎样的鹰派言论?

A美联储理事沃勒表示,通胀已成为未来政策决策的‘驱动力’,他支持删除政策声明中的‘宽松偏向’措辞,并明确表示降息与加息的可能性已不相上下。他无法排除若通胀不能尽快回落,未来将需要加息的可能。

Q经济学家Steven Blitz对沃什主持的6月FOMC会议有何警告?

ATS Lombard经济学家Steven Blitz警告,若沃什在首次主持的6月货币政策会议上决定不加息,市场将不会给他任何宽容空间。他认为在通胀风险广泛上升的背景下,不加息实际上等同于放松政策。

Q文章中提到,沃什就职的特殊细节是什么?这被市场视为什么信号?

A沃什是自格林斯潘以来首位在白宫宣誓就职的美联储主席。这一细节被市场视为一个信号,外界猜测特朗普总统可能寄望于这位由他提名的前美联储理事在未来降息问题上更为顺从。

Q当前市场对美联储加息的预期与年初相比有何剧烈变化?

A当前市场已完全计入美联储今年将加息25个基点的预期。这与年初市场普遍押注美联储将进行多次降息的情形形成了鲜明反差,反映出市场对通胀前景和政策走向的判断发生了根本性转变。

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