Prioritizing the factors affecting employee relations and its influence on job performance
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https://doi.org/10.58414/SCIENTIFICTEMPER.2024.15.4.60Keywords:
Worker morale optimization, Positive workplace culture, Management decisions, Employee relationships efficiency, Job performanceDimensions Badge
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This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
The study aimed to ascertain employee performance in terms of personal management, conduct and productivity in addition to characterizing employee relations practices in terms of boosting morale, establishing business culture, expressing expectations, and taking part in management choices. Descriptive research was used for the study. The main focus of this study was on how relationships with coworkers impact an employee's performance. The primary data collection process, which was completed with an appropriate sample, might have had an impact on the accuracy of the findings. To ascertain the relationship between employee relationship components and employee performance, statistical hypothesis testing was utilized. It was discovered that the methods employed in the company's interactions with its staff directly affected the way in which those staff members performed throughout the inquiry. The most productive and change-resistant employees work for the organization and have the highest levels of satisfaction with current organizational procedures. The study also showed that a business can increase employee performance and, consequently, total organizational productivity, by strengthening employee relations procedures.Abstract
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