nep-ets New Economics Papers
on Econometric Time Series
Issue of 2023‒07‒31
seven papers chosen by
Jaqueson K. Galimberti
Asian Development Bank

  1. Optimization of the Generalized Covariance Estimator in Noncausal Processes By Gianluca Cubadda; Francesco Giancaterini; Alain Hecq; Joann Jasiak
  2. Successive one-sided Hodrick-Prescott filter with incremental filtering algorithm for nonlinear economic time series By Yuxia Liu; Qi Zhang; Wei Xiao; Tianguang Chu
  3. Modelling and Forecasting Macroeconomic Risk with Time Varying Skewness Stochastic Volatility Models By Andrea Renzetti
  4. Identifying News Shocks from Forecasts By Jonathan J Adams; Philip Barrett
  5. Principal Component Analysis and Hidden Markov Model for Forecasting Stock Returns By Eugene W. Park
  6. Comparing deep learning models for volatility prediction using multivariate data By Wenbo Ge; Pooia Lalbakhsh; Leigh Isai; Artem Lensky; Hanna Suominen
  7. The Yule-Frisch-Waugh-Lovell Theorem By Deepankar Basu

  1. By: Gianluca Cubadda; Francesco Giancaterini; Alain Hecq; Joann Jasiak
    Abstract: This paper investigates the performance of the Generalized Covariance estimator (GCov) in estimating mixed causal and noncausal Vector Autoregressive (VAR) models. The GCov estimator is a semi-parametric method that minimizes an objective function without making any assumptions about the error distribution and is based on nonlinear autocovariances to identify the causal and noncausal orders of the mixed VAR. When the number and type of nonlinear autocovariances included in the objective function of a GCov estimator is insufficient/inadequate, or the error density is too close to the Gaussian, identification issues can arise, resulting in local minima in the objective function of the estimator at parameter values associated with incorrect causal and noncausal orders. Then, depending on the starting point, the optimization algorithm may converge to a local minimum, leading to inaccurate estimates. To circumvent this issue, the paper proposes the use of the Simulated Annealing (SA) optimization algorithm as an alternative to conventional numerical optimization methods. The results demonstrate that the SA optimization algorithm performs effectively when applied to multivariate mixed VAR models, successfully eliminating the effects of local minima. The approach is illustrated by simulations and an empirical application of a bivariate mixed VAR model with commodity price series.
    Date: 2023–06
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2306.14653&r=ets
  2. By: Yuxia Liu; Qi Zhang; Wei Xiao; Tianguang Chu
    Abstract: We propose a successive one-sided Hodrick-Prescott (SOHP) filter from multiple time scale decomposition perspective to derive trend estimate for a time series. The idea is to apply the one-sided HP (OHP) filter recursively on the updated cyclical component to extract the trend residual on multiple time scales, thereby to improve the trend estimate. To address the issue of optimization with a moving horizon as that of the SOHP filter, we present an incremental HP filtering algorithm, which greatly simplifies the involved inverse matrix operation and reduces the computational demand of the basic HP filtering. Actually, the new algorithm also applies effectively to other HP-type filters, especially for large-size or expanding data scenario. Numerical examples on real economic data show the better performance of the SOHP filter in comparison with other known HP-type filters.
    Date: 2023–06
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2306.12439&r=ets
  3. By: Andrea Renzetti
    Abstract: In this paper I propose a parametric framework for modelling and forecasting macroeconomic tail risk based on stochastic volatility models with Skew-Normal and Skew-t shocks featuring stochastic skewness. The paper develops posterior simulation samplers for Bayesian estimation of both univariate and VAR models of this type. In an application, I use the models to predict downside risk to GDP growth and I show that this approach represents a competitive alternative to quantile regression. Finally, estimating a medium scale VAR on US data I show that time varying skewness is a relevant feature of macroeconomic and financial shocks.
    Date: 2023–06
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2306.09287&r=ets
  4. By: Jonathan J Adams (Department of Economics, University of Florida); Philip Barrett (International Monetary Fund)
