Utilizing SPSS for a Comprehensive Analysis of Factors Affecting Employee Productivity

June 20, 2023
Madison Allen
Madison Allen
🇨🇦 Canada
Madison Allen, a Royal Roads University master's graduate in SPSS, is a skilled expert in the field. Specializing in aiding students, Madison provides valuable assistance in completing assignments, ensuring academic success.
Key Topics
  • Problem Description

Problem Description

In a dynamic work environment, understanding the determinants of employee productivity, especially in the context of an SPSS assignment, is essential for organizational success. This study investigates the relationships between various factors, including Teamwork, Technical Knowledge, Adequate Authority, Fair Treatment, and Sick Days, and their influence on employee productivity. By analyzing a sample of 321 government employees working in different bureaucratic departments, we aim to shed light on the key drivers of employee performance.

Literature Review: Research in human resource management highlights the pivotal role of employee-centric practices in enhancing productivity. Scholars have established that motivating employees, promoting teamwork, and ensuring a supportive work environment significantly boost construction workers' productivity (Moyo, Crafford, &Emuze, 2021). The acquisition of technical skills and problem-solving abilities has been linked to improved employee performance (Ibrahim, Boerhannoeddin, & Bakare, 2017). Effective delegation of authority empowers employees to excel in their roles (Ugoani, 2020). Fair treatment within organizations fosters a collaborative and friendly atmosphere, resulting in better outcomes (Schleicher et al., 2019). Contrarily, excessive sick days can disrupt work efficiency (Chimed-Ochir et al., 2019).

Methods: We formulated the following hypotheses to address our research question:

Hypotheses: H08: There is no statistically significant predictive relationship of employee productivity from levels of Teamwork, Technical Knowledge, Adequate Authority to do a job well, Fair Treatment, and Sick Days.

Ha8: There is a statistically significant predictive relationship of employee productivity from levels of Teamwork, Technical Knowledge, Adequate Authority to do a job well, Fair Treatment, and Sick Days.

Data was collected using a 'Productivity' survey, encompassing 12 questions related to human resource policies and productivity. We focused on six questions: 'productivity', 'levels of teamwork', 'technical knowledge', 'adequate authority to do a job well', 'fair treatment', and 'sick days'. 'Productivity' served as the dependent variable, while the remaining factors represented independent variables. To test the hypotheses, we employed multiple linear regression. Results:

ModelRR SquareAdjusted R SquareStd. Error of the EstimateDurbin-Watson
• Table 1 - Model Summary
ModelSum of SquaresdfMean SquareFSig.
• Table 2 - ANOVA
ModelUnstandardized CoefficientsStandardized CoefficientstSig.95.0% Confidence Interval for BCollinearity Statistics
BStd. ErrorBetaLower BoundUpper BoundTolerance

• Table 3 - Coefficients

Discussion: Our analysis revealed that while 'productivity' did not follow a normal distribution, its relationship with the studied factors was significant. The findings demonstrated that 'levels of teamwork,' 'technical knowledge,' and 'adequate authority to do a job well' significantly predicted employees' productivity. However, 'fair treatment' and 'sick days' did not exhibit a significant relationship with productivity. This aligns with previous research findings and highlights the importance of positive work attributes in enhancing employee performance.

Conclusion: In today's competitive landscape, organizations should prioritize factors like teamwork, technical knowledge, and empowering employees to improve overall productivity. This study underscores the need to focus on these positive aspects of job performance to drive employee and organizational success.

Related Samples

Explore a plethora of exemplary statistics assignments showcasing diverse topics and methodologies. Delve into our curated collection to gain insights into various statistical concepts, analysis techniques, and problem-solving strategies. Each sample provides a valuable reference point for understanding complex statistical problems and refining your skills. Dive into our repository to enrich your understanding and excel in statistical analysis.