Central Bank Communication: Information and Policy Shocks

N. Ostapenko
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Abstract

The study proposes an alternative way to decompose Federal Reserve (Fed) information shocks from monetary policy shocks by employing a textual analysis to Federal Open Market Committee (FOMC) statements. I decompose Fed statements into economic topics using Latent Dirichlet Allocation (LDA). The model was trained on the business section from major US newspapers. After decomposing surprises in Fed futures into a part that is explained by topics from the Fed statements and that is not explained, the study employs these purged series as proxies for monetary policy and Fed information shocks. The results show that, compared to surprises in 3-month federal funds futures, a policy shock identified in this study has a more negative effect on GDP and a more prolonged negative effect on inflation. In the short-run it causes S&P500 to decline and the Fed to raise its interest rate. Identified Fed information shock affects the macroeconomy as the standard news shock: it has positive long-run effects on S&P500, interest rates, and real GDP, whereas it has a negative short-run effect on inflation. Moreover, the Fed information shock reduces credit costs.
央行沟通:信息与政策冲击
本研究通过对联邦公开市场委员会(FOMC)声明的文本分析,提出了一种将美联储(Fed)信息冲击从货币政策冲击中分解的替代方法。我使用潜在狄利克雷分配(LDA)将美联储报表分解为经济主题。该模型是根据美国主要报纸的商业版进行训练的。该研究将美联储期货的意外事件分解为由美联储声明中的主题解释和未解释的部分,然后使用这些经过净化的系列作为货币政策和美联储信息冲击的代理。结果表明,与3个月期联邦基金期货的意外相比,本研究确定的政策冲击对GDP的负面影响更大,对通胀的负面影响更持久。在短期内,它会导致标准普尔500指数下跌,美联储提高利率。确定的美联储信息冲击对宏观经济的影响与标准的新闻冲击一样:它对标准普尔500指数、利率和实际GDP有积极的长期影响,而对通货膨胀有消极的短期影响。此外,美联储的信息冲击降低了信贷成本。
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