加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

Odaily星球日报Pubblicato 2024-08-10Pubblicato ultima volta 2024-08-10

Introduzione

在过去一周,比特币和以太坊的价格在8月5日大幅下跌,此时这两种加密货币的波动率和成交量达到了峰值。未平仓合约量显著减少,而隐含波动率则同步上升。比特币的资金费率持续下降,可能反映市场参与者对其杠杆交易的兴趣减弱。市场宽度指标显示,多数加密货币价格下跌,整个市场持续承压。此外,非农数据大幅不及预期,推动主流币在数据公布后持续多日下滑。

衰退已至?美国 7 月非农大幅不及预期

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

图片来源:https://hk.investing.com/economic-calendar/nonfarm-payrolls-227

美国 7 月非农报告令市场大跌眼镜,新增就业创下三年半来最低纪录,失业率升至近三年最高水平,并且触发了准确率高达 100% 的衰退指标——萨姆规则。恐慌情绪加速蔓延,交易员开始押注 9 月降息 50 基点的可能性,并预测今年的降息幅度将超过 110 基点。本周美股和比特币都经历了较大幅度的下跌后反弹。

  • 萨姆规则是由经济学家 Claudia Sahm 提出的一种用来预测经济衰退的指标。该规则基于失业率的变化,其触发条件:如果三个月移动平均的就业率比过去 12 个月的最高就业率低出 0.5 个百分点,那么这个指标就被触发,表示经济可能即将或已经进入衰退。

距离下一次美联储议息会议(2024.09.19)还有约 40 天

https://hk.investing.com/economic-calendar/interest-rate-decision-168

市场技术与情绪环境分析

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

情绪分析组成

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

技术指标

价格走势

过去一周 BTC 价格下跌-5.61% ,ETH 价格下跌-16.26% 。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图是 BTC 过去一周的价格图

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图是 ETH 过去一周的价格图

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

表格显示过去一个周的价格变化率

价量分布图(支撑阻力)

过去一周 BTC 与 ETH 向下跌到低位形成新的密集成交区后反弹上升。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图是 BTC 过去一周的密集成交区分布图

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图是 ETH 过去一周的密集成交区分布图

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

表格显示 BTC 与 ETH 过去一周中每周的密集成交区间

成交量与未平仓量

过去一周 BTC 与 ETH 都在 8.5 下跌时成交量最大;未平仓量 BTC 与 ETH 都有大幅下降。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图最上方 BTC 的价格走势,中间是成交量、最下方是未平仓量、浅蓝色是 1 天均值,橘色是 7 天均值。其中 K 线的颜色代表当前的状态,绿色是价格上升有成交量支持,红色是在平仓,黄色是在缓慢累积仓位,黑色是拥挤状态。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图最上方 ETH 的价格走势,中间是成交量、最下方是未平仓量、浅蓝色是 1 天均值,橘色是 7 天均值。其中 K 线的颜色代表当前的状态,绿色是价格上升有成交量支持,红色是在平仓,黄色是在缓慢累积仓位,黑色是拥挤状态。

历史波动率与隐含波动率

过去一周历史波动率 BTC 与 ETH 在 8.5 下跌时最高;隐含波动率 BTC 和 ETH 都上升。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

黄色线为历史波动率,蓝色线为隐含波动率,红点是其 7 日平均

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

事件驱动

过去一周非农数据大幅不及预期,推动主流币在数据公布后持续多日下滑。

情绪指标

动量情绪

过去一周比特币/黄金/纳指/恒指/沪深 300 中,黄金最强势,而表现最差为比特币。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图为不同资产过去一周的走势

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

放贷利率_借贷情绪

过去一周 USD 放贷年化收益平均为 11.1% ,短期利率维持在 12.1% 。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

黄色线为 USD 利率的最高价,蓝色线为最高价的 75% ,红色线为最高价的 75% 的 7 天平均值

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

表格显示 USD 利率过去不同持有天数的平均收益

资金费率_合约杠杆情绪

过去一周 BTC 资费平均年化收益为 5.8% ,合约杠杆情绪在逐步下降。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

