Predicting Real World Behaviors from Virtual World Data [electronic resource] / edited by Muhammad Aurangzeb Ahmad, Cuihua Shen, Jaideep Srivastava, Noshir Contractor. - XIV, 118 p. 40 illus., 27 illus. in color. online resource. - Springer Proceedings in Complexity, 2213-8684 . - Springer Proceedings in Complexity, .

Preface -- On The Problem of Predicting Real World Characteristics from Virtual Worlds -- The Use of Social Science Methods to Predict Player Characteristics from Avatar Observations -- Analyzing Effects of Public Communication onto Player Behavior in Massively Multiplayer Online Games -- Identifying User Demographic Traits through Virtual-World Language Use -- Predicting MMO Player Gender from In-Game Attributes using Machine Learning Models -- Predicting Links in Human Contact Networks using Online Social Proximity -- Identifying a Typology of Players Based on Longitudinal Game Data.

This book addresses prediction, mining and analysis of offline characteristics and behaviors from online data and vice versa. Each chapter will focus on a different aspect of virtual worlds to real world prediction e.g., demographics, personality, location, etc. There is a growing body of literature that focuses on the similarities and differences between how people behave in the offline world vs. how they behave in these virtual environments. Data mining has aided in discovering interesting insights with respect to how people behave in these virtual environments.

9783319071428

10.1007/978-3-319-07142-8 doi


Computer science.
Application software.
Mathematics.
Social sciences.
Sociophysics.
Econophysics.
Computer Science.
Computer Appl. in Social and Behavioral Sciences.
Socio- and Econophysics, Population and Evolutionary Models.
Methodology of the Social Sciences.
Mathematics in the Humanities and Social Sciences.

QA76.76.A65

004