Forecasting Dutch elections: An initial model from the March 2017 legislative contests

Author:

Dassonneville Ruth1,Lewis-Beck Michael S.2,Mongrain Philippe1

Affiliation:

1. Université de Montréal, Montréal, QC, Canada

2. University of Iowa, Iowa city, IA, USA

Abstract

Serious election forecasting has become a routine activity in most Western democracies, with various methodologies employed, for example, polls, models, prediction markets, and citizen forecasting. In the Netherlands, however, election forecasting has limited itself to the use of polls, mainly because other approaches are viewed as too complicated, given the great fragmentation of the Dutch party system. Here we challenge this view, offering the first structural forecasting model of legislative elections there. We find that a straightforward Political Economy equation managed an accurate forecast of the 2017 contest, clearly besting the efforts of the pollsters.

Funder

Canada Research Chairs

Publisher

SAGE Publications

Subject

Political Science and International Relations,Public Administration,Sociology and Political Science

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