When regression coefficients change over time: A proposal
- URL: http://arxiv.org/abs/2203.10302v1
- Date: Sat, 19 Mar 2022 11:36:20 GMT
- Title: When regression coefficients change over time: A proposal
- Authors: Malte Schierholz
- Abstract summary: An underlying assumption is that the same correlations that were observed in the past still hold for the future.
We propose a model for situations when this assumption is not met: adopting methods from the state space literature, we model how regression coefficients change over time.
Our approach can shed light on the large uncertainties associated with forecasting the future, and how much of this is due to changing dynamics of the past.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A common approach in forecasting problems is to estimate a least-squares
regression (or other statistical learning models) from past data, which is then
applied to predict future outcomes. An underlying assumption is that the same
correlations that were observed in the past still hold for the future. We
propose a model for situations when this assumption is not met: adopting
methods from the state space literature, we model how regression coefficients
change over time. Our approach can shed light on the large uncertainties
associated with forecasting the future, and how much of this is due to changing
dynamics of the past. Our simulation study shows that accurate estimates are
obtained when the outcome is continuous, but the procedure fails for binary
outcomes.
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