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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.
This textbook provides readers with the tools, techniques and cases
required to excel with modern artificial intelligence methods.
These embrace the family of neural networks, fuzzy systems and
evolutionary computing in addition to other fields within machine
learning, and will help in identifying, visualizing, classifying
and analyzing data to support business decisions./p> The
authors, discuss advantages and drawbacks of different approaches,
and present a sound foundation for the reader to design and
implement data analytic solutions for real-world applications in an
intelligent manner. Intelligent Techniques for Data Science also
provides real-world cases of extracting value from data in various
domains such as retail, health, aviation, telecommunication and
tourism.
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.
The Internet has become an integral part of human life, yet the web
still utilizes mundane interfaces to the physical world, which
makes Internet operations somewhat mechanical, tedious, and less
human-oriented. Filling a large void in the literature, Intelligent
Technologies for Web Applications is one of the first books to
focus on providing vital fundamental and advanced guidance in the
area of Web intelligence for beginners and researchers. The book
covers techniques from diverse areas of research, including:
Natural language processing Information extraction, retrieval, and
filtering Knowledge representation and management Machine learning
Databases Data, web, and text mining Human-computer interaction
Semantic web technologies To develop effective and intelligent web
applications and services, it is critical to discover useful
knowledge through analyzing large amounts of content, hidden
content structures, or usage patterns of web data resources.
Intended to improve and reinforce problem-solving methods in this
area, this book delves into the hybridization of artificial
intelligence (AI) and web technologies to help simplify complex Web
operations. It introduces readers to the state-of-the art
development of web intelligence techniques and teaches how to apply
these techniques to develop the next generation of intelligent Web
applications. The book lays out presented projects, case studies,
and innovative ideas, which readers can explore independently as
standalone research projects. This material facilitates
experimentation with the book's content by including fundamental
tools, research directions, practice questions, and additional
reading.
The big data tsunami changes the perspective of industrial and
academic research in how they address both foundational questions
and practical applications. This calls for a paradigm shift in
algorithms and the underlying mathematical techniques. There is a
need to understand foundational strengths and address the state of
the art challenges in big data that could lead to practical impact.
The main goal of this book is to introduce algorithmic techniques
for dealing with big data sets. Traditional algorithms work
successfully when the input data fits well within memory. In many
recent application situations, however, the size of the input data
is too large to fit within memory. Models of Computation for Big
Data, covers mathematical models for developing such algorithms,
which has its roots in the study of big data that occur often in
various applications. Most techniques discussed come from research
in the last decade. The book will be structured as a sequence of
algorithmic ideas, theoretical underpinning, and practical use of
that algorithmic idea. Intended for both graduate students and
advanced undergraduate students, there are no formal prerequisites,
but the reader should be familiar with the fundamentals of
algorithm design and analysis, discrete mathematics, probability
and have general mathematical maturity.
This textbook provides readers with the tools, techniques and cases
required to excel with modern artificial intelligence methods.
These embrace the family of neural networks, fuzzy systems and
evolutionary computing in addition to other fields within machine
learning, and will help in identifying, visualizing, classifying
and analyzing data to support business decisions./p> The
authors, discuss advantages and drawbacks of different approaches,
and present a sound foundation for the reader to design and
implement data analytic solutions for real-world applications in an
intelligent manner. Intelligent Techniques for Data Science also
provides real-world cases of extracting value from data in various
domains such as retail, health, aviation, telecommunication and
tourism.
