Skip to content
Advances in Decision Sciences (ADS)

Advances in Decision Sciences (ADS)

Published by Asia University, Taiwan; Scientific and Business World

  • About This Journal
    • Aim and Scope
    • Abstracting and Indexing
    • Editorial Board
    • Editorial Workflow
    • Publication Ethics
    • Paper Submission
    • Manuscript Format
    • Manuscript FAQ
    • Subscription Information
  • Editors Menu
    • Editors’ Roles and Responsibilities
    • Handling a Manuscript
    • Peer Review at ADS@AU
    • English Editing
  • Special Issues
    • About Special Issues
    • Editorial Board Special Issues
    • Preparing a Call for Papers
    • Promoting a Call for Papers
    • Special Invitation
    • Special Issues FAQ
    • Published Special Issues
  • Table of Contents
    • Table of Contents for Year 2024
    • Table of Contents for Year 2023
    • Table of Contents for Year 2022
    • Table of Contents for Year 2021
    • Table of Contents for Year 2020
    • Table of Contents for Year 2019
    • Table of Contents for Year 2018
    • Archive Contents for Year 1997 to 2017
      • Table of Contents for Year 2017
      • Table of Contents for Year 2016
      • Table of Contents for Year 2015
      • Table of Contents for Year 2014
      • Table of Contents for Year 2013
      • Table of Contents for Year 2012
      • Table of Contents for Year 2011
      • Table of Contents for Year 2010
      • Table of Contents for Year 2009
      • Table of Contents for Year 2008
      • Table of Contents for Year 2007
      • Table of Contents for Year 2006
      • Table of Contents for Year 2005
      • Table of Contents for Year 2004
      • Table of Contents for Year 2003
      • Table of Contents for Year 2002
      • Table of Contents for Year 2001
      • Table of Contents for Year 2000
      • Table of Contents for Year 1999
      • Table of Contents for Year 1998
      • Table of Contents for Year 1997
  • Contact Us
  • Home

Advancing Trending Statistical Techniques to Examine Growth and Variability in Scottish Sustainable Business Enterprises

Advancing Trending Statistical Techniques to Examine Growth and Variability in Scottish Sustainable Business Enterprises

Title

Advancing Trending Statistical Techniques to Examine Growth and Variability in Scottish Sustainable Business Enterprises

Authors

  • Mustafa I Al-Karkhi
    Mechanical Engineering Department, University of Technology- Iraq, Baghdad, Iraq

Abstract

Purpose: This study aims to explore the growth and variability of enterprises in four key Scottish industrial sectors between 2008 and 2021, emphasizing the importance of sustainable business practices in today’s evolving economic landscape.
Design/methodology/approach: The research employs a quantitative and testing approach, using advanced statistical methods by ORANGE data mining, namely Compound Annual Growth Rate (CAGR), Mean, Standard Deviation (SD), Coefficient of Variation (CoV), Root Mean Square Error (RMSE), and Average Growth Rate (AGR). Data from sectors like Electronics, Information Technology, Information and communication technology (ICT), and Telecommunications form the basis of this analysis.
Findings: The study reveals varied growth patterns across sectors. Information Technology displayed a steady growth (CAGR of 1.03%), while the Electronics sector exhibited more variability (Coefficient of Variation of 5.79%). These findings highlight the differing dynamics and stability of enterprises in the context of economic and technological changes.
Research limitations/implications: The analysis is limited to Scottish enterprises and may not reflect trends in other geographical contexts. Further research expands to compare with global trends, or utilize machine learning-based analysis for regression and future probabilistic forecasts.
Practical implications: The insights are valuable for business strategists and policy makers, aiding in informed decision-making and strategic planning for sustainable business development.
Social implications: The study contributes to understanding the sustainability of business practices, which is critical in the current socio-economic climate.
Originality/value: This paper enriches the discourse in business administration by integrating modern statistical analyses, offering a novel perspective on the management of sustainable enterprises during significant global economic shifts.

Keywords

Sustainable Enterprise Management, Business Administration, Statistical Analysis, Scottish Industries, Growth.

Classification-JEL

C1, C25, C46, D8, R11

Pages

122-141

How to Cite

AL KARKHI, M. (2024). Advancing Trending Statistical Techniques to Examine Growth and Variability in Scottish Sustainable Business Enterprises. Advances in Decision Sciences, 28(1), 122-141.

https://doi.org/10.47654/v28y2024i1p122-141

Post navigation

Previous PostAdvancing Trending Statistical Techniques to Examine Growth and Variability in Scottish Sustainable Business Enterprises

Submit Paper

Register / Submit




Special Issue Information

About Special Issues

Categories

ISSN 2090-3359 (Print)
ISSN 2090-3367 (Online)

Asia University, Taiwan

Scientific and Business World

4.7
2023CiteScore
 
86th percentile
Powered by  Scopus
SCImago Journal & Country Rank
Q2 in Scopus
CiteScore 2023 = 4.7
CiteScoreTracker 2024 = 8.5
SNIP 2023 = 0.799
SJR Quartile = Q1
SJR 2024 = 0.814
H-Index = 20

Flag Counter
Since July 28, 2021

Powered by Headline WordPress Theme
Go to mobile version