Drain the Swamp: A Theory of Anti-Elite Populism
Gabriele Gratton and
Barton Lee
No 2023-02, Discussion Papers from School of Economics, The University of New South Wales
Abstract:
We study a model of popular demand for anti-elite populist reforms that drain the swamp: replace experienced public servants with novices that will only acquire experience with time. Voters benefit from experienced public servants because they are more effective at delivering public goods and more competent at detecting emergency threats. However, public servants’ policy preferences do not always align with those of voters. This tradeoff produces two key forces in our model: public servants’ incompetence spurs disagreement between them and voters, and their effectiveness grants them more power to dictate policy. Both of these effects fuel mistrust between voters and public servants, sometimes inducing voters to drain the swamp in cycles of anti-elite populism. We study which factors can sustain a responsive democracy or induce a technocracy. When instead populism arises, we discuss which reforms may reduce the frequency of populist cycles.
Pages: 63 pages
Date: 2023-02
New Economics Papers: this item is included in nep-cdm, nep-mic and nep-pol
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Working Paper: Drain the Swamp: A Theory of Anti-Elite Populism (2024) 
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