Description |
1 online resource (xi, 187 pages) : illustrations |
Contents |
I. Orientation -- Neural Networks in Organizational Research -- Science, Organizational Research, and Neural Networks -- Neural Network Theory, History, and Concepts -- Neural Networks as a Theory Development Tool -- Using Neural Networks in Organizational Research -- II. Applications -- Statistics, Neural Networks, and Behavioral Research -- Using Neural Networks in Employee Selection -- Using Self-Organizing Maps to Study Organizational Commitment -- III. Implications -- Limitations and Myths -- Trends and Future Directions -- Backpropagation Algorithm |
Summary |
"Behavioral scientists working in organizations today have access to unprecedented amounts of data. Networked computing and software tools are changing the landscape of organizational research in fundamental ways. Information technology facilitates creation of vast amounts of data. In organizational research, online surveys, interactive interviews, computer-based assessment, and other digital tools have become a preferred medium for collecting self-report and opinion data. Other unobtrusive, nontraditional sources of behavioral observation data are coming into use. Measures of online behavior and databases maintained by corporations and government agencies for other purposes can be a useful source of research data. Concurrent with expanding data availability, analytic capability and processing capacity have improved dramatically. One permutation of this evolution is the recent appearance of computationally intensive methods only recently enabled by spectacular gains in processing speed. These "brute force" computational techniques were often developed to solve highly complex problems in the physical sciences and are now migrating into the toolkit of organizational research. Artificial neural networks constitute one class of these powerful new tools. An artificial neural network (ANN) is a statistical model comprised of simple, interconnected processing elements that are configured through iterative exposure to sample data. The most significant departure of neural network analysis from conventional analysis is that neural model development is relatively unconstrained by researcher expectations compared with the defined parameters of anticipated functional relationships inherent to hypothesis testing. Several themes are in this chapter that are discussed in more detail in later chapters. When one or more of the following conditions are present in a research project, neural network analysis may have value in concert with or even in lieu of conventional multivariate analysis: When sample data show high dimensionality, multiple variable types, and complex interaction effects or do not meet parametric assumptions; When evaluation of alternative models is required; When relationships between independent and dependent variables are weak and unexplained variance is large; When the research application supports or requires the use of data-mining procedures; When the theoretical basis of prediction is ambiguous or poorly understood; When operational use of the predictive model requires high fault tolerance; and When conventional modeling is unnecessary or cannot be completed under operational time constraints." (PsycINFO Database Record (c) 2007 APA, all rights reserved) |
Bibliography |
Includes bibliographical references (pages 165-176) and index |
Notes |
Master and use copy. Digital master created according to Benchmark for Faithful Digital Reproductions of Monographs and Serials, Version 1. Digital Library Federation, December 2002. http://purl.oclc.org/DLF/benchrepro0212 MiAaHDL |
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English |
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Print version record |
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digitized 2010 HathiTrust Digital Library committed to preserve pda MiAaHDL |
In |
PsycBOOKS (EBSCO). EBSCO |
Subject |
Organizational behavior -- Research -- Methodology
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Neural networks (Computer science)
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Pattern perception.
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Social Behavior
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Neural Networks, Computer
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Neural networks (Computer science)
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Pattern perception.
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Form |
Electronic book
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Author |
Somers, Mark John.
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ISBN |
1591474159 |
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9781591474159 |
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