A Dynamic State-Space Model of Coded Political Texts
Elff, Martin. 2013. “A Dynamic State-Space Model of Coded Political Texts”. Political Analysis 21(2): 217-232.
This article presents a new method of reconstructing actors’ political positions from coded political texts. It is based on a model that combines a dynamic perspective on actors’ political positions with a probabilistic account of how these positions are translated into emphases of policy topics in political texts. In the article it is shown how model parameters can be estimated based on a maximum marginal likelihood principle and how political actors’ positions can be reconstructed using empirical Bayes techniques. For this purpose, a Monte Carlo Expectation Maximization algorithm is used that employs independent sample techniques with automatic Monte Carlo sample size adjustment. An example application is given by estimating a model of an economic policy space and a noneconomic policy space based on the data from the Comparative Manifesto Project. Parties’ positions in policy spaces reconstructed using these models are made publicly available for download.