This monograph offers a thorough treatment of methods for solving over- and underdetermined systems of equations. The considered problems can be non-linear or linear, and deterministic models as well as statistical effects are discussed. Considered methods include, e.g., minimum norm and least squar
Mixed-Mode Modelling: Mixing Methodologies For Organisational Intervention
β Scribed by Steve Clarke (auth.), Miles G. Nicholls, Steve Clarke, Brian Lehaney (eds.)
- Publisher
- Springer US
- Year
- 2001
- Tongue
- English
- Leaves
- 330
- Series
- Applied Optimization 58
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
The 1980s and 1990s have seen a growing interest in research and practice in the use of methodologies within problem contexts characterised by a primary focus on technology, human issues, or power. During the last five to ten years, this has given rise to challenges regarding the ability of a single methodology to address all such contexts, and the consequent development of approaches which aim to mix methodologies within a single problem situation. This has been particularly so where the situation has called for a mix of technological (the so-called 'hard') and humanΒ centred (so-called 'soft') methods. The approach developed has been termed mixed-mode modelling. The area of mixed-mode modelling is relatively new, with the phrase being coined approximately four years ago by Brian Lehaney in a keynote paper published at the 1996 Annual Conference of the UK Operational Research Society. Mixed-mode modelling, as suggested above, is a new way of considering problem situations faced by organisations. Traditional technological approaches used in management science have suffered criticisms relating to their adequacy in the past few decades, and these hard approaches have been replaced by soft methods, which consider process more relevant than outcome. However, the sole use of humanΒ centred approaches to organisational problems has also proved to be inadequate. Mixed-mode modelling accepts the importance of both process and outcome, and provides enabling mechanisms for hard and soft investigation to be undertaken.
β¦ Table of Contents
Front Matter....Pages i-xv
Mixing Methods for Organisational Intervention: Background and Current Status....Pages 1-18
Towards a General Holistic Framework for Improving and Controlling Human Activity Systems....Pages 19-62
Framing: A Meta-Framework for the Use of Mixed-Mode Modelling....Pages 63-119
Introducing Forecasting and Monitoring Methods to an SME: The Role of soft Systems Methodology....Pages 121-135
Assessment of the Value of Knowledge Transferred: A Mixed-Mode Approach....Pages 137-169
Hard Decisions, Soft Data: Localised Context-Rich Solutions to Problems of New Product Development....Pages 171-207
The Fundamentals of Yield Management....Pages 209-227
Management and Wellbeing in the UK....Pages 229-257
The Use of Mixed-Mode Modelling in Determining Best Practice for a Business....Pages 259-292
A Skill Assessment Process for Information Systems Professionals....Pages 293-317
Back Matter....Pages 319-322
β¦ Subjects
Operations Research/Decision Theory; Information Systems Applications (incl.Internet); Social Sciences, general; Organization/Planning
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