79 research outputs found
Econometric reduction theory and philosophy
Econometric reduction theory provides a comprehensive probabilistic framework for the
analysis and classification of the reductions (simplifications) associated with empirical
econometric models. However, the available approaches to econometric reduction theory are
unable to satisfactory accommodate a commonplace theory of social reality, namely that the
course of history is indeterministic, that history does not repeat itself and that the future depends
on the past. Using concepts from philosophy this paper proposes a solution to these
shortcomings, which in addition permits new reductions, interpretations and definitions
Econometric reduction theory and philosophy
Econometric reduction theory provides a comprehensive probabilistic framework for the analysis and classification of the reductions (simplifications) associated with empirical econometric models. However, the available approaches to econometric reduction theory are unable to satisfactory accommodate a commonplace theory of social reality, namely that the course of history is indeterministic, that history does not repeat itself and that the future depends on the past. Using concepts from philosophy this paper proposes a solution to these shortcomings, which in addition permits new reductions, interpretations and definitions.Theory of reduction, DGP, Possible worlds, Econometrics and philosophy
The First Stage in Hendry’s Reduction Theory Revisited
The reduction theory of David F. Hendry provides a comprehensive probabilistic framework for the analysis and classification of the reductions associated with empirical econometric models. However, it is unable to provide an analysis on the same underlying probability space of the first reduction - and hence the subsequent reductions - given a commonplace theory of social reality, namely the joint hypotheses that the course of history is indeterministic, that history does not repeat itsself, and that the future depends on the past. As a solution this essay proposes that the elements of the underlying outcome space in Hendry’s theory are interpreted as indeterministic worlds made up of historically inherited particulars.Theory of recution; DGP, Possible worlds; Measurement error; Probabilistic causality
Automated financial multi-path GETS modelling
General-to-Specific (GETS) modelling has witnessed major advances over the last decade thanks to the automation of multi-path GETS specification search. However, several scholars have argued that the estimation complexity associated with financial models constitutes an obstacle to multi-path GETS modelling in finance. We provide a result with associated methods that overcome many of the problems, and develop a simple but general and flexible algorithm that automates financial multi-path GETS modelling. Starting from a general model where the mean specification can contain autoregressive (AR) terms and explanatory variables, and where the exponential variance specification can include log-ARCH terms, log-GARCH terms, asymmetry terms, Bernoulli jumps and other explanatory variables, the algorithm we propose returns parsimonious mean and variance specifications, and a fat-tailed distribution of the standardised error if normality is rejected. The finite sample properties of the methods and of the algorithm are studied by means of extensive Monte Carlo simulations, and two empirical applications suggest the methods and algorithm are very useful in practice
Exchange rate variability, market activity and heterogeneity
We study the role played by geographic and bank-size heterogeneity in the relation
between exchange rate variability and market activity. We find some support for the
hypothesis that increases in short-term global interbank market activity, which can be
interpreted as due to variation in information arrival, increase variability. However, our
results do not suggest that local short-term activity increases variability. With respect to
long-term market activity, which can be interpreted as a measure of liquidity, we find
that large and small banks have opposite effects. Specifically, our results suggest that
the local group of large banks' liquidity increases variability, whereas the local group of
small banks' liquidity reduces variability
General to specific modelling of exchange rate volatility : a forecast evaluation
The general-to-specific (GETS) methodology is widely employed in the modelling of
economic series, but less so in financial volatility modelling due to computational
complexity when many explanatory variables are involved. This study proposes a
simple way of avoiding this problem when the conditional mean can appropriately be
restricted to zero, and undertakes an out-of-sample forecast evaluation of the
methodology applied to the modelling of weekly exchange rate volatility. Our findings
suggest that GETS specifications perform comparatively well in both ex post and ex
ante forecasting as long as sufficient care is taken with respect to functional form and
with respect to how the conditioning information is used. Also, our forecast comparison
provides an example of a discrete time explanatory model being more accurate than
realised volatility ex post in 1 step forecasting
garchx: Flexible and Robust GARCH-X Modelling
The R package garchx provides a user-friendly, fast, flexible and robust framework for the estimation and inference of GARCH(p,q,r)-X models, where p is the ARCH order, q is the GARCH order, r is the asymmetry or leverage order, and 'X' indicates that covariates can be included. Quasi Maximum Likelihood (QML) methods ensure estimates are consistent and standard errors valid, even when the standardised innovations are non-normal or dependent, or both. Zero-coefficient restrictions by omission enable parsimonious specifications, and functions to facilitate the non-standard inference associated with zero-restrictions in the null-hypothesis are provided. Finally, in formal comparisons of precision and speed, the garchx package performs well relative to other prominent GARCH-packages on CRAN
General to Specific Modelling of Exchange Rate Volatility : a Forecast Evaluation
The general-to-specific (GETS) approach to modelling is widely employed in the modelling of economic series, but less so in financial volatility modelling due to computational complexity when many explanatory variables are involved. This study proposes a simple way of avoiding this problem and undertakes an out-of-sample forecast evaluation of the methodology applied to the modelling of weekly exchange rate volatility. Our findings suggest that GETS specifications are especially valuable in conditional forecasting, since the specification that employs actual values on the uncertain information performs particularly well.Exchange Rate Volatility, General to Specific, Forecasting
Automated financial multi-path GETS modelling
General-to-Specific (GETS) modelling has witnessed major advances over the last decade thanks to the automation of multi-path GETS specification search. However, several scholars have argued that the estimation complexity associated with financial models constitutes an obstacle to multi-path GETS modelling in finance. We provide a result with associated methods that overcome many of the problems, and develop a simple but general and flexible algorithm that automates financial multi-path GETS modelling. Starting from a general model where the mean specification can contain autoregressive (AR) terms and explanatory variables, and where the exponential variance specification can include log-ARCH terms, log-GARCH terms, asymmetry terms, Bernoulli jumps and other explanatory variables, the algorithm we propose returns parsimonious mean and variance specifications, and a fat-tailed distribution of the standardised error if normality is rejected. The finite sample properties of the methods and of the algorithm are studied by means of extensive Monte Carlo simulations, and two empirical applications suggest the methods and algorithm are very useful in practice.General-to-specfic Modelling, Finance, Volatility, Value-at-risk
garchx: Flexible and Robust GARCH-X Modelling
The R package garchx provides a user-friendly, fast, flexible and robust framework for the estimation and inference of GARCH(p,q,r)-X models, where p is the ARCH order, q is the GARCH order, r is the asymmetry or leverage order, and 'X' indicates that covariates can be included. Quasi Maximum Likelihood (QML) methods ensure estimates are consistent and standard errors valid, even when the standardised innovations are non-normal or dependent, or both. Zero-coefficient restrictions by omission enable parsimonious specifications, and functions to facilitate the non-standard inference associated with zero-restrictions in the null-hypothesis are provided. Finally, in formal comparisons of precision and speed, the garchx package performs well relative to other prominent GARCH-packages on CRAN
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