Publications by PSE researchers

Displaying results 1 to 12 on 15 total.

  • La datation des cycles économiques français : une revue de la littérature Book section:

    Après avoir tiré les leçons de l’histoire des cycles économiques avant et après Keynes, les aspects méthodologiques relatifs à la mesure et à la modélisation des cycles font l’objet d’une description approfondie. Se centrant ensuite sur la France, l’ouvrage propose une détermination des dates des phases de récession et d’expansion de l’économie française depuis 1970. La méthodologie retenue est originale, mêlant approches économétriques et narrative, et permet d’obtenir une datation précise des points de retournement du cycle économique français.

    Author(s): Catherine Doz Editor(s): Economica

    Published in

  • La datation des cycles par le CDCEF : résultats des approches économétriques Book section:

    Après avoir tiré les leçons de l'histoire des cycles économiques avant et après Keynes, les aspects méthodologiques relatifs à la mesure et à la modélisation des cycles font l'objet d'une description approfondie. Se centrant ensuite sur la France, l'ouvrage propose une détermination des dates des phases de récession et d'expansion de l'économie française depuis 1970. La méthodologie retenue est originale, mêlant approches économétriques et narrative, et permet d'obtenir une datation précise des points de retournement du cycle économique français.

    Author(s): Catherine Doz Editor(s): Economica

    Published in

  • Dating business cycles in France : a reference chronology Journal article:

    This paper proposes a reference quarterly chronology for periods of expansion and recession in France since 1970, carried out by the Dating Committee of the French Economic Association. The methodology is based on two pillars: 1) econometric estimations from various key data to identify candidate periods, and 2) a narrative approach that describes the economic background that prevailed at that time to finalize the dating chronology. Starting from 1970, the Committee has identified four economic recession periods: the two oil shocks 1974-1975 and 1980, the investment cycle of 1992-1993, and the Great Recession 2008-2009. For the Covid recession, the peak is dated in the last quarter of 2019 and the trough in the second quarter of 2020.

    Author(s): Catherine Doz Journal: Revue Economique

    Published in

  • Identifying and interpreting the factors in factor models via sparsity: Different approaches Journal article:

    With the usual estimation methods of factor models, the estimated factors are notoriously difficult to interpret, unless their interpretation is imposed via restrictions. This paper considers different methods to identify the factor structure and interpret the factors without imposing their interpretation: sparse PCA and factor rotations. We establish a new consistency result for the factors estimated by sparse PCA. Monte Carlo simulations show that our exploratory methods accurately estimate the factor structure, even in small samples. We also apply them on two standard large datasets about international business cycles and the US economy: for each empirical application, they identify the same factor structure, offering a clear economic interpretation of the estimated factors. These exploratory methods can be useful to justify or complement approaches in which the factor structure is imposed a priori.

    Author(s): Catherine Doz Journal: Journal of Applied Econometrics

    Published in

  • Identifying and interpreting the factors in factor models via sparsity : Different approaches Pre-print, Working paper:

    With the usual estimation methods of factor models, the estimated factors are notoriously difficult to interpret, unless their interpretation is imposed via restrictions. This paper considers different approaches for identifying the factor structure and interpreting the factors without imposing their interpretation: sparse PCA and factor rotations. We establish a new consistency result for the factors estimated by sparse PCA. Monte Carlo simulations show that our exploratory methods accurately estimate the factor structure, even in small samples. We also apply them to two standard large datasets about international business cycles and the US economy: for each empirical application, they identify the same factor structure, offering a clear economic interpretation of the estimated factors. These exploratory methods can justify or complement approaches which impose the factor structure a priori, and can also be useful for applications in which factor interpretation is usually overlooked.

    Author(s): Catherine Doz

    Published in

  • Identifying and interpreting the factors in factor models via sparsity: Different approaches Pre-print, Working paper:

    With the usual estimation methods of factor models, the estimated factors are notoriously difficult to interpret, unless their interpretation is imposed via restrictions. This paper considers different methods to identify the factor structure and interpret the factors without imposing their interpretation: sparse PCA and factor rotations. We establish a new consistency result for the factors estimated by sparse PCA. Monte Carlo simulations show that our exploratory methods accurately estimate the factor structure, even in small samples. We also apply them on two standard large datasets about international business cycles and the US economy: for each empirical application, they identify the same factor structure, offering a clear economic interpretation of the estimated factors. These exploratory methods can be useful to justify or complement approaches in which the factor structure is imposed a priori.

