Relating Theory and Data

Relating Theory and Data
Title Relating Theory and Data PDF eBook
Author Stephan Lewandowsky
Publisher Psychology Press
Total Pages 443
Release 2013-06-17
Genre Psychology
ISBN 1134759290

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This festschrift represents the proceedings of a conference held in honor of Bennet B. Murdock, one of the foremost researchers and theoreticians on human memory and cognition. A highly renowned investigator respected for both his empirical and theoretical contributions to the field, Murdock summarized and focused a large amount of research activity with his 1974 book Human Memory: Theory and Data. This unique collection of articles addresses many of the issues discussed in his classic text. Divided into five principal sections, its coverage includes: theoretical perspectives on human memory ranging from a biological view to an exposition of the value of formal models; recent progress in the study of processes in immediate memory and recognition memory; and new developments in componential and distributed approaches to the modeling of human memory. Each section concludes with an integrative commentary provided by some of Murdock’s eminent colleagues from the University of Toronto. Thus, this book offers a diversity of perspectives on contemporary topics in the discipline, and will be of interest to students and scholars in all branches of cognitive science.

Theory of Data

Theory of Data
Title Theory of Data PDF eBook
Author Clyde H. Coombs
Publisher
Total Pages 585
Release 1964-01-01
Genre Psychology
ISBN 9780471171140

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Linked Data

Linked Data
Title Linked Data PDF eBook
Author Tom Heath
Publisher Springer Nature
Total Pages 122
Release 2022-05-31
Genre Mathematics
ISBN 303179432X

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The World Wide Web has enabled the creation of a global information space comprising linked documents. As the Web becomes ever more enmeshed with our daily lives, there is a growing desire for direct access to raw data not currently available on the Web or bound up in hypertext documents. Linked Data provides a publishing paradigm in which not only documents, but also data, can be a first class citizen of the Web, thereby enabling the extension of the Web with a global data space based on open standards - the Web of Data. In this Synthesis lecture we provide readers with a detailed technical introduction to Linked Data. We begin by outlining the basic principles of Linked Data, including coverage of relevant aspects of Web architecture. The remainder of the text is based around two main themes - the publication and consumption of Linked Data. Drawing on a practical Linked Data scenario, we provide guidance and best practices on: architectural approaches to publishing Linked Data; choosing URIs and vocabularies to identify and describe resources; deciding what data to return in a description of a resource on the Web; methods and frameworks for automated linking of data sets; and testing and debugging approaches for Linked Data deployments. We give an overview of existing Linked Data applications and then examine the architectures that are used to consume Linked Data from the Web, alongside existing tools and frameworks that enable these. Readers can expect to gain a rich technical understanding of Linked Data fundamentals, as the basis for application development, research or further study. Table of Contents: List of Figures / Introduction / Principles of Linked Data / The Web of Data / Linked Data Design Considerations / Recipes for Publishing Linked Data / Consuming Linked Data / Summary and Outlook

Linked Data Visualization

Linked Data Visualization
Title Linked Data Visualization PDF eBook
Author Laura Po
Publisher Morgan & Claypool Publishers
Total Pages 157
Release 2020-03-20
Genre Computers
ISBN 1681737264

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Linked Data (LD) is a well-established standard for publishing and managing structured information on the Web, gathering and bridging together knowledge from different scientific and commercial domains. The development of Linked Data Visualization techniques and tools has been adopted as the established practice for the analysis of this vast amount of information by data scientists, domain experts, business users, and citizens. This book covers a wide spectrum of visualization topics, providing an overview of the recent advances in this area, focusing on techniques, tools, and use cases of visualization and visual analysis of LD. It presents core concepts related to data visualization and LD technologies, techniques employed for data visualization based on the characteristics of data, techniques for Big Data visualization, tools and use cases in the LD context, and, finally, a thorough assessment of the usability of these tools under different scenarios. The purpose of this book is to offer a complete guide to the evolution of LD visualization for interested readers from any background and to empower them to get started with the visual analysis of such data. This book can serve as a course textbook or as a primer for all those interested in LD and data visualization.

Data Relating to X-ray Spectra

Data Relating to X-ray Spectra
Title Data Relating to X-ray Spectra PDF eBook
Author National Research Council (U.S.). Committee on x-ray spectra
Publisher
Total Pages 88
Release 1920
Genre Research
ISBN

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Relating Theory – Clinical and Forensic Applications

Relating Theory – Clinical and Forensic Applications
Title Relating Theory – Clinical and Forensic Applications PDF eBook
Author John Birtchnell
Publisher Springer
Total Pages 366
Release 2016-06-29
Genre Psychology
ISBN 1137504595

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This book brings together recent research developments in relating theory. It is divided into four parts, which introduce the reader to relating theory, how it has developed and how it can be applied to clinical and forensic psychology. Topics include how couples relate to one another, how young people relate to their parents, how assessments of relating can be used in therapy, how specific negative relating styles relate to offending behaviour, risk taking and alcohol use, psychopathic and sadistic tendencies, and how the interpersonal relating of offenders can change during treatment in prison. The book covers international research involving both quantitative and qualitative methods, and will be of interest to clinicians, academics and both undergraduate and postgraduate students in the fields of psychology, clinical psychology, forensic/criminal psychology, psychiatry, psychotherapy, counselling, art-therapy, and mental health.

Computational Learning Theory and Natural Learning Systems: Making learning systems practical

Computational Learning Theory and Natural Learning Systems: Making learning systems practical
Title Computational Learning Theory and Natural Learning Systems: Making learning systems practical PDF eBook
Author Russell Greiner
Publisher MIT Press
Total Pages 440
Release 1994
Genre Computational learning theory
ISBN 9780262571180

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This is the fourth and final volume of papers from a series of workshops called "Computational Learning Theory and Ǹatural' Learning Systems." The purpose of the workshops was to explore the emerging intersection of theoretical learning research and natural learning systems. The workshops drew researchers from three historically distinct styles of learning research: computational learning theory, neural networks, and machine learning (a subfield of AI). Volume I of the series introduces the general focus of the workshops. Volume II looks at specific areas of interaction between theory and experiment. Volumes III and IV focus on key areas of learning systems that have developed recently. Volume III looks at the problem of "Selecting Good Models." The present volume, Volume IV, looks at ways of "Making Learning Systems Practical." The editors divide the twenty-one contributions into four sections. The first three cover critical problem areas: 1) scaling up from small problems to realistic ones with large input dimensions, 2) increasing efficiency and robustness of learning methods, and 3) developing strategies to obtain good generalization from limited or small data samples. The fourth section discusses examples of real-world learning systems. Contributors : Klaus Abraham-Fuchs, Yasuhiro Akiba, Hussein Almuallim, Arunava Banerjee, Sanjay Bhansali, Alvis Brazma, Gustavo Deco, David Garvin, Zoubin Ghahramani, Mostefa Golea, Russell Greiner, Mehdi T. Harandi, John G. Harris, Haym Hirsh, Michael I. Jordan, Shigeo Kaneda, Marjorie Klenin, Pat Langley, Yong Liu, Patrick M. Murphy, Ralph Neuneier, E.M. Oblow, Dragan Obradovic, Michael J. Pazzani, Barak A. Pearlmutter, Nageswara S.V. Rao, Peter Rayner, Stephanie Sage, Martin F. Schlang, Bernd Schurmann, Dale Schuurmans, Leon Shklar, V. Sundareswaran, Geoffrey Towell, Johann Uebler, Lucia M. Vaina, Takefumi Yamazaki, Anthony M. Zador.