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Data driven science has become a major decision-making aid for the
diagnosis and treatment of disease. Computational and visual
analytics enables effective exploration and sense making of large
and complex data through the deployment of appropriate data science
methods, meaningful visualization and human-information
interaction. This edited volume covers state-of-the-art theory,
method, models, design, evaluation and application in computational
and visual analytics in desktop, mobile and immersive environments
for analysing biomedical and health data. The book is focused on
data-driven integral analysis, including computational methods and
visual analytics practices and solutions for discovering actionable
knowledge in support of clinical actions in real environments. By
studying how data and visual analytics has been implemented into
the healthcare domain, the book demonstrates how analytics
influences the domain through improving decision making, specifying
diagnostics, selecting the best treatments and generating clinical
certainty.
Data driven science has become a major decision-making aid for the
diagnosis and treatment of disease. Computational and visual
analytics enables effective exploration and sense making of large
and complex data through the deployment of appropriate data science
methods, meaningful visualization and human-information
interaction. This edited volume covers state-of-the-art theory,
method, models, design, evaluation and application in computational
and visual analytics in desktop, mobile and immersive environments
for analysing biomedical and health data. The book is focused on
data-driven integral analysis, including computational methods and
visual analytics practices and solutions for discovering actionable
knowledge in support of clinical actions in real environments. By
studying how data and visual analytics has been implemented into
the healthcare domain, the book demonstrates how analytics
influences the domain through improving decision making, specifying
diagnostics, selecting the best treatments and generating clinical
certainty.
Going beyond performing simple analyses, researchers involved in
the highly dynamic field of computational intelligent data analysis
design algorithms that solve increasingly complex data problems in
changing environments, including economic, environmental, and
social data. Computational Intelligent Data Analysis for
Sustainable Development presents novel methodologies for
automatically processing these types of data to support rational
decision making for sustainable development. Through numerous case
studies and applications, it illustrates important data analysis
methods, including mathematical optimization, machine learning,
signal processing, and temporal and spatial analysis, for
quantifying and describing sustainable development problems. With a
focus on integrated sustainability analysis, the book presents a
large-scale quadratic programming algorithm to expand
high-resolution input-output tables from the national scale to the
multinational scale to measure the carbon footprint of the entire
trade supply chain. It also quantifies the error or dispersion
between different reclassification and aggregation schemas,
revealing that aggregation errors have a high concentration over
specific regions and sectors. The book summarizes the latest
contributions of the data analysis community to climate change
research. A profuse amount of climate data of various types is
available, providing a rich and fertile playground for future data
mining and machine learning research. The book also pays special
attention to several critical challenges in the science of climate
extremes that are not handled by the current generation of climate
models. It discusses potential conceptual and methodological
directions to build a close integration between physical
understanding, or physics-based modeling, and data-driven insights.
The book then covers the conservation of species and ecologically
valuable land. A case study on the Pennsylvania Dirt and Gravel
Roads Program demonstrates that multiple-objective linear
programming is a more versatile and efficient approach than the
widely used benefit targeting selection process. Moving on to
renewable energy and the need for smart grids, the book explores
how the ongoing transformation to a sustainable energy system of
renewable sources leads to a paradigm shift from demand-driven
generation to generation-driven demand. It shows how to maximize
renewable energy as electricity by building a supergrid or mixing
renewable sources with demand management and storage. It also
presents intelligent data analysis for real-time detection of
disruptive events from power system frequency data collected using
an existing Internet-based frequency monitoring network as well as
evaluates a set of computationally intelligent techniques for
long-term wind resource assessment. In addition, the book gives an
example of how temporal and spatial data analysis tools are used to
gather knowledge about behavioral data and address important social
problems such as criminal offenses. It also applies constraint
logic programming to a planning problem: the environmental and
social impact assessment of the regional energy plan of the
Emilia-Romagna region of Italy. Sustainable development problems,
such as global warming, resource shortages, global species loss,
and pollution, push researchers to create powerful data analysis
approaches that analysts can then use to gain insight into these
issues to support rational decision making. This volume shows both
the data analysis and sustainable development communities how to
use intelligent data analysis tools to address practical problems
and encourages researchers to develop better methods.
