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This textbook presents the main principles of visual analytics and
describes techniques and approaches that have proven their utility
and can be readily reproduced. Special emphasis is placed on
various instructive examples of analyses, in which the need for and
the use of visualisations are explained in detail. The book begins
by introducing the main ideas and concepts of visual analytics and
explaining why it should be considered an essential part of data
science methodology and practices. It then describes the general
principles underlying the visual analytics approaches, including
those on appropriate visual representation, the use of interactive
techniques, and classes of computational methods. It continues with
discussing how to use visualisations for getting aware of data
properties that need to be taken into account and for detecting
possible data quality issues that may impair the analysis. The
second part of the book describes visual analytics methods and
workflows, organised by various data types including
multidimensional data, data with spatial and temporal components,
data describing binary relationships, texts, images and video. For
each data type, the specific properties and issues are explained,
the relevant analysis tasks are discussed, and appropriate methods
and procedures are introduced. The focus here is not on the
micro-level details of how the methods work, but on how the methods
can be used and how they can be applied to data. The limitations of
the methods are also discussed and possible pitfalls are
identified. The textbook is intended for students in data science
and, more generally, anyone doing or planning to do practical data
analysis. It includes numerous examples demonstrating how visual
analytics techniques are used and how they can help analysts to
understand the properties of data, gain insights into the subject
reflected in the data, and build good models that can be trusted.
Based on several years of teaching related courses at the City,
University of London, the University of Bonn and TU Munich, as well
as industry training at the Fraunhofer Institute IAIS and numerous
summer schools, the main content is complemented by sample datasets
and detailed, illustrated descriptions of exercises to practice
applying visual analytics methods and workflows.
Many important planning decisions in society and business depend on
proper knowledge and a correct understanding of movement, be it in
transportation, logistics, biology, or the life sciences. Today the
widespread use of mobile phones and technologies like GPS and RFID
provides an immense amount of data on location and movement. What
is needed are new methods of visualization and algorithmic data
analysis that are tightly integrated and complement each other to
allow end-users and analysts to extract useful knowledge from these
extremely large data volumes. This is exactly the topic of this
book. As the authors show, modern visual analytics techniques are
ready to tackle the enormous challenges brought about by movement
data, and the technology and software needed to exploit them are
available today. The authors start by illustrating the different
kinds of data available to describe movement, from individual
trajectories of single objects to multiple trajectories of many
objects, and then proceed to detail a conceptual framework, which
provides the basis for a fundamental understanding of movement
data. With this basis, they move on to more practical and technical
aspects, focusing on how to transform movement data to make it more
useful, and on the infrastructure necessary for performing visual
analytics in practice. In so doing they demonstrate that visual
analytics of movement data can yield exciting insights into the
behavior of moving persons and objects, but can also lead to an
understanding of the events that transpire when things move.
Throughout the book, they use sample applications from various
domains and illustrate the examples with graphical depictions of
both the interactive displays and the analysis results. In summary,
readers will benefit from this detailed description of the state of
the art in visual analytics in various ways. Researchers will
appreciate the scientific precision involved, software
technologists will find essential information on algorithms and
systems, and practitioners will profit from readily accessible
examples with detailed illustrations for practical purposes.
A fundamental assumption of work in artificial intelligence and
machine learning is that knowledge is expressed in a computer with
the help of knowledge representations. Since the proper choice of
such representations is a difficult task that fundamentally affects
the capabilities of a system, the problem of automatic
representation change is an important topic in current research.
Concept Formation and Knowledge Revision focuses on representation
change as a concept formation task, regarding concepts as the
elementary representational vocabulary from which further
statements are constructed. Taking an interdisciplinary approach
from psychological foundations to computer implementations, the
book draws on existing psychological results about the nature of
human concepts and concept formation to determine the scope of
concept formation phenomena, and to identify potential components
of computational concept formation models. The central idea of this
work is that computational concept formation can usefully be
understood as a process that is triggered in a demand-driven
fashion by the representational needs of the learning system, and
identify the knowledge revision activities of a system as a
particular context for such a process. The book presents a detailed
analysis of the revision problem for first-order clausal theories,
and develops a set of postulates that any such operation should
satisfy. It shows how a minimum theory revision operator can be
realized by using exception sets, and that this operator is indeed
maximally general. The book then shows that concept formation can
be triggered from within the knowledge revision process whenever
the existing representation does not permit the plausible
reformulation of an exception set, demonstrating the usefulness of
the approach both theoretically and empirically within the learning
knowledge acquisition system MOBAL. In using a first-order
representation, this book is part of the rapidly developing field
of Inductive Logic Programming (ILP). By integrating the
computational issues with psychological and fundamental discussions
of concept formation phenomena, the book will be of interest to
readers both theoretically and psychologically inclined. From the
foreword by Katharina Morik: The ideal to combine the three sources
of artificial intelligence research has almost never been reached.
