A dynamic linear modelling approach to public policy change
Matt W. Loftis and
Peter B. Mortensen
Journal of Public Policy, 2018, vol. 38, issue 4, 553-579
Abstract:
Theories of public policy change, despite their differences, converge on one point of strong agreement: the relationship between policy and its causes can and does change over time. This consensus yields numerous empirical implications, but our standard analytical tools are inadequate for testing them. As a result, the dynamic and transformative relationships predicted by policy theories have been left largely unexplored in time series analysis of public policy. This article introduces dynamic linear modelling (DLM) as a useful statistical tool for exploring time-varying relationships in public policy. The article offers a detailed exposition of the DLM approach and illustrates its usefulness with a time series analysis of United States defense policy from 1957 to 2010. The results point the way for a new attention to dynamics in the policy process, and the article concludes with a discussion of how this research programme can profit from applying DLMs.
Date: 2018
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Persistent link: https://EconPapers.repec.org/RePEc:cup:jnlpup:v:38:y:2018:i:04:p:553-579_00
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