    Abstract: We propose a method to identify the anticipated components of macroeconomic shocks in a structural VAR: we include empirical forecasts about each time series in the VAR, which introduces enough linear restrictions to identify each structural shock and to further decompose each one into “news†and “surprise†shocks. We estimate our VAR on US time series using forecast data from the SPF, CBO, Federal Reserve, and asset prices. The fiscal stimulus and interest rate shocks that we identify have typical effects that comport with existing evidence. In our news-surprise decomposition, we find that news contributes to a third of US business cycle volatility, where the effect of fiscal shocks is mostly anticipated, while the effect of monetary policy shocks is mostly unexpected. Finally, we use the news structure of the shocks to estimate counterfactual policy rules, and compare the ability of fiscal and monetary policy to moderate output and inflation.
    JEL: C32 E32 E52 E62
    Date: 2023–06
    URL: http://d.repec.org/n?u=RePEc:ufl:wpaper:001010&r=ets
  5. By: Eugene W. Park
    Abstract: This paper presents a method for predicting stock returns using principal component analysis (PCA) and the hidden Markov model (HMM) and tests the results of trading stocks based on this approach. Principal component analysis is applied to the covariance matrix of stock returns for companies listed in the S&P 500 index, and interpreting principal components as factor returns, we apply the HMM model on them. Then we use the transition probability matrix and state conditional means to forecast the factors returns. Reverting the factor returns forecasts to stock returns using eigenvectors, we obtain forecasts for the stock returns. We find that, with the right hyperparameters, our model yields a strategy that outperforms the buy-and-hold strategy in terms of the annualized Sharpe ratio.
    Date: 2023–07
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2307.00459&r=ets
  6. By: Wenbo Ge; Pooia Lalbakhsh; Leigh Isai; Artem Lensky; Hanna Suominen
    Abstract: This study aims at comparing several deep learning-based forecasters in the task of volatility prediction using multivariate data, proceeding from simpler or shallower to deeper and more complex models and compare them to the naive prediction and variations of classical GARCH models. Specifically, the volatility of five assets (i.e., S\&P500, NASDAQ100, gold, silver, and oil) was predicted with the GARCH models, Multi-Layer Perceptrons, recurrent neural networks, Temporal Convolutional Networks, and the Temporal Fusion Transformer. In most cases the Temporal Fusion Transformer followed by variants of Temporal Convolutional Network outperformed classical approaches and shallow networks. These experiments were repeated, and the difference between competing models was shown to be statistically significant, therefore encouraging their use in practice.
    Date: 2023–06
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2306.12446&r=ets
  7. By: Deepankar Basu
    Abstract: This paper traces the historical and analytical development of what is known in the econometrics literature as the Frisch-Waugh-Lovell theorem. This theorem demonstrates that the coefficients on any subset of covariates in a multiple regression is equal to the coefficients in a regression of the residualized outcome variable on the residualized subset of covariates, where residualization uses the complement of the subset of covariates of interest. In this paper, I suggest that the theorem should be renamed as the Yule-Frisch-Waugh-Lovell (YFWL) theorem to recognize the pioneering contribution of the statistician G. Udny Yule in its development. Second, I highlight recent work by the statistician, P. Ding, which has extended the YFWL theorem to a comparison of estimated covariance matrices of coefficients from multiple and partial, i.e. residualized regressions. Third, I show that, in cases where Ding's results do not apply, one can still resort to a computational method to conduct statistical inference about coefficients in multiple regressions using information from partial regressions.
    Date: 2023–07
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2307.00369&r=ets

This nep-ets issue is ©2023 by Jaqueson K. Galimberti. It is provided as is without any express or implied warranty. It may be freely redistributed in whole or in part for any purpose. If distributed in part, please include this notice.
General information on the NEP project can be found at http://nep.repec.org. For comments please write to the director of NEP, Marco Novarese at <director@nep.repec.org>. Put “NEP” in the subject, otherwise your mail may be rejected.
NEP’s infrastructure is sponsored by the School of Economics and Finance of Massey University in New Zealand.