ANALISIS STRUCTURAL EQUATION MODELS (SEM) UNTUK DATA HBAT NON MISSING

نویسندگان

چکیده

Abstrak: Tujuan dari penelitian ini yaitu menganalisa dengan menggunakan analisa SEM (Structural Equation Modelling) untuk data HBAT Non Missing. Kesimpulan yaitu, Persepsi mengenai Lingkungan kerja (Eenvironmental Perceptions) berpengaruh positif signifikan terhadap Kepuasan Kerja (Job Satisfaction) parameter (b) 3.329 dan tingkat signifikansi sebesar 0.00 <a=0.05. Artinya : persepsi lingkungan bertambah 1 satuan akan menyebabkan kepuasan meningkat satuan. (Environmental Komitmen Organisasi (Oganizational Commitment) 0.598 jika mengakibatkan meningkatnya komitment organisasi Sikap Rekan (Attitudes Toward Cowokers ) Commitment 0.221 apabila sikap rekan naiknya komitmen Satifaction) Kemampuan Untuk Bertahan (Staying Intention) 0.006 0.009 maka kemampuan karyawan bertahan 0.269 ; naik meyebabkan satuan.
 Kata Kunci: Modelling), Missing
 
 Abstract: The purpose of this study is to analyze using Modeling) analysis for Missing data. conclusion that Perceptions about the work environment have a significant positive effect on Job Satisfaction with parameters and significance level This means: perception increases by unit will cause job satisfaction increase 3,329 units. Organizational if unit, it result in an organizational commitment Attitudes Guys attitude co-workers has Staying Intention employee's ability survive It means units.
 Keywords analysis,

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ژورنال

عنوان ژورنال: Variance

سال: 2023

ISSN: ['2685-8738', '2685-872X']

DOI: https://doi.org/10.30598/variancevol4iss2page55-70