Government Learning and Middle Level Performance in the Public Sector Organizations
Journal: International Journal of Multidisciplinary Research and Publications (Vol.6, No. 8)Publication Date: 2024-02-15
Authors : Muhammad Dahlan;
Page : 116-123
Keywords : ;
Abstract
Objective: This study aims to examine the effect of government learning (GL), budget goal (BG) and job satisfaction (JS) on mid-level performance (MP). Budget goal (BG) and job satisfaction (JS) as mediating variables of the relationship between GL and MP in public sector organizations. Method: The 42 public agencies in West Java, Indonesia, 126 middle-level managers were randomly selected as participants, namely budgeting, finance and accounting committee divisions. On the 88 questionnaires (70%) were returned. Those 78 questionnaires were fully completed for the final data and to test the hypotheses. Results: The results showed that GL has a direct and positive effect on BG and JS. GL and BG have a direct and positive effect on MP. GL and BG have an indirect and positive effect on MP. A surprising result has been proof in this study, the BG and JS are mediating variables relationship between GL and MP in public institutions. Conclusions and implications: The government's learning will be a key factor improving BG and JS, while middle-level managers participate in the preparation of the budgeting process and their objectives. That as collaboration, interpreting, integrating and institutionalizing in the public services. Theoretical implications and mid-level implications are discussed
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