Network models for data science : theory, algorithms, and applications / by Alan Julian Izenman.
Material type:
TextPublication details: New York : Cambridge University Press, 2023Description: xv, 484 p . ; ill. (chiefly color) 26 cmContent type: text Media type: unmediated Carrier type: volumeISBN: 9781108835763 (hbk.)Subject(s): System analysis | Mathematical models | MATHEMATICS / Probability & Statistics / GeneralDDC classification: 519.6 Summary: "This text on the theory and applications of network science is aimed at beginning graduate students in statistics, data science, computer science, machine learning, and mathematics, as well as advanced students in business, computational biology, physics, social science, and engineering working with large, complex relational data sets. It provides an exciting array of analysis tools, including probability models, graph theory, and computational algorithms, exposing students to ways of thinking about types of data that are different from typical statistical data. Concepts are demonstrated in the context of real applications, such as relationships between financial institutions, between genes or proteins, between neurons in the brain, and between terrorist groups. Methods and models described in detail include random graph models, percolation processes, methods for sampling from huge networks, network partitioning, and community detection. In addition to static networks the book introduces dynamic networks such as epidemics, where time is an important component"-- Provided by publisher.
| Item type | Current library | Home library | Call number | Status | Notes | Date due | Barcode | Item holds |
|---|---|---|---|---|---|---|---|---|
| Books | Jayakar Knowledge Resource Centre | Jayakar Knowledge Resource Centre | 519.6 IZE.A (Browse shelf(Opens below)) | Available | 59.00 Pound | 523759 |
Includes bibliographical references and index.
"This text on the theory and applications of network science is aimed at beginning graduate students in statistics, data science, computer science, machine learning, and mathematics, as well as advanced students in business, computational biology, physics, social science, and engineering working with large, complex relational data sets. It provides an exciting array of analysis tools, including probability models, graph theory, and computational algorithms, exposing students to ways of thinking about types of data that are different from typical statistical data. Concepts are demonstrated in the context of real applications, such as relationships between financial institutions, between genes or proteins, between neurons in the brain, and between terrorist groups. Methods and models described in detail include random graph models, percolation processes, methods for sampling from huge networks, network partitioning, and community detection. In addition to static networks the book introduces dynamic networks such as epidemics, where time is an important component"-- Provided by publisher.
There are no comments on this title.