Difference between revisions of "Privileging function"

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<li>[[Equalising function]]</li>
 
<li>[[Equalising function]]</li>
 
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|description = The privileging function refers to legal norms that actively promote specific parts of the labour force. These norms link employment protection to specific conditions that are covered by the two dimensions seniority and selectivity and measured by seven indicators. It is a form of legal segmentation.
 
|codingrules =  
 
|codingrules =  
 
|citation =  
 
|citation =  

Revision as of 14:35, 18 May 2021

Quick info
Data type String
Scale Metric
Value labels
  • Categories: employment law function (see below)
Technical name labor_priv_func
Category Labour and labour market
Label Privileging function
Related indicators

The privileging function refers to legal norms that actively promote specific parts of the labour force. These norms link employment protection to specific conditions that are covered by the two dimensions seniority and selectivity and measured by seven indicators. It is a form of legal segmentation.


Coding rules

Bibliographic info

Citation:
  • Dingeldey, Irene, Heiner Fechner, Jean-Yves Gerlitz, Jenny Hahs, and Ulrich Mückenberger. 2020. "Measuring Legal Segmentation in Labour Law." SOCIUM SFB 1342 Working Papers No. 5, Bremen: SOCIUM, University of Bremen. https://www.socialpolicydynamics.de/f/90e3891ffd.pdf
  • Dingeldey, Irene, Heiner Fechner, Jean-Yves Gerlitz, Jenny Hahs, and Ulrich Mückenberger. FORTHCOMING. "Worlds of Labour: Introducing the SPE Typology as a Measure of Legal Segmentation in Labour Law." Manuscript under review at the Industrial Law Journal.


Related publications:



Misc

Project manager(s):
  • Andrea Schäfer


Data release:


Revisions:

Sources

  • Own coding (WoL; Dingeldey, Irene, Heiner Fechner, Jean-Yves Gerlitz, Jenny Hahs, and Ulrich Mückenberger)
  • Deakin, Simon, John Armour, and Mathias Siems. 2017. "CBR Leximetric Datasets [updated] [Dataset]". https://doi.org/10.17863/CAM.9130