Due to market forces and technological evolution, Big Data
computing is developing at an increasing rate. A wide variety of
novel approaches and tools have emerged to tackle the challenges of
Big Data, creating both more opportunities and more challenges for
students and professionals in the field of data computation and
analysis. Presenting a mix of industry cases and theory, Big Data
Computing discusses the technical and practical issues related to
Big Data in intelligent information management. Emphasizing the
adoption and diffusion of Big Data tools and technologies in
industry, the book introduces a broad range of Big Data concepts,
tools, and techniques. It covers a wide range of research, and
provides comparisons between state-of-the-art approaches. Comprised
of five sections, the book focuses on: What Big Data is and why it
is important Semantic technologies Tools and methods Business and
economic perspectives Big Data applications across industries
The Internet has become an integral part of human life, yet the web
still utilizes mundane interfaces to the physical world, which
makes Internet operations somewhat mechanical, tedious, and less
human-oriented. Filling a large void in the literature, Intelligent
Technologies for Web Applications is one of the first books to
focus on providing vital fundamental and advanced guidance in the
area of Web intelligence for beginners and researchers. The book
covers techniques from diverse areas of research, including:
Natural language processing Information extraction, retrieval, and
filtering Knowledge representation and management Machine learning
Databases Data, web, and text mining Human-computer interaction
Semantic web technologies To develop effective and intelligent web
applications and services, it is critical to discover useful
knowledge through analyzing large amounts of content, hidden
content structures, or usage patterns of web data resources.
Intended to improve and reinforce problem-solving methods in this
area, this book delves into the hybridization of artificial
intelligence (AI) and web technologies to help simplify complex Web
operations. It introduces readers to the state-of-the art
development of web intelligence techniques and teaches how to apply
these techniques to develop the next generation of intelligent Web
applications. The book lays out presented projects, case studies,
and innovative ideas, which readers can explore independently as
standalone research projects. This material facilitates
experimentation with the book's content by including fundamental
tools, research directions, practice questions, and additional
reading.
Due to market forces and technological evolution, Big Data
computing is developing at an increasing rate. A wide variety of
novel approaches and tools have emerged to tackle the challenges of
Big Data, creating both more opportunities and more challenges for
students and professionals in the field of data computation and
analysis. Presenting a mix of industry cases and theory, Big Data
Computing discusses the technical and practical issues related to
Big Data in intelligent information management. Emphasizing the
adoption and diffusion of Big Data tools and technologies in
industry, the book introduces a broad range of Big Data concepts,
tools, and techniques. It covers a wide range of research, and
provides comparisons between state-of-the-art approaches. Comprised
of five sections, the book focuses on: What Big Data is and why it
is important Semantic technologies Tools and methods Business and
economic perspectives Big Data applications across industries
This book offers a practical guide to artificial intelligence (AI)
techniques that are used in business. The book does not focus on AI
models and algorithms, but instead provides an overview of the most
popular and frequently used models in business. This allows the
book to easily explain AI paradigms and concepts for business
students and executives. Artificial Intelligence for Business is
divided into six chapters. Chapter 1 begins with a brief
introduction to AI and describes its relationship with machine
learning, data science and big data analytics. Chapter 2 presents
core machine learning workflow and the most effective machine
learning techniques. Chapter 3 deals with deep learning, a popular
technique for developing AI applications. Chapter 4 introduces
recommendation engines for business and covers how to use them to
be more competitive. Chapter 5 features natural language processing
(NLP) for sentiment analysis focused on emotions. With the help of
sentiment analysis, businesses can understand their customers
better to improve their experience, which will help the businesses
change their market position. Chapter 6 states potential business
prospects of AI and the benefits that companies can realize by
implementing AI in their processes.
A Knowledge-Based System (KBS) Is A System That Uses Artificial
Intelligence Techniques In Problem-Solving Processes To Support
Human Decision-Making, Learning, And Action. Ideal For
Advanced-Undergraduate And Graduate Students, As Well As Business
Professionals, This Text Is Designed To Help Users Develop An
Appreciation Of KBS And Their Architecture And Understand A Broad
Variety Of Knowledge-Based Techniques For Decision Support And
Planning. It Assumes Basic Computer Science Skills And A Math
Background That Includes Set Theory, Relations, Elementary
Probability, And Introductory Concepts Of Artificial Intelligence.
Each Of The 12 Chapters Is Designed To Be Modular, Providing
Instructors With The Flexibility To Model The Book To Their Own
Course Needs. Exercises Are Incorporated Throughout The Text To
Highlight Certain Aspects Of The Material Presented And To Simulate
Thought And Discussion. A Comprehensive Text And Resource,
Knowledge-Based Systems Provides Access To The Most Current
Information In KBS And New Artificial Intelligences, As Well As
Neural Networks, Fuzzy Logic, Genetic Algorithms, And Soft Systems.
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