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Title Cognitive computing for big data systems over IoT : frameworks, tools and applications / Arun Kumar Sangaiah, Arunkumar Thangavelu, Venkatesan Meenakshi Sundaram, editors.
Imprint Cham : Springer, 2018.

View online
View online
Series Lecture notes on data engineering and communications technologies ; volume 14
Lecture notes on data engineering and communications technologies ; v. 14.
Subject Big data.
Data mining.
Information storage and retrieval systems.
Alt Name Sangaiah, Arun Kumar, 1981-
Thangavelu, Arunkumar,
Sundaram, Venkatesan Meenakshi,
Description 1 online resource.
polychrome rdacc
Contents Beyond Automation: The Cognitive IoT -- Artificial Intelligence Brings Sense to the Internet of Things -- Cybercrimes Investigation and Intrusion Detection in Internet of Things Based on Data Science Methods -- Modeling and Analysis of Multi-Objective Service Selection Scheme in IoT-Cloud Environment -- Cognitive data science automatic fraud detection solution, based on Benford? s law, fuzzy logic with elements of machine learning -- Reliable Cross Layer Design for E-health Applications -- IoT Perspective -- Erasure Codes for Reliable Communication in Internet-ofThings (IoT) embedded with Wireless Sensors -- Review: Security and Privacy Issues of Fog Computing -- A Review on Security and Privacy Challenges of Big Data -- Recent Developments in Deep Learning with Applications -- High-Level Knowledge Representation and Reasoning in a Cognitive IoT/WoT Context -- Applications of IoT in Healthcare -- Security Stipulations on IoT Networks -- A Hyper Heuristic Localization Based Cloned Node Detection Technique using GSA Based Simulated Annealing in Sensor Networks -- Review on Analysis of the Application Areas and Algorithms used in Data Wrangling in Big Data -- An innovation model for Smart Traffic Management System Using Internet of Things(IoT).#xE000.
Summary This book brings a high level of fluidity to analytics and addresses recent trends, innovative ideas, challenges and cognitive computing solutions in big data and the Internet of Things (IoT). It explores domain knowledge, data science reasoning and cognitive methods in the context of the IoT, extending current data science approaches by incorporating insights from experts as well as a notion of artificial intelligence, and performing inferences on the knowledge The book provides a comprehensive overview of the constituent paradigms underlying cognitive computing methods, which illustrate the increased focus on big data in IoT problems as they evolve. It includes novel, in-depth fundamental research contributions from a methodological/application in data science accomplishing sustainable solution for the future perspective. Mainly focusing on the design of the best cognitive embedded data science technologies to process and analyze the large amount of data collected through the IoT, and aid better decision making, the book discusses adapting decision-making approaches under cognitive computing paradigms to demonstrate how the proposed procedures as well as big data and IoT problems can be handled in practice. This book is a valuable resource for scientists, professionals, researchers, and academicians dealing with the new challenges and advances in the specific areas of cognitive computing and data science approaches.
Note Online resource; title from PDF title page (EBSCO, viewed January 11, 2018).
ISBN 9783319706887 (electronic bk.)
3319706888 (electronic bk.)
ISBN/ISSN 10.1007/978-3-319-70688-7
OCLC # 1017756018
Additional Format Printed edition: 9783319706870

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