scholarly journals High-Frequency Data and a Weekly Economic Index during the Pandemic

2021 ◽  
Vol 111 ◽  
pp. 326-330
Author(s):  
Daniel J. Lewis ◽  
Karel Mertens ◽  
James H. Stock ◽  
Mihir Trivedi

This paper describes a weekly economic index (WEI) developed to track the rapid economic developments associated with the onset of and policy response to the novel coronavirus in the United States. The WEI, with its ten component series, tracks the overall economy. Comparing the contributions of the WEI's components in the 2008 and 2020 recessions reveals differences in how the two events played out at a high frequency. During the 2020 collapse and recovery, it provides a benchmark to interpret similarities and differences of novel indicators with shorter samples and/or nonstationary coverage, such as mobility indexes or credit card spending.

2020 ◽  
Author(s):  
Daniel J. Lewis ◽  
Karel Mertens ◽  
James H. Stock ◽  
Mihir Trivedi

Significance GDP posted growth of 9.4% year-on-year in the second quarter, the highest rate in 23 years. According to high-frequency data, economic recovery appears to have continued between July and September albeit at a slightly slower pace. Impacts Low inflation will allow the Central Bank to maintain an accommodative stance in the short term; any rate hikes next year will be gradual. Banks’ profitability and credit quality may deteriorate in 2022 as loan restructuring measures expire and lagged pandemic effects kick in. The exchange rate may further depreciate amid uncertainty over the country’s fiscal prospects and the outcome of the 2022 elections. While tourism appears to be on a strong trajectory, the spread of Omicron in Europe and the United States could reverse its recovery.


2017 ◽  
Vol 22 (7) ◽  
pp. 1875-1903 ◽  
Author(s):  
Hachmi Ben Ameur ◽  
Fredj Jawadi ◽  
Wael Louhichi ◽  
Abdoulkarim Idi Cheffou

This paper studies stock price comovements in two key regions [the United States and Europe, which is represented by three major European developed countries (France, Germany, and the United Kingdom)]. Our paper uses recent high-frequency data (HFD) and investigates price comovements in the context of “normal times” and crisis periods. To this end, we applied a non-Gaussian Asymmetrical Dynamic Conditional Correlation (ADCC)-GARCH (Generalized Autoregressive Conditional Heteroscedasticity) model and the Marginal Expected Shortfall (MES) approach. This choice has three advantages: (i) With the development of high-frequency trading (HFT), it is more appropriate to use HFD to test price linkages for overlapping and nonoverlapping data. (ii) The ADCC-GARCH model captures further asymmetry in price comovements. (iii) The use of the MES enables to measure systemic risk contributions around the distribution tails. Accordingly, we offer two interesting findings. First, while the hypothesis of asymmetrical and time-varying stock return linkages is not rejected, the MES approach indicates that both European and US indices make a considerable contribution to each other's systemic risk, with significant input from Frankfurt to the French and US markets, especially following the collapse of Lehman Brothers. Second, we show that the propagation of systemic risk is higher during the crisis period and overlapping trading hours than during nonoverlapping hours. Thus, the MES test is recommended as an indicator to help monitor market exposure to systemic risk and to gauge expected losses for other markets.


2017 ◽  
Author(s):  
Rim mname Lamouchi ◽  
Russell mname Davidson ◽  
Ibrahim mname Fatnassi ◽  
Abderazak Ben mname Maatoug

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