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Contemporary Models of Organization of Power and the Macedonian Model of Organization of Power

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  • Driton Kuçi

Abstract

This paper is a critical analysis of the model of organization of power, which intends to prove that the traditional dichotomy parliamentary - presidential system has a relative methodological value in view of the character of the contemporary organization of power models. The Macedonian organization of power model is no exception to this statement. The political system is not determined only by the constitutional framework. It is also determined by the (un)democratic tradition, the model of political culture, the electoral and party system. In this sense, the same normative model works differently in different countries or different periods of development of the same political system. This is especially evident in the relations between Parliament and Government. The dominance of the executive government is not characteristic only of the organization of power model in the Republic of Macedonia, it is a global tendency as well. In that sense, the Assembly of the Republic of Macedonia shares the “fate†of the representative bodies in the contemporary parliamentary system. However, in the absence of a democratic tradition, the presence of subject political culture, strong elements of partocracy and party state, fragile and fragmented civil society and weak general public, the dominance of the executive over the legislative government acquires dramatic dimensions.

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  • Driton Kuçi, 2015. "Contemporary Models of Organization of Power and the Macedonian Model of Organization of Power," European Journal of Interdisciplinary Studies Articles, Revistia Research and Publishing, vol. 1, September.
  • Handle: RePEc:eur:ejisjr:41
    DOI: 10.26417/ejis.v1i3.p9-15
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