© 2018 Taylor & Francis Group, LLC. In econometrics and finance, variables are collected at different frequencies. One straightforward regression model is to aggregate the higher frequency variable to match the lower frequency with a fixed weight function. However, aggregation with fixed weight functions may overlook useful information in the higher frequency variable. On the other hand, keeping all higher frequencies may result in overly complicated models. In literature, mixed data sampling (MIDAS) regression models have been proposed to balance between the two. In this article, a new model specification test is proposed that can help decide between the simple aggregation and the MIDAS model
Nous introduisons des modèles de régression MIDAS (Mixed Data Sampling). Ce sont des modèles de régr...
An increasing variety of data frequencies available in economics, finance, etc. gives rise to a ques...
This paper proposes a mixed-frequency error correction model for possibly cointegrated non-stationar...
In econometrics and finance, variables are collected at different frequencies. If a higher frequency...
In econometrics and finance, variables are collected at different frequencies. If a higher frequency...
Time averaging has been the traditional approach to handle mixed sampling frequencies. However, it i...
Time averaging has been the traditional approach to handle mixed sampling frequencies. However, it i...
Mixed data sampling (MIDAS) regressions are now commonly used to deal with time series data sampled ...
We introduce Mixed Data Sampling (henceforth MIDAS) regression models. The regressions involve time ...
The MIDAS models are developed to handle different sampling frequencies in one regression model, pre...
The development of models for variables sampled at different frequencies has attracted substantial i...
The development of models for variables sampled at different frequencies has attracted substantial i...
When modeling economic relationships it is increasingly common to encounter data sampled at differen...
The development of models for variables sampled at different frequencies has attracted substantial i...
When modeling economic relationships it is increasingly common to encounter data sampled at differen...
Nous introduisons des modèles de régression MIDAS (Mixed Data Sampling). Ce sont des modèles de régr...
An increasing variety of data frequencies available in economics, finance, etc. gives rise to a ques...
This paper proposes a mixed-frequency error correction model for possibly cointegrated non-stationar...
In econometrics and finance, variables are collected at different frequencies. If a higher frequency...
In econometrics and finance, variables are collected at different frequencies. If a higher frequency...
Time averaging has been the traditional approach to handle mixed sampling frequencies. However, it i...
Time averaging has been the traditional approach to handle mixed sampling frequencies. However, it i...
Mixed data sampling (MIDAS) regressions are now commonly used to deal with time series data sampled ...
We introduce Mixed Data Sampling (henceforth MIDAS) regression models. The regressions involve time ...
The MIDAS models are developed to handle different sampling frequencies in one regression model, pre...
The development of models for variables sampled at different frequencies has attracted substantial i...
The development of models for variables sampled at different frequencies has attracted substantial i...
When modeling economic relationships it is increasingly common to encounter data sampled at differen...
The development of models for variables sampled at different frequencies has attracted substantial i...
When modeling economic relationships it is increasingly common to encounter data sampled at differen...
Nous introduisons des modèles de régression MIDAS (Mixed Data Sampling). Ce sont des modèles de régr...
An increasing variety of data frequencies available in economics, finance, etc. gives rise to a ques...
This paper proposes a mixed-frequency error correction model for possibly cointegrated non-stationar...