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What can grassroots leadership teach us about school leadership?

journal contribution
posted on 2023-08-18, 04:32 authored by Lisa EhrichLisa Ehrich, FW English
This paper explores grassroots leadership, an under-researched and often side-lined approach to leadership that operates outside of formal bureaucratic structures. The paper's central purpose is the claim that an understanding of grassroots leadership and tactics used by grassroots leaders provides valuable insights for the study of school leadership. In this paper, we present and discuss an original model of grassroots leadership based on the argument that this under-researched area can further our understanding of school leadership. Drawing upon the limited literature in the field, we present a model consisting of two approaches to change (i.e. conflict and consensus) and two categories of change (i.e. reform and refinement) and then provide illustrations of how the model works in practice. We make the argument that the model has much merit for conceptualizing school leadership, and this is illustrated by applying the model to formal bureaucratic leadership within school contexts. Given the current climate in education where business and management language is pervasive within leadership-preparation programs, we argue that it is timely for university academics, who are responsible for preparing school leaders to consider broadening their approach by exposing school leaders to a variety of change-based strategies and tactics used by grassroots leaders.

History

Sub-type

  • Article

Publication title

Halduskultuur

Volume

13

Issue

2

Pagination

85-108

eISSN

1736-6089

ISSN

1736-6070

Department/School

Education

Publication status

  • Published

Rights statement

Copyright 2012 Tallinn University of Technology, Department of Public Administration

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