Modelling and Analyzing Turkish Business Cycles through Markov-Switching Models (original) (raw)

The Effects of Fiscal and Monetary Policies on Iranian Business Cycle Dynamics with Time Varying Markov Switching Models

Faṣlnāmah-i Pizhūhish/hā-yi Iqtiṣādī-i Īrān, 2018

The main purpose of this paper is to investigate the effects of monetary and fiscal policies on the business cycles in the Iranian economy during the period 2004-2016. Markov Switching model has been used with time varying transitional probabilities for the recognition of the business cycle and identifying the influencing factors on the probability of staying in a period of recession and boom or the transition from one situation to another. The results of the MSIH(2)-AR(2)[1] model show that both expansionary monetary and fiscal policies increase expansion period, but expansionary monetary policy is more effective in expansionary fiscal policy. During the recession regime, fiscal policy has a greater impact than a monetary policy in the transition from the recession regime. Also, findings show that business cycles in Iranian economy have comovements with changes of oil revenues, but the effect of changes in oil revenues has a different effect on the staying or transition of business...

Modeling Business Cycle Fluctuations through Markov Switching VAR:An Application to Iran

2016

IN this paper, the Iranian Business Cycle characteristics were investigated via uni-variate and multivariate Markov-switching specifications. By using Hamilton (1989) and Krolzig (1997) (MS-VAR) models, we examined the stochastic properties of the cyclical pattern of the quarterly Iranian real GDP between 1988:Q2 - 2008:Q3. The empirical analysis consists of mainly three parts. First, two kinds of alternative specifications were tried and we were adopted best specification with respect to various diagnostic statistics. Then, selected models were tested against their linear benchmarks. LR test results imply strong evidence in favor of the nonlinear regime switching behavior. Furthermore, the multivariate specification with various macro aggregates and changing variance parameter outperformed the other MS models with reference to one-step ahead forecasting performance. With this specification, we can detect the three recessionary periods experienced by the Iranian economy between 1988...

Measuring U.S. Business Cycle Using Markov-Switching Model: A Comparison Between Empirical Likelihood Estimation and Parametric Estimations

2019

Markov-switching (MS) model is one of the most popular nonlinear time series models in the literature. However, as there are many methods for parameter estimation, the results including the plot are not similar and become more difficult for researchers to decide on the interpretation. Therefore, this study is conducted as we want to obtain a more sensitive estimation method for the MS model. This study attempts to improve the way we estimate the MS model by developing a more flexible estimator for it to be called a maximum empirical likelihood estimation (MELE). A key point of this method is that a conventional parametric likelihood is replaced by the empirical likelihood function with relatively minor modifications to existing recursive filters. To evaluate the new method’s performance, we apply the MS model to the U.S. business cycle. The estimated results from the MELE are discussed and compared to those from classical parametric estimations. It is found that the empirical likeli...

Correlation Function and Business Cycle Turning Points: A Comparison with Markov Switching Approach

2013

Abstract: We present a new technical approach based on the autocorrelation function, widely used in physics, to determine and to analyze the business cycle turning points of an economic activity. This method is adapted to stochastic processes and does not require a smoothing technique. The application of this method to the industrial production seasonally adjusted of Tunisia, for the period 1994: 4–2006: 8 gives similar results to these obtained by two-state Markov switching model.

Using the Dynamic Bi-Factor Model with Markov Switching to Predict the Cyclical Turns in the Large European Economies

2007

The appropriately selected leading indicators can substantially improve the forecasting of the peaks and troughs of the business cycle. Using the novel methodology of the dynamic bi-factor model with Markov switching and the data for three largest European economies (France, Germany, and UK) we construct composite leading indicator (CLI) and composite coincident indicator (CCI) as well as corresponding recession probabilities. We estimate also a rival model of the Markov-switching VAR in order to see, which of the two models brings better outcomes. The recession dates derived from these models are compared to three reference chronologies: those of OECD and ECRI (growth cycles) and those obtained with quarterly Bry-Boschan procedure (classical cycles). Dynamic bi-factor model and MSVAR appear to predict the cyclical turning points equally well without systematic superiority of one model over another