Going beyond performing simple analyses, researchers involved in
the highly dynamic field of computational intelligent data analysis
design algorithms that solve increasingly complex data problems in
changing environments, including economic, environmental, and
social data. Computational Intelligent Data Analysis for
Sustainable Development presents novel methodologies for
automatically processing these types of data to support rational
decision making for sustainable development. Through numerous case
studies and applications, it illustrates important data analysis
methods, including mathematical optimization, machine learning,
signal processing, and temporal and spatial analysis, for
quantifying and describing sustainable development problems. With a
focus on integrated sustainability analysis, the book presents a
large-scale quadratic programming algorithm to expand
high-resolution input-output tables from the national scale to the
multinational scale to measure the carbon footprint of the entire
trade supply chain. It also quantifies the error or dispersion
between different reclassification and aggregation schemas,
revealing that aggregation errors have a high concentration over
specific regions and sectors. The book summarizes the latest
contributions of the data analysis community to climate change
research. A profuse amount of climate data of various types is
available, providing a rich and fertile playground for future data
mining and machine learning research. The book also pays special
attention to several critical challenges in the science of climate
extremes that are not handled by the current generation of climate
models. It discusses potential conceptual and methodological
directions to build a close integration between physical
understanding, or physics-based modeling, and data-driven insights.
The book then covers the conservation of species and ecologically
valuable land. A case study on the Pennsylvania Dirt and Gravel
Roads Program demonstrates that multiple-objective linear
programming is a more versatile and efficient approach than the
widely used benefit targeting selection process. Moving on to
renewable energy and the need for smart grids, the book explores
how the ongoing transformation to a sustainable energy system of
renewable sources leads to a paradigm shift from demand-driven
generation to generation-driven demand. It shows how to maximize
renewable energy as electricity by building a supergrid or mixing
renewable sources with demand management and storage. It also
presents intelligent data analysis for real-time detection of
disruptive events from power system frequency data collected using
an existing Internet-based frequency monitoring network as well as
evaluates a set of computationally intelligent techniques for
long-term wind resource assessment. In addition, the book gives an
example of how temporal and spatial data analysis tools are used to
gather knowledge about behavioral data and address important social
problems such as criminal offenses. It also applies constraint
logic programming to a planning problem: the environmental and
social impact assessment of the regional energy plan of the
Emilia-Romagna region of Italy. Sustainable development problems,
such as global warming, resource shortages, global species loss,
and pollution, push researchers to create powerful data analysis
approaches that analysts can then use to gain insight into these
issues to support rational decision making. This volume shows both
the data analysis and sustainable development communities how to
use intelligent data analysis tools to address practical problems
and encourages researchers to develop better methods.
1 WorkshopTheme Digital multimedia di?ers from previous forms of
combined media in that the bits that represent text, images,
animations, and audio, video and other signals can be treated as
data by computer programs. One facet of this diverse data in
termsofunderlyingmodelsandformatsisthatitissynchronizedandintegrated,
hence it can be treated as integral data records. Such records can
be found in a number of areas of human endeavour. Modern medicine
generates huge amounts of such digital data. Another - ample is
architectural design and the related architecture, engineering and
c- struction (AEC) industry. Virtual communities (in the broad
sense of this word, which includes any communities mediated by
digital technologies) are another example where generated data
constitutes an integral data record. Such data may include data
about member pro?les, the content generated by the virtual
community, and communication data in di?erent formats, including
e-mail, chat records, SMS messages, videoconferencing records. Not
all multimedia data is so diverse. An example of less diverse data,
but data that is larger in terms of the collected amount, is that
generated by video surveillance systems, where each integral data
record roughly consists of a set of time-stamped images - the video
frames. In any case, the collection of such in- gral data records
constitutes a multimedia data set. The challenge of extracting
meaningful patterns from such data sets has led to the research and
devel- ment in the area of multimedia data mining.
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Data Mining - 20th Australasian Conference, AusDM 2022, Western Sydney, Australia, December 12-15, 2022, Proceedings (Paperback, 1st ed. 2022)
Laurence A. F. Park, Heitor Murilo Gomes, Maryam Doborjeh, Yee Ling Boo, Yun Sing Koh, …
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R2,286
Discovery Miles 22 860
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Ships in 10 - 15 working days
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This book constitutes the refereed proceedings of the 20th
Australasian Conference on Data Mining, AusDM 2022, held in Western
Sydney, Australia, during December 12-15, 2022. The 17 full papers
included in this book were carefully reviewed and selected from 44
submissions. They were organized in topical sections as research
track and application track.
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