    Author(s): Catherine Doz

    Published in

  • Business cycle dynamics after the Great Recession: An Extended Markov-Switching Dynamic Factor Model Pre-print, Working paper:

    The Great Recession and the subsequent period of subdued GDP growth in most advanced economies have highlighted the need for macroeconomic forecasters to account for sudden and deep recessions, periods of higher macroeconomic volatility, and fluctuations in trend GDP growth. In this paper, we put forward an extension of the standard Markov-Switching Dynamic Factor Model (MS-DFM) by incorporating two new features: switches in volatility and time-variation in trend GDP growth. First, we show that volatility switches largely improve the detection of business cycle turning points in the low-volatility environment prevailing since the mid-1980s. It is an important result for the detection of future recessions since, according to our model, the US economy is now back to a low-volatility environment after an interruption during the Great Recession. Second, our model also captures a continuous decline in the US trend GDP growth that started a few years before the Great Recession and continued thereafter. These two extensions of the standard MS-DFM framework are supported by information criteria, marginal likelihood comparisons and improved real-time GDP forecasting performance.

    Author(s): Catherine Doz

    Published in

  • Dynamic Factor Models Book section:

    Dynamic factor models are parsimonious representations of relationships among time series variables. With the surge in data availability, they have proven to be indispensable in macroeconomic forecasting. This chapter surveys the evolution of these models from their pre-big-data origins to the large-scale models of recent years. We review the associated estimation theory, forecasting approaches, and several extensions of the basic framework.

    Author(s): Catherine Doz Editor(s): Springer

    Published in

  • Dynamic Factor Models Pre-print, Working paper:

    Dynamic factor models are parsimonious representations of relationships among time series variables. With the surge in data availability, they have proven to be indispensable in macroeconomic forecasting. This chapter surveys the evolution of these models from their pre-big-data origins to the large-scale models of recent years. We review the associated estimation theory, forecasting approaches, and several extensions of the basic framework.

    Author(s): Catherine Doz

    Published in

  • Forecasting French GDP with Dynamic Factor Models : a pseudo-real time experiment using Factor-augmented Error Correction Models Pre-print, Working paper:

    Dynamic Factor Models (DFMs) allow to take advantage of the information provided by a large dataset, which is summarized by a small set of unobservable latent variables, and they have proved to be very useful for short-term forecasting. Since most of their properties rely on the stationarity of the series, these models have been mainly used on data which have been di_erenciated to achieve stationarity. However estimation procedures for DFMs with I(1) common factors have been proposed by Bai (2004) and Bai and Ng(2004). Further, Banerjee and Marcellino (2008) and Banerjee, Marcellino and Masten (2014) have proposed to extend stationary Factor Augmented VAR models to the non-stationary case, and introduced Factor augmented Error Correction Models (FECM). We rely on this approach and conduct a pseudoreal time forecasting experiment, in which we compare short term forecasts of French GDP based on stationary and non-stationary DFMs. We mimic the timeliness of data, and use in the non-stationary framework the 2-step estimator proposed by Doz, Giannone and Reichlin(2011). In our study, forecasts based on stationary or non-stationary DFMs have a similar precision.

    Author(s): Catherine Doz

    Published in

  • On the consistency of the two-step estimates of the MS-DFM: a Monte Carlo study Pre-print, Working paper:

    The Markov-Switching Dynamic Factor Model (MS-DFM) has been used in different applications, notably in the business cycle analysis. When the cross-sectional dimension of data is high, the Maximum Likelihood estimation becomes unfeasible due to the excessive number of parameters. In this case, the MS-DFM can be estimated in two steps, which means that in the first step the common factor is extracted from a database of indicators, and in the second step the Markov-Switching autoregressive model is fit to this extracted factor. The validity of the two-step method is conventionally accepted, although the asymptotic properties of the two-step estimates have not been studied yet. In this paper we examine their consistency as well as the small-sample behavior with the help of Monte Carlo simulations. Our results indicate that the two-step estimates are consistent when the number of cross-section series and time observations is large, however, as expected, the estimates and their standard errors tend to be biased in small samples.

    Author(s): Catherine Doz

    Published in

  • Dating Business Cycle Turning Points for the French Economy: An MS-DFM approach Journal article:

    Several official institutions (NBER, OECD, CEPR, and others) provide business cycle chronologies with lags ranging from three months to several years. In this paper, we propose a Markov-switching dynamic factor model that allows for a more timely estimation of turning points. We apply one-step and two-step estimation approaches to French data and compare their performance. One-step maximum likelihood estimation is confined to relatively small data sets, whereas two-step approach that uses principal components can accommodate much bigger information sets. We find that both methods give qualitatively similar results and agree with the OECD dating of recessions on a sample of monthly data covering the period 1993–2014. The two-step method is more precise in determining the beginnings and ends of recessions as given by the OECD. Both methods indicate additional downturns in the French economy that were too short to enter the OECD chronology.

    Author(s): Catherine Doz Journal: Advances in Econometrics

    Published in