- Chow-Lin, Denton and Litterman frequency conversion with multiple indicator series.
- Model dependency graphs.
- US Bureau of Labor Statistics (BLS) data connectivity.
- Introduction of the X-13 Force option for forcing annual totals.
- Expansion of the EViews 10 snapshot system to program files.
- A new help command.
Tuesday, October 17, 2017
10+ New Features Added to EViews 10
EViews 10+ is a free update to EViews 10, and introduces a number of new features, including:
Tuesday, August 8, 2017
Dumitrescu-Hurlin Panel Granger Causality Tests: A Monte Carlo Study
With data availability at its historical peak, time series panel econometrics is in the limelight. Unlike traditional panel data in which each cross section $i = 1, \ldots, N$ is associated with $t=1, \ldots, T < N$ observations, what characterizes time series panel data is that $N$ and $T$ can both be very large. Moreover, the time dimension also gives rise to temporal dynamic information and with it, the ability to test for serial correlation, unit roots, cointegration, and in this regard, also Granger causality.
Wednesday, July 26, 2017
Hamilton’s “Why you should never use the Hodrick-Prescott Filter”
Professor James D. Hamilton requires no introduction, having
been one of the most important researchers in time series econometrics for
decades.
Over the past few years, Hamilton has been working on a
paper calling on applied economists to abandon the ubiquitous Hodrick-Prescott
Filter and replace it with a much simpler method of extracting trend and cycle
information from a time series.
This paper has become popular, and a number of our users
have asked how to replicate it in EViews. One of our users, Greg Thornton, has
written an EViews add-in (called Hamilton) that performs Hamilton’s method. However, given its relative simplicity, we
thought we’d use a blog post to show manual calculation of the method and
replicate the results in Hamilton’s paper.
Tuesday, May 16, 2017
AutoRegressive Distributed Lag (ARDL) Estimation. Part 3 - Practice
In Part 1 and Part 2 of this series, we discussed the theory behind ARDL and the Bounds Test for cointegration. Here, we demonstrate just how easily everything can be done in EViews 9 or higher.
While our two previous posts in this series have been heavily theoretically motivated, here we present a step by step procedure on how to implement Part 1 and Part 2 in practice.
While our two previous posts in this series have been heavily theoretically motivated, here we present a step by step procedure on how to implement Part 1 and Part 2 in practice.
Monday, May 8, 2017
AutoRegressive Distributed Lag (ARDL) Estimation. Part 2 - Inference
This is the second part of our AutoRegressive Distributed Lag (ARDL) post. For Part 1, please go here, and for Part 3, please visit here.
In this post we outline the correct theoretical underpinning of the inference behind the Bounds test for cointegration in an ARDL model. Whilst the discussion is by its nature quite technical, it is important that practitioners of the Bounds test have a grasp of the background behind its inferences.
In this post we outline the correct theoretical underpinning of the inference behind the Bounds test for cointegration in an ARDL model. Whilst the discussion is by its nature quite technical, it is important that practitioners of the Bounds test have a grasp of the background behind its inferences.
Friday, April 28, 2017
Dynamic Factor Models in EViews
One of the current buzz topics in macro-econometrics is that of dynamic factor models.
Factor models allow researchers to work with a large number of variables by reducing them down to a handful (often two) components, allowing tractable results to be obtained from unwieldy data.
A natural extension to factor models is to allow dynamics to enter the relationships. These dynamic factor models have become extremely popular due to their ability to model business cycles, and perform both forecasting and nowcasting (predicting the current state of the economy).
Although EViews has built-in factor analysis, we do not (yet!) have dynamic factor models included.
Luckily two researchers from the Ministry of Finance in Sweden have recently posted a paper, and corresponding code, that estimates dynamic factor models in EViews with a simple programming subroutine utilising EViews' state-space estimation object.
This paper looks fantastic - good job guys!
Factor models allow researchers to work with a large number of variables by reducing them down to a handful (often two) components, allowing tractable results to be obtained from unwieldy data.
A natural extension to factor models is to allow dynamics to enter the relationships. These dynamic factor models have become extremely popular due to their ability to model business cycles, and perform both forecasting and nowcasting (predicting the current state of the economy).
Although EViews has built-in factor analysis, we do not (yet!) have dynamic factor models included.
Luckily two researchers from the Ministry of Finance in Sweden have recently posted a paper, and corresponding code, that estimates dynamic factor models in EViews with a simple programming subroutine utilising EViews' state-space estimation object.
This paper looks fantastic - good job guys!
Monday, April 3, 2017
AutoRegressive Distributed Lag (ARDL) Estimation. Part 1 - Theory
One of our favorite bloggers, Dave Giles often writes about current trends in econometric theory and practice. One of his most popular topics is ARDL modeling, and he has a number of fantastic posts about it.
Since we have recently updated ARDL estimation in EViews 9.5, and are in the midst of adding some enhanced features to ARDL for the next version of EViews, EViews 10, we thought we would jot down our own thoughts on the theory and practice of ARDL models, particularly in regard to their use as a cointegration test.
This blog post will be in three parts. The first will discuss the theory behind ARDL models, the second will present the theory behind correct inference of the Bounds test, while the third will bring everything together with an example in EViews.
Since we have recently updated ARDL estimation in EViews 9.5, and are in the midst of adding some enhanced features to ARDL for the next version of EViews, EViews 10, we thought we would jot down our own thoughts on the theory and practice of ARDL models, particularly in regard to their use as a cointegration test.
This blog post will be in three parts. The first will discuss the theory behind ARDL models, the second will present the theory behind correct inference of the Bounds test, while the third will bring everything together with an example in EViews.
Monday, March 6, 2017
EViews Add-In: Importing Ken French’s Data Library
Background
The frenchdata add-in is designed to make it easier and faster to
download data from Ken French's data library. The data in the library are in
zipped *.txt or *.csv files, many with multiple data sets and mixed date
formats that can be tedious to import. This add-in, in contrast, is
straightforward and requires minimal input. After downloading and processing
each file is put in a separate workfile, multiple datasets in a single file are
separated and each one is put in a separate page, data columns are put into
series, and date formats are read from the files and applied to the page(s) of
the workfile.
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