<span>This book is a compilation of peer-reviewed papers presented at the International Conference on Machine Intelligence and Data Science Applications, organized by the School of Computer Science, University of Petroleum & Energy Studies, Dehradun, India, during 4β5 September 2020. The book ad
Group Processes: Data-Driven Computational Approaches
β Scribed by Andrew Pilny, Marshall Scott Poole (eds.)
- Publisher
- Springer International Publishing
- Year
- 2017
- Tongue
- English
- Leaves
- 209
- Series
- Computational Social Sciences
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This volume introduces a series of different data-driven computational methods for analyzing group processes through didactic and tutorial-based examples. Group processes are of central importance to many sectors of society, including government, the military, health care, and corporations. Computational methods are better suited to handle (potentially huge) group process data than traditional methodologies because of their more flexible assumptions and capability to handle real-time trace data.
Indeed, the use of methods under the name of computational social science have exploded over the years. However, attention has been focused on original research rather than pedagogy, leaving those interested in obtaining computational skills lacking a much needed resource. Although the methods here can be applied to wider areas of social science, they are specifically tailored to group process research.
A number of data-driven methods adapted to group process research are demonstrated in this current volume. These include text mining, relational event modeling, social simulation, machine learning, social sequence analysis, and response surface analysis. In order to take advantage of these new opportunities, this book provides clear examples (e.g., providing code) of group processes in various contexts, setting guidelines and best practices for future work to build upon.
This volume will be of great benefit to those willing to learn computational methods. These include academics like graduate students and faculty, multidisciplinary professionals and researchers working on organization and management science, and consultants for various types of organizations and groups.
β¦ Table of Contents
Front Matter....Pages i-v
Introduction....Pages 1-4
Response Surface Models to Analyze Nonlinear Group Phenomena....Pages 5-27
Causal Inference Using Bayesian Networks....Pages 29-49
A Relational Event Approach to Modeling Behavioral Dynamics....Pages 51-92
Text Mining Tutorial....Pages 93-117
Sequential Synchronization Analysis....Pages 119-144
Group Analysis Using Machine Learning Techniques....Pages 145-180
Simulation and Virtual Experimentation: Grounding with Empirical Data....Pages 181-206
β¦ Subjects
Simulation and Modeling;Methodology of the Social Sciences;Big Data/Analytics;Data Mining and Knowledge Discovery;Industrial and Organizational Psychology;Knowledge Management
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