Intelligent Data Analysis for e-Learning: Enhancing Security and Trustworthiness in Online Learning Systems (Intelligent Data-Centric Systems: Sensor Collected Intelligence)

Jorge Miguel, Santi Caballé, Fatos Xhafa

  • 出版商: Academic Press
  • 出版日期: 2016-08-09
  • 售價: $4,320
  • 貴賓價: 9.5$4,104
  • 語言: 英文
  • 頁數: 192
  • 裝訂: Paperback
  • ISBN: 0128045353
  • ISBN-13: 9780128045350
  • 相關分類: 感測器 SensorData Science資訊安全
  • 海外代購書籍(需單獨結帳)

商品描述

Intelligent Data Analysis for e-Learning: Enhancing Security and Trustworthiness in Online Learning Systems addresses information security within e-Learning based on trustworthiness assessment and prediction. Over the past decade, many learning management systems have appeared in the education market. Security in these systems is essential for protecting against unfair and dishonest conduct―most notably cheating―however, e-Learning services are often designed and implemented without considering security requirements.

This book provides functional approaches of trustworthiness analysis, modeling, assessment, and prediction for stronger security and support in online learning, highlighting the security deficiencies found in most online collaborative learning systems. The book explores trustworthiness methodologies based on collective intelligence than can overcome these deficiencies. It examines trustworthiness analysis that utilizes the large amounts of data-learning activities generate. In addition, as processing this data is costly, the book offers a parallel processing paradigm that can support learning activities in real-time.

The book discusses data visualization methods for managing e-Learning, providing the tools needed to analyze the data collected. Using a case-based approach, the book concludes with models and methodologies for evaluating and validating security in e-Learning systems.

  • Provides guidelines for anomaly detection, security analysis, and trustworthiness of data processing
  • Incorporates state-of-the-art, multidisciplinary research on online collaborative learning, social networks, information security, learning management systems, and trustworthiness prediction
  • Proposes a parallel processing approach that decreases the cost of expensive data processing
  • Offers strategies for ensuring against unfair and dishonest assessments
  • Demonstrates solutions using a real-life e-Learning context