Quantitative Methodologies using Multi-Methods

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A01=Kweku-Muata Osei-Bryson
A01=Sergey Samoilenko
Annual Telecom Investment
applied econometrics
Arm
Association Rules Mining
Author_Kweku-Muata Osei-Bryson
Author_Sergey Samoilenko
Average Relative Efficiencies
Benchmarking Problem
Black Box
Business Process
Category=GPS
Category=JHM
Category=UT
Category=UY
Causal Model
Cluster Analysis
cluster analysis methods
Complete Data Set
Contextual Variables
Data Envelopment Analysis
Data Set
DEA Model
Decision Trees Induction
DTI
efficiency measurement techniques
Efficient DMUs
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_society-politics
Full Time Telecommunication Staff
Heterogeneous Sample
Heterogeneous Sub-groups
Homogeneity of the Sample
ICT Capability
ICT impact assessment
Inefficient DMUs
International Monetary Fund
Intrinsic Variables
Least Squares Regression
multi-method research frameworks
Multiple Regression
Neoclassical Growth Accounting
Neural Networks
NN Model
Priori Target Variable
productivity analysis tools
Relative Efficiency
Relative Efficiency Scores
research design modules
SAS Enterprise Miner
Socio-economic Impact
Socio-Economic Implications
SSA Economy
Sub-Saharan Economies
Transformative Capacity
Vice Versa

Product details

  • ISBN 9780367903961
  • Weight: 557g
  • Dimensions: 156 x 234mm
  • Publication Date: 23 Aug 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Quantitative Methodologies using Multi-Methods is a multifaceted book written to help researchers. It is a user-friendly introduction to the popular methods of data mining and data analysis. The book avoids getting involved into details that are more suitable for more advanced users; it is written for readers who have, at most, a surface-level knowledge of the methods presented in the book. The book also serves as an introductory guide to the subject of complementarity of the tools and techniques of data analysis. It shows how methods could be used in synergy to offer insights into the issues that could not be dissected by any single method alone.

This text can also be used as a set of templates, where, given a set of research questions, the investigator could identify a set of methodological modules for answering the research questions of interest. This is not entirely unlike the relationship between the analysis and design phases of the systems development life cycle—where the What of the analysis phase has to be translated into the How of the design phase. The book can guide the identification of modules (the How) that are suitable for answering research questions (the What). It can aid in transitioning a conceptual domain of the research questions into a scaffolding of data analytic and data mining methods.

The book is also a guide to exploring what data under investigation holds. For example, an investigator may use the methodological modules presented in this book to generate a set of preliminary questions which, after a careful consideration and a requisite culling, could be formulated into a set of questions consistent within a selected theory or a framework. Finally, the book can be used as a generator of new research questions. Applying every method in each of the book’s modules opens a new dimension ripe with follow-up questions such as, Why is this so? The answers to this question may provide new insight and lead to the development of a new theory.

Sergey Samoilenko is an associate professor and the Chair of the Department of Computer Science and Computer Information Systems at Averett University, in Danville, Virginia. Sergey’s current research interests include IT and productivity, data mining, and IS development. He holds his PhD and MS in information systems from Virginia Commonwealth University. He has published in the European Journal of Operational Research, Journal of Global Information Technology Management, International Journal of Production Economics, Expert Systems with Applications, and Information Systems Frontiers, among other journals, as well as in numerous conference proceedings.

Kweku-Muata Osei-Bryson is professor of Information Systems at Virginia Commonwealth University. Previously he was professor of information systems and decision analysis in the School of Business at Howard University, Washington, DC, USA. He has also worked as an information systems practitioner in both industry and government. His research areas include: Data Mining, Decision Support Systems, Knowledge Management, IS Security, e-Commerce, IT for Development, Database Management, IS Outsourcing, Multi-Criteria Decision Making. He has published in various leading journals including: Decision Support Systems, Information Systems Journal, Expert Systems with Applications, European Journal of Information Systems, Information Systems Frontiers, Knowledge Management Research & Practice, Information Sciences, Information & Management, Journal of the Association for Information Systems, Journal of Information Technology for Development, Journal of Database Management, Computers & Operations Research, Journal of the Operational Research Society, & the European Journal of Operational Research.

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