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Big Data in Emergency Management: Exploitation Techniques for Social and Mobile Data

✍ Scribed by Rajendra Akerkar


Publisher
Springer International Publishing;Springer
Year
2020
Tongue
English
Leaves
194
Edition
1st ed.
Category
Library

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No coin nor oath required. For personal study only.

✦ Synopsis


This contributed volume discusses essential topics and the fundamentals for Big Data Emergency Management and primarily focusses on the application of Big Data for Emergency Management. It walks the reader through the state of the art, in different facets of the big disaster data field. This includes many elements that are important for these technologies to have real-world impact. This book brings together different computational techniques from: machine learning, communication network analysis, natural language processing, knowledge graphs, data mining, and information visualization, aiming at methods that are typically used for processing big emergency data. This book also provides authoritative insights and highlights valuable lessons by distinguished authors, who are leaders in this field.
Emergencies are severe, large-scale, non-routine events that disrupt the normal functioning of a community or a society, causing widespread and overwhelming losses and impacts. Emergency Management is the process of planning and taking actions to minimize the social and physical impact of emergencies and reduces the community’s vulnerability to the consequences of emergencies. Information exchange before, during and after the disaster periods can greatly reduce the losses caused by the emergency. This allows people to make better use of the available resources, such as relief materials and medical supplies. It also provides a channel through which reports on casualties and losses in each affected area, can be delivered expeditiously. Big Data-Driven Emergency Management refers to applying advanced data collection and analysis technologies to achieve more effective and responsive decision-making during emergencies.
Researchers, engineers and computer scientists working in Big Data Emergency Management, who need to deal with large and complex sets of data will want to purchase this book. Advanced-level students interested in data-driven emergency/crisis/disaster management will also want to purchase this book as a study guide.

✦ Table of Contents


Front Matter ....Pages i-xviii
Introduction to Emergency Management (Rajendra Akerkar, Minsung Hong)....Pages 1-14
Big Data (Andreas L. Opdahl, Vimala Nunavath)....Pages 15-29
Learning Algorithms for Emergency Management (Minsung Hong, Rajendra Akerkar)....Pages 31-74
Knowledge Graphs and Natural-Language Processing (Andreas L. Opdahl)....Pages 75-91
Social Media Mining for Disaster Management and Community Resilience (Hemant Purohit, Steve Peterson)....Pages 93-107
Big Data-Driven Citywide Human Mobility Modeling for Emergency Management (Zipei Fan, Xuan Song, Ryosuke Shibasaki)....Pages 109-130
Smartphone Based Emergency Communication (Huawei Huang, Song Guo)....Pages 131-147
Emergency Information Visualisation (Hoang Long Nguyen, Rajendra Akerkar)....Pages 149-183

✦ Subjects


Computer Science; Information Storage and Retrieval; Natural Hazards; Computer Communication Networks; Computer Applications


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