蓝色线为币安上 BTC 的资金费率,红色线为其 7 日平均

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

表格显示 BTC 的资费过去不同持有天数的平均收益

市场相关性_一致性情绪

过去一周选中的 129 个币中相关性在 0.95 左右,不同品种间的一致性上升至高位。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图蓝色先为比特币价格,绿色线为['1000 floki', '1000 lunc', '1000 pepe', '1000 shib', '100 0x ec', '1inch', 'aave', 'ada', 'agix', 'algo', 'ankr', 'ant', 'ape', 'apt', 'arb', 'ar', 'astr', 'atom', 'audio', 'avax', 'axs', 'bal', 'band', 'bat', 'bch', 'bigtime', 'blur', 'bnb', 'btc', 'celo', 'cfx', 'chz', 'ckb', 'comp', 'crv', 'cvx', 'cyber', 'dash', 'doge', 'dot', 'dydx', 'egld', 'enj', 'ens', 'eos','etc', 'eth', 'fet', 'fil', 'flow', 'ftm', 'fxs', 'gala', 'gmt', 'gmx', 'grt', 'hbar', 'hot', 'icp', 'icx', 'imx', 'inj', 'iost', 'iotx', 'jasmy', 'kava', 'klay', 'ksm', 'ldo', 'link', 'loom', 'lpt', 'lqty', 'lrc', 'ltc', 'luna 2', 'magic', 'mana', 'matic', 'meme', 'mina', 'mkr', 'near', 'neo', 'ocean', 'one', 'ont', 'op', 'pendle', 'qnt', 'qtum', 'rndr', 'rose', 'rune', 'rvn', 'sand', 'sei', 'sfp', 'skl', 'snx', 'sol', 'ssv', 'stg', 'storj', 'stx', 'sui', 'sushi', 'sxp', 'theta', 'tia', 'trx', 't', 'uma', 'uni', 'vet', 'waves', 'wld', 'woo', 'xem', 'xlm', 'xmr', 'xrp', 'xtz', 'yfi', 'zec', 'zen', 'zil', 'zrx’]整体的相关性

市场宽度_整体情绪

过去一周选中的 129 个币,价格在 30 日均线上方的占比为 6.3% ,相对 BTC 价格在 30 日均线上方占比为 12% ,距离过去 30 天最低价大于 20% 的占比为 9% ,距离过去 30 天最高价小于 10% 的占比为 10% ,过去一周市场宽度指标显示整体市场大部分币维持在下跌态势。

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

上图为['bnb', 'btc', 'sol', 'eth', '1000 floki', '1000 lunc', '1000 pepe', '1000 sats', '1000 shib', '100 0x ec', '1inch', 'aave', 'ada', 'agix', 'ai', 'algo', 'alt', 'ankr', 'ape', 'apt', 'arb', 'ar', 'astr', 'atom',  'avax', 'axs', 'bal', 'band', 'bat', 'bch', 'bigtime', 'blur', 'cake', 'celo', 'cfx', 'chz', 'ckb', 'comp', 'crv', 'cvx', 'cyber', 'dash', 'doge', 'dot', 'dydx', 'egld', 'enj', 'ens', 'eos','etc', 'fet', 'fil', 'flow', 'ftm', 'fxs', 'gala', 'gmt', 'gmx', 'grt', 'hbar', 'hot', 'icp', 'icx', 'idu', 'imx', 'inj', 'iost', 'iotx', 'jasmy', 'jto', 'jup', 'kava', 'klay', 'ksm', 'ldo', 'link', 'loom', 'lpt', 'lqty', 'lrc', 'ltc', 'luna 2', 'magic', 'mana', 'manta', 'mask', 'matic', 'meme', 'mina', 'mkr', 'near', 'neo', 'nfp', 'ocean', 'one', 'ont', 'op', 'ordi', 'pendle', 'pyth', 'qnt', 'qtum', 'rndr', 'robin', 'rose', 'rune', 'rvn', 'sand', 'sei', 'sfp', 'skl', 'snx', 'ssv', 'stg', 'storj', 'stx', 'sui', 'sushi', 'sxp', 'theta', 'tia', 'trx', 't', 'uma', 'uni', 'vet', 'waves', 'wif', 'wld', 'woo','xai', 'xem', 'xlm', 'xmr', 'xrp', 'xtz', 'yfi', 'zec', 'zen', 'zil', 'zrx' ] 30 日的各宽度指标占比

加密市场情绪研究报告(2024.8.2–8.9):衰退已至?美国7月非农大幅不及预期

总结

在过去一周,比特币(BTC)和以太坊(ETH)的价格在 8 月 5 日大幅下跌,此时这两种加密货币的波动率和成交量达到了峰值。未平仓合约量显著减少,而隐含波动率则同步上升。比特币的资金费率持续下降,可能反映市场参与者对其杠杆交易的兴趣减弱。市场宽度指标显示,多数加密货币价格下跌,整个市场持续承压。此外,非农数据大幅不及预期,推动主流币在数据公布后持续多日下滑。

Twitter: @https://x.com/CTA_ChannelCmt

Website: channelcmt.com

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