A Cascade Linear Filter to Reduce Revisions and False Turning Points for Real Time Trend-Cycle Estimation

2008 ◽  
Vol 28 (1-3) ◽  
pp. 40-59 ◽  
Author(s):  
Estela Bee Dagum ◽  
Alessandra Luati
2017 ◽  
Vol 237 (4) ◽  
pp. 329-341
Author(s):  
Kevin Kovacs ◽  
Bryan Boulier ◽  
Herman Stekler

Abstract Historically, forecasters have failed to predict cyclical turning points and the forecasting record in this regard has not improved. This suggests that we should focus on what should be an easier task, recognizing recessions as they occur. We present a new approach that will enable us to determine in real-time when there is a significant deviation from an economy’s dynamic growth path. This approach uses a CUSUM-like methodology and requires us to construct an index,that we call the Economic News Index, from real-time data that shows how the economy is functioning. We apply this approach to German data to nowcast the recessions that began in 2008 and 2012.


2016 ◽  
Vol 8 (2) ◽  
Author(s):  
Marc Wildi ◽  
Tucker McElroy

AbstractThe classic model-based paradigm in time series analysis is rooted in the Wold decomposition of the data-generating process into an uncorrelated white noise process. By design, this universal decomposition is indifferent to particular features of a specific prediction problem (e. g., forecasting or signal extraction) – or features driven by the priorities of the data-users. A single optimization principle (one-step ahead forecast error minimization) is proposed by this classical paradigm to address a plethora of prediction problems. In contrast, this paper proposes to reconcile prediction problem structures, user priorities, and optimization principles into a general framework whose scope encompasses the classic approach. We introduce the linear prediction problem (LPP), which in turn yields an LPP objective function. Then one can fit models via LPP minimization, or one can directly optimize the linear filter corresponding to the LPP, yielding the Direct Filter Approach. We provide theoretical results and practical algorithms for both applications of the LPP, and discuss the merits and limitations of each. Our empirical illustrations focus on trend estimation (low-pass filtering) and seasonal adjustment in real-time, i. e., constructing filters that depend only on present and past data.


1989 ◽  
Vol 18 (1) ◽  
pp. 1-15 ◽  
Author(s):  
Ari Nieminen ◽  
Yrjö Neuvo ◽  
Alpo Värri ◽  
Urbashi Mitra
Keyword(s):  

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