Data Analysis for Complex Systems: A Linear Algebra Approach (Not yet published)
| AUTHOR | Rockmore, Dan; Pauls, Scott; Leibon, Greg et al. |
| PUBLISHER | Princeton University Press (12/25/1940) |
| PRODUCT TYPE | Paperback (Paperback) |
The analysis of complex systems--from financial markets and voting patterns to ecosystems and food webs--can be daunting for newcomers to the subject, in part because existing methods often require expertise across multiple disciplines. This book shows how a single technique--the partition decoupling method--can serve as a useful first step for modeling and analyzing complex systems data. Accessible to a broad range of backgrounds and widely applicable to complex systems represented as high-dimensional or network data, this powerful methodology draws on core concepts in network modeling and analysis, cluster analysis, and a range of techniques for dimension reduction. The book explains these and other essential concepts and provides several real-world examples to illustrate how a data-driven approach can illuminate complex systems.
- Provides a comprehensive introduction to modeling and analysis of complex systems with minimal mathematical prerequisites
- Focuses on a single technique, thereby providing an easy entry point to the subject
- Explains analytic techniques using actual data from the social sciences
- Uses only linear algebra to model and analyze large data sets
- Includes problems and real-world examples
- An ideal textbook for students and invaluable resource for researchers with a wide range of backgrounds and preparation
- Proven in the classroom
The analysis of complex systems--from financial markets and voting patterns to ecosystems and food webs--can be daunting for newcomers to the subject, in part because existing methods often require expertise across multiple disciplines. This book shows how a single technique--the partition decoupling method--can serve as a useful first step for modeling and analyzing complex systems data. Accessible to a broad range of backgrounds and widely applicable to complex systems represented as high-dimensional or network data, this powerful methodology draws on core concepts in network modeling and analysis, cluster analysis, and a range of techniques for dimension reduction. The book explains these and other essential concepts and provides several real-world examples to illustrate how a data-driven approach can illuminate complex systems.
- Provides a comprehensive introduction to modeling and analysis of complex systems with minimal mathematical prerequisites
- Focuses on a single technique, thereby providing an easy entry point to the subject
- Explains analytic techniques using actual data from the social sciences
- Uses only linear algebra to model and analyze large data sets
- Includes problems and real-world examples
- An ideal textbook for students and invaluable resource for researchers with a wide range of backgrounds and preparation
- Proven in the classroom
