9783319126272-331912627X-Propagation of Interval and Probabilistic Uncertainty in Cyberinfrastructure-related Data Processing and Data Fusion (Studies in Systems, Decision and Control, 15)

Propagation of Interval and Probabilistic Uncertainty in Cyberinfrastructure-related Data Processing and Data Fusion (Studies in Systems, Decision and Control, 15)

ISBN-13: 9783319126272
ISBN-10: 331912627X
Edition: 2015
Author: Vladik Kreinovich, Christian Servin
Publication date: 2014
Publisher: Springer
Format: Hardcover 120 pages
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Book details

ISBN-13: 9783319126272
ISBN-10: 331912627X
Edition: 2015
Author: Vladik Kreinovich, Christian Servin
Publication date: 2014
Publisher: Springer
Format: Hardcover 120 pages

Summary

Propagation of Interval and Probabilistic Uncertainty in Cyberinfrastructure-related Data Processing and Data Fusion (Studies in Systems, Decision and Control, 15) (ISBN-13: 9783319126272 and ISBN-10: 331912627X), written by authors Vladik Kreinovich, Christian Servin, was published by Springer in 2014. With an overall rating of 3.5 stars, it's a notable title among other AI & Machine Learning (Data Mining, Databases & Big Data, Engineering, Computer Science) books. You can easily purchase or rent Propagation of Interval and Probabilistic Uncertainty in Cyberinfrastructure-related Data Processing and Data Fusion (Studies in Systems, Decision and Control, 15) (Hardcover) from BooksRun, along with many other new and used AI & Machine Learning books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

On various examples ranging from geosciences to environmental sciences, this

book explains how to generate an adequate description of uncertainty, how to justify

semiheuristic algorithms for processing uncertainty, and how to make these algorithms

more computationally efficient. It explains in what sense the existing approach to

uncertainty as a combination of random and systematic components is only an

approximation, presents a more adequate three-component model with an additional

periodic error component, and explains how uncertainty propagation techniques can

be extended to this model. The book provides a justification for a practically efficient

heuristic technique (based on fuzzy decision-making). It explains how the computational

complexity of uncertainty processing can be reduced. The book also shows how to

take into account that in real life, the information about uncertainty is often only

partially known, and, on several practical examples, explains how to extract the missing

information about uncertainty from the available data.

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