Granger causality: A review and recent advances
Introduced more than a half-century ago, Granger causality has become a popular tool for
analyzing time series data in many application domains, from economics and finance to …
analyzing time series data in many application domains, from economics and finance to …
Machine learning advances for time series forecasting
RP Masini, MC Medeiros… - Journal of economic …, 2023 - Wiley Online Library
In this paper, we survey the most recent advances in supervised machine learning (ML) and
high‐dimensional models for time‐series forecasting. We consider both linear and nonlinear …
high‐dimensional models for time‐series forecasting. We consider both linear and nonlinear …
Neural granger causality
While most classical approaches to Granger causality detection assume linear dynamics,
many interactions in real-world applications, like neuroscience and genomics, are inherently …
many interactions in real-world applications, like neuroscience and genomics, are inherently …
Criteria for classifying forecasting methods
Classifying forecasting methods as being either of a “machine learning” or “statistical” nature
has become commonplace in parts of the forecasting literature and community, as …
has become commonplace in parts of the forecasting literature and community, as …
Estimating structured high-dimensional covariance and precision matrices: Optimal rates and adaptive estimation
This is an expository paper that reviews recent developments on optimal estimation of
structured high-dimensional covariance and precision matrices. Minimax rates of …
structured high-dimensional covariance and precision matrices. Minimax rates of …
Nets: Network estimation for time series
M Barigozzi, C Brownlees - Journal of Applied Econometrics, 2019 - Wiley Online Library
We model a large panel of time series as a vector autoregression where the autoregressive
matrices and the inverse covariance matrix of the system innovations are assumed to be …
matrices and the inverse covariance matrix of the system innovations are assumed to be …
Signal Processing on Graphs: Causal Modeling of Unstructured Data
Many applications collect a large number of time series, for example, the financial data of
companies quoted in a stock exchange, the health care data of all patients that visit the …
companies quoted in a stock exchange, the health care data of all patients that visit the …
VARX-L: Structured regularization for large vector autoregressions with exogenous variables
The vector autoregression (VAR) has long proven to be an effective method for modeling the
joint dynamics of macroeconomic time series, as well as for forecasting. One major …
joint dynamics of macroeconomic time series, as well as for forecasting. One major …
Finite time identification in unstable linear systems
Identification of the parameters of stable linear dynamical systems is a well-studied problem
in the literature, both in the low and high-dimensionalsettings. However, there are hardly any …
in the literature, both in the low and high-dimensionalsettings. However, there are hardly any …
High dimensional forecasting via interpretable vector autoregression
Vector autoregression (VAR) is a fundamental tool for modeling multivariate time series.
However, as the number of component series is increased, the VAR model becomes …
However, as the number of component series is increased, the VAR model becomes …