A state-space approach to time-varying reduced-rank regression
收藏Taylor & Francis Group2022-09-07 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/A_state-space_approach_to_time-varying_reduced-rank_regression/19915276
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资源简介:
We propose a new approach to reduced-rank regression that allows for time-variation in the regression coefficients. The Kalman filter based estimation allows for usage of standard methods and easy implementation of our procedure. The EM-algorithm ensures convergence to a local maximum of the likelihood. Our estimation approach in time-varying reduced-rank regression performs well in simulations, with amplified competitive advantage in time series that experience large structural changes. We illustrate the performance of our approach with a simulation study and two applications to stock index and Covid-19 case data.
提供机构:
Brune, Barbara; Bura, Efstathia; Scherrer, Wolfgang
创建时间:
2022-05-28



