We propose a procedure of iterating the HP filter to produce a smarter smoothing device, called the boosted HP (bHP) filter, based on L2‐boosting in machine learning. Limit theory shows that the bHP filter asymptotically recovers trend mechanisms that involve integrated processes, deterministic drifts, and structural breaks, covering the most common trends that appear in current modeling methodology. A stopping criterion automates the algorithm, giving a data‐determined method for data‐rich environments. The methodology is illustrated in simulations and with three real data examples that highlight the differences between simple HP filtering, the bHP filter, and an alternative autoregressive approach
This paper investigates a computationally simple variant of boosting, L 2 Boost, which is construct...
We study boosting in the filtering setting, where the booster draws examples from an oracle instead ...
Boosting combines weak (biased) learners to obtain effective learning algorithms for classification...
The Hodrick-Prescott (HP) filter is one of the most widely used econometric methods in applied macroe...
The global financial crisis and Covid recession have renewed discussion concerning trend-cycle disco...
This paper extends recent asymptotic theory developed for the Hodrick Prescott (HP) filter and boost...
The Hodrick-Prescott (HP) filter is one of the most widely used econometric methods in applied macroe...
We analyze trend elimination methods and business cycle estimation by data filtering of the type intr...
An accessible introduction and essential reference for an approach to machine learning that creates ...
Boosting is one of the most significant advances in machine learning for classification and regress...
It is common practice in business cycle analysis for researchers to filter out low frequency compone...
This paper investigates a computationally simple variant of boosting, L2Boost, which is constructed ...
We introduce the boosting notion of machine learning to the adaptive signal processing literature. I...
Boosting is an approach to machine learning based on the idea of creating a highly accurate predicto...
Summary. In this paper we propose a simple multistep regression smoother which is constructed in a b...
This paper investigates a computationally simple variant of boosting, L 2 Boost, which is construct...
We study boosting in the filtering setting, where the booster draws examples from an oracle instead ...
Boosting combines weak (biased) learners to obtain effective learning algorithms for classification...
The Hodrick-Prescott (HP) filter is one of the most widely used econometric methods in applied macroe...
The global financial crisis and Covid recession have renewed discussion concerning trend-cycle disco...
This paper extends recent asymptotic theory developed for the Hodrick Prescott (HP) filter and boost...
The Hodrick-Prescott (HP) filter is one of the most widely used econometric methods in applied macroe...
We analyze trend elimination methods and business cycle estimation by data filtering of the type intr...
An accessible introduction and essential reference for an approach to machine learning that creates ...
Boosting is one of the most significant advances in machine learning for classification and regress...
It is common practice in business cycle analysis for researchers to filter out low frequency compone...
This paper investigates a computationally simple variant of boosting, L2Boost, which is constructed ...
We introduce the boosting notion of machine learning to the adaptive signal processing literature. I...
Boosting is an approach to machine learning based on the idea of creating a highly accurate predicto...
Summary. In this paper we propose a simple multistep regression smoother which is constructed in a b...
This paper investigates a computationally simple variant of boosting, L 2 Boost, which is construct...
We study boosting in the filtering setting, where the booster draws examples from an oracle instead ...
Boosting combines weak (biased) learners to obtain effective learning algorithms for classification...