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Integrating Artificial Intelligence and Visualization for Visual Knowledge Discovery
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Integrating Artificial Intelligence and Visualization for Visual Knowledge Discovery/ edited by Boris Kovalerchuk, Kawa Nazemi, Răzvan Andonie, Nuno Datia, Ebad Banissi.
其他作者:
Kovalerchuk, Boris.
面頁冊數:
XV, 674 p. 334 illus., 288 illus. in color.online resource. :
Contained By:
Springer Nature eBook
標題:
Computational intelligence. -
電子資源:
https://doi.org/10.1007/978-3-030-93119-3
ISBN:
9783030931193
Integrating Artificial Intelligence and Visualization for Visual Knowledge Discovery
Integrating Artificial Intelligence and Visualization for Visual Knowledge Discovery
[electronic resource] /edited by Boris Kovalerchuk, Kawa Nazemi, Răzvan Andonie, Nuno Datia, Ebad Banissi. - 1st ed. 2022. - XV, 674 p. 334 illus., 288 illus. in color.online resource. - Studies in Computational Intelligence,10141860-9503 ;. - Studies in Computational Intelligence,564.
Visual Analytics for Strategic Decision Making in Technology Management -- Deep Learning Image Recognition for Non-images -- Self-service Data Classification Using Interactive Visualization and Interpretable Machine Learning -- Non-linear Visual Knowledge Discovery with Elliptic Paired Coordinates -- Convolutional Neural Networks Analysis using Concentric-Rings Interactive Visualization -- “Negative” Results – When the Measured Quantity Is Outside the Sensor’s Range – Can Help Data Processing -- Visualizing and Explaining Language Models -- Transparent Clustering with Cyclic Probabilistic Causal Models -- Visualization and Self-Organizing Maps for the Characterization of Bank Clients -- Augmented Classical Self-Organizing Map for Visualization of Discrete Data with Density Scaling -- Gragnostics: Evaluating Fast, Interpretable Structural Graph Features for Classification and Visual Analytics -- VisIRML Visualization with an Interactive Information Retrieval and Machine Learning Classifier -- Visual Analytics of Hierarchical and Network Timeseries Models -- ML approach to predict air quality using sensor and road traffic data -- Context-Aware Diagnosis in Smart Manufacturing: TAOISM, an Industry 4.0-Ready Visual Analytics Model -- Visual discovery of malware patterns in Android apps -- Integrating Visual Exploration and Direct Editing of Multivariate Graphs -- Real-Time Visual Analytics for Air Quality -- Using Hybrid Scatterplots for Visualizing Multi‐Dimensional Data -- Extending a genetic-based visualization: going beyond the radial layout? -- Dual Y Axes Charts Defended: Case studies, domain analysis and a method -- Hierarchical Visualization for Exploration of Large and Small Hierarchies -- Geometric Analysis Leads to Adversarial Teaching of Cybersecurity -- Applications and Evaluations of Drawing Scatterplots as Polygons and Outlier Points -- Supply Chain and Decision Making: What is Next for Visualization?
This book is devoted to the emerging field of integrated visual knowledge discovery that combines advances in artificial intelligence/machine learning and visualization/visual analytic. A long-standing challenge of artificial intelligence (AI) and machine learning (ML) is explaining models to humans, especially for live-critical applications like health care. A model explanation is fundamentally human activity, not only an algorithmic one. As current deep learning studies demonstrate, it makes the paradigm based on the visual methods critically important to address this challenge. In general, visual approaches are critical for discovering explainable high-dimensional patterns in all types in high-dimensional data offering "n-D glasses," where preserving high-dimensional data properties and relations in visualizations is a major challenge. The current progress opens a fantastic opportunity in this domain. This book is a collection of 25 extended works of over 70 scholars presented at AI and visual analytics related symposia at the recent International Information Visualization Conferences with the goal of moving this integration to the next level. The sections of this book cover integrated systems, supervised learning, unsupervised learning, optimization, and evaluation of visualizations. The intended audience for this collection includes those developing and using emerging AI/machine learning and visualization methods. Scientists, practitioners, and students can find multiple examples of the current integration of AI/machine learning and visualization for visual knowledge discovery. The book provides a vision of future directions in this domain. New researchers will find here an inspiration to join the profession and to be involved for further development. Instructors in AI/ML and visualization classes can use it as a supplementary source in their undergraduate and graduate classes.
ISBN: 9783030931193
Standard No.: 10.1007/978-3-030-93119-3doiSubjects--Topical Terms:
568984
Computational intelligence.
LC Class. No.: Q342
Dewey Class. No.: 006.3
Integrating Artificial Intelligence and Visualization for Visual Knowledge Discovery
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