Trend-Matching and Performance of Pay-Tv Entertainment Companies in Kenya

Authors

  • Madrine Waithera Githaiga St. Paul’s University
  • Dr. Julius Kahuthia Mwangi St. Paul’s University
  • Ms. Beth Mwihaki St. Paul’s University

DOI:

https://doi.org/10.53819/81018102t3148

Abstract

The role of trend-matching capabilities in Kenya's pay-TV entertainment industry is critical in enabling companies to respond effectively to rapidly evolving consumer preferences and competitive dynamics. This study examined how trend-matching practices influence organizational performance of pay-TV entertainment companies in Kenya, focusing specifically on market analysis and consumer preference tracking capabilities. The research investigated how systematic pattern recognition, market intelligence frameworks, and consumer behavior analysis affect business outcomes in this highly competitive sector. The theoretical framework was anchored on Pattern Recognition Theory. This study employed a correlational research design and targeted all ten licensed pay-TV companies operating in Kenya as registered with the Communications Authority of Kenya. A census approach was utilized to include all 132 management personnel across the licensed operators, eliminating sampling error and ensuring comprehensive industry representation. Key management personnel, including senior executives, departmental heads, middle managers, and team leaders with strategic responsibilities, were selected based on their involvement in strategic decision-making processes. Data collection involved structured questionnaires with five-point Likert scale measurements. Data analysis was conducted using SPSS to facilitate examination of quantitative data, including simple linear regression models and descriptive statistics to construct and estimate relationships. Results were presented using tables and statistical analyses to enhance clarity of findings and recommendations. Throughout the research, strict adherence to ethical standards was maintained to ensure integrity and reliability of study results. The correlation analysis showed a strong positive relationship between trend-matching and organizational performance (r = 0.707, p < 0.001). Simple linear regression analysis indicated that trend-matching accounts for 50.0% of the variance in organizational performance (R² = 0.500), with an F-statistic of 112.200 (p < 0.001). The regression coefficient demonstrated a significant positive impact, with a Beta value of 0.707 (t = 10.593, p < 0.001), indicating that a one-unit increase in trend-matching capabilities leads to a 0.682-unit increase in organizational performance. The study concluded that there was a strong positive relationship between trend-matching capabilities and organizational performance in Kenya's pay-TV industry. Companies implementing systematic market analysis achieved superior conversion rates, customer retention, and revenue optimization compared to those using informal assessment methods.

Keywords: Trend-Matching, Market Analysis, Organizational Performance, Pay-TV Companies, Kenya, Strategic Innovation

Author Biographies

Madrine Waithera Githaiga , St. Paul’s University

Student, School of Business and Leadership Studies, Master of Business Administration (Strategic Management) of St. Paul's University

Dr. Julius Kahuthia Mwangi , St. Paul’s University

Lecturer, School of Business and Leadership Studies of St. Paul's University

Ms. Beth Mwihaki, St. Paul’s University

Lecturer, School of Business and Leadership Studies of St. Paul's University

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Published

2025-09-30

How to Cite

Githaiga , M. W., Mwangi , J. K., & Mwihaki, B. (2025). Trend-Matching and Performance of Pay-Tv Entertainment Companies in Kenya. Journal of Strategic Management, 9(3), 98–110. https://doi.org/10.53819/81018102t3148

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