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DEA를 이용한 경찰서 교통인력의 적정규모 산정open accessApplying DEA Technique to Estimation of the Optimal number of Traffic Policemen in Police Stations

Authors
최영출홍준현
Issue Date
Dec-2010
Publisher
한국비교정부학회
Keywords
자료포락분석; 교통경찰; 경찰서 인력; 적정인력 산정; DEA; data envelopment analysis; traffic policemen; police station; estimation the optimal number
Citation
한국비교정부학보, v.14, no.2, pp 355 - 376
Pages
22
Journal Title
한국비교정부학보
Volume
14
Number
2
Start Page
355
End Page
376
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/34632
DOI
10.18397/kcgr.2010.14.2.355
ISSN
1598-964X
2713-5357
Abstract
Increasingly, police stations are asked to justify their use of resources in terms of producing meaningful services and impacts to the users and the parent organisations. This study applied an analytical technique called Data Envelopment Analysis(DEA) to calculate the relative efficiency of two hundred and thirty nine police stations especially with regard to the task of traffic policemen and to estimate the optimal number of traffic policemen of each police station through analysis of production relationship between inputs and outputs. It is found that there are significant gaps in productivity development level among metropolitan, urban, and rural police stations. It is also found that the DEA-based approach provides a good tool to estimate the relative technical efficiency of the police stations, to support setting up policies and strategic decisions for improving the performance of traffic policemen, and to rationalize the allocation method of human resources among the police stations.
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Hong, Jun Hyun
사회과학대학 (공공인재학부)
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