Such a combined and integrated research requires the researcher to
master different ways of thinking, different work styles, different
sets of literature, and different research procedures. It requires
capabilities in software engineering for the application part, in
theoretical computer science for the theory part, and in psychology
for the cognitive part. The most important capability for
artificial intelligence is to keep the integrative view and to
create a true original work that goes beyond the collection of
pieces from different fields. This book achieves such an
integrative view of concept formation and knowledge revision by
presenting the way from psychological investigations that indicate
that concepts are theories and point at the important role of a
demand for learning. to an implemented system which supports users
in their tasks when working with a knowledge base and its
theoretical foundation. '
Many important planning decisions in society and business depend on
proper knowledge and a correct understanding of movement, be it in
transportation, logistics, biology, or the life sciences. Today the
widespread use of mobile phones and technologies like GPS and RFID
provides an immense amount of data on location and movement. What
is needed are new methods of visualization and algorithmic data
analysis that are tightly integrated and complement each other to
allow end-users and analysts to extract useful knowledge from these
extremely large data volumes. This is exactly the topic of this
book. As the authors show, modern visual analytics techniques are
ready to tackle the enormous challenges brought about by movement
data, and the technology and software needed to exploit them are
available today. The authors start by illustrating the different
kinds of data available to describe movement, from individual
trajectories of single objects to multiple trajectories of many
objects, and then proceed to detail a conceptual framework, which
provides the basis for a fundamental understanding of movement
data. With this basis, they move on to more practical and technical
aspects, focusing on how to transform movement data to make it more
useful, and on the infrastructure necessary for performing visual
analytics in practice. In so doing they demonstrate that visual
analytics of movement data can yield exciting insights into the
behavior of moving persons and objects, but can also lead to an
understanding of the events that transpire when things move.
Throughout the book, they use sample applications from various
domains and illustrate the examples with graphical depictions of
both the interactive displays and the analysis results. In summary,
readers will benefit from this detailed description of the state of
the art in visual analytics in various ways. Researchers will
appreciate the scientific precision involved, software
technologists will find essential information on algorithms and
systems, and practitioners will profit from readily accessible
examples with detailed illustrations for practical purposes.
This volume constitutes the proceedings of the Eighth European
Conference on Machine Learning ECML-95, held in Heraclion, Crete in
April 1995.
Besides four invited papers the volume presents revised versions of
14 long papers and 26 short papers selected from a total of 104
submissions. The papers address all current aspects in the area of
machine learning; also logic programming, planning, reasoning, and
algorithmic issues are touched upon.
This open access book provides a comprehensive view on data
ecosystems and platform economics from methodical and technological
foundations up to reports from practical implementations and
applications in various industries. To this end, the book is
structured in four parts: Part I "Foundations and Contexts"
provides a general overview about building, running, and governing
data spaces and an introduction to the IDS and GAIA-X projects.
Part II "Data Space Technologies" subsequently details various
implementation aspects of IDS and GAIA-X, including eg data usage
control, the usage of blockchain technologies, or semantic data
integration and interoperability. Next, Part III describes various
"Use Cases and Data Ecosystems" from various application areas such
as agriculture, healthcare, industry, energy, and mobility. Part IV
eventually offers an overview of several "Solutions and
Applications", eg including products and experiences from companies
like Google, SAP, Huawei, T-Systems, Innopay and many more.
Overall, the book provides professionals in industry with an
encompassing overview of the technological and economic aspects of
data spaces, based on the International Data Spaces and Gaia-X
initiatives. It presents implementations and business cases and
gives an outlook to future developments. In doing so, it aims at
proliferating the vision of a social data market economy based on
data spaces which embrace trust and data sovereignty.
This open access book provides a comprehensive view on data
ecosystems and platform economics from methodical and technological
foundations up to reports from practical implementations and
applications in various industries. To this end, the book is
structured in four parts: Part I "Foundations and Contexts"
provides a general overview about building, running, and governing
data spaces and an introduction to the IDS and GAIA-X projects.
Part II "Data Space Technologies" subsequently details various
implementation aspects of IDS and GAIA-X, including eg data usage
control, the usage of blockchain technologies, or semantic data
integration and interoperability. Next, Part III describes various
"Use Cases and Data Ecosystems" from various application areas such
as agriculture, healthcare, industry, energy, and mobility. Part IV
eventually offers an overview of several "Solutions and
Applications", eg including products and experiences from companies
like Google, SAP, Huawei, T-Systems, Innopay and many more.
Overall, the book provides professionals in industry with an
encompassing overview of the technological and economic aspects of
data spaces, based on the International Data Spaces and Gaia-X
initiatives. It presents implementations and business cases and
gives an outlook to future developments. In doing so, it aims at
proliferating the vision of a social data market economy based on
data spaces which embrace trust and data sovereignty.
This textbook presents the main principles of visual analytics and
describes techniques and approaches that have proven their utility
and can be readily reproduced. Special emphasis is placed on
various instructive examples of analyses, in which the need for and
the use of visualisations are explained in detail. The book begins
by introducing the main ideas and concepts of visual analytics and
explaining why it should be considered an essential part of data
science methodology and practices. It then describes the general
principles underlying the visual analytics approaches, including
those on appropriate visual representation, the use of interactive
techniques, and classes of computational methods. It continues with
discussing how to use visualisations for getting aware of data
properties that need to be taken into account and for detecting
possible data quality issues that may impair the analysis. The
second part of the book describes visual analytics methods and
workflows, organised by various data types including
multidimensional data, data with spatial and temporal components,
data describing binary relationships, texts, images and video. For
each data type, the specific properties and issues are explained,
the relevant analysis tasks are discussed, and appropriate methods
and procedures are introduced. The focus here is not on the
micro-level details of how the methods work, but on how the methods
can be used and how they can be applied to data. The limitations of
the methods are also discussed and possible pitfalls are
identified. The textbook is intended for students in data science
and, more generally, anyone doing or planning to do practical data
analysis. It includes numerous examples demonstrating how visual
analytics techniques are used and how they can help analysts to
understand the properties of data, gain insights into the subject
reflected in the data, and build good models that can be trusted.
Based on several years of teaching related courses at the City,
University of London, the University of Bonn and TU Munich, as well
as industry training at the Fraunhofer Institute IAIS and numerous
summer schools, the main content is complemented by sample datasets
and detailed, illustrated descriptions of exercises to practice
applying visual analytics methods and workflows.
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