Mukherjee Decision Sciences for Quality and Productivity Improvement

Decision Sciences for Quality and Productivity Improvement

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Beschreibung

This edited volume explores decision science theory-based approaches for enhancing the quality and productivity of products and processes, particularly in the fields of manufacturing, services, healthcare, banking, environment, agriculture, education, digital technology, and information technology. The decision science theories are drawn from various areas of management science, economics, operations research, statistical methods, machine learning, data mining, artificial intelligence, behavioural decision making and cognitive psychology. The book offers a unique platform to address various real-life problems and scenarios related to quality and productivity improvement, as well as operations excellence. The new concepts, varied solution methods, diverse research implications, industry case studies, comparative analysis of relevant approaches, in-depth literature review, and future research scopes discussed in the articles will certainly provide food for thought to researchers, decision-makers, and practitioners working in the domain of quality, productivity, and operations excellence. These theme-based book chapters demonstrate the immense potential of decision science theories to develop novel ideas that can support scientific decision-making, thereby improving the operations, quality, and productivity of any organisation.


This edited volume explores decision science theory-based approaches for enhancing the quality and productivity of products and processes, particularly in the fields of manufacturing, services, healthcare, banking, environment, agriculture, education, digital technology, and information technology. The decision science theories are drawn from various areas of management science, economics, operations research, statistical methods, machine learning, data mining, artificial intelligence, behavioural decision making and cognitive psychology. The book offers a unique platform to address various real-life problems and scenarios related to quality and productivity improvement, as well as operations excellence. The new concepts, varied solution methods, diverse research implications, industry case studies, comparative analysis of relevant approaches, in-depth literature review, and future research scopes discussed in the articles will certainly provide food for thought to researchers, decision-makers, and practitioners working in the domain of quality, productivity, and operations excellence. These theme-based book chapters demonstrate the immense potential of decision science theories to develop novel ideas that can support scientific decision-making, thereby improving the operations, quality, and productivity of any organisation.


Raises novel ideas, methods and concepts for quality & productivity improvement, and efficient decision-making Includes necessary framework, flow diagram, and pseudo-codes for the relevant examples/applications discussed Provides insight into decision science theories/applications in enhancing processes, productivity & operation excellence

Autor*in

Indrajit Mukherjee

Themen in »Decision Sciences for Quality and Productivity Improvement«

Quality Improvement Decision Science and Quality Data Mining and Quality Productivity Improvement Process Monitoring Statistical Process Control Multiple Response Optimisation Quality Control Multivariate Process Quality Quality Engineering Six Sigma Lean Manufacturing Artificial Intelligence and Quality Service Quality Decision Science and Productivity

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Details

ISBN: 9789819575459
Verlag: Springer Singapore
Erscheinung: 16.09.2026

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