Description
Event Mining
Algorithms and Applications
Chapman & Hall/CRC Data Mining and Knowledge Discovery Series
Coordinator: Li Tao
Language: EnglishSubjects for Event Mining:
Keywords
IBM Global Service; Cel Tic; event summarization; log mining; Suffix Arrays; event generation; Frequent Itemset; mining time lags; Log Parser; log message clustering; Longest Common Subsequence; IT ticket resolution; Log Messages; IT ticket classification; False Positive Alert; event summarization in tweets; Incident Ticket; Twitter event summarization; Summarization Methods; temporal pattern discovery; Liang Tang; Event Sequence; Pattern Mining; Spam; Standard Histograms; Query Sequence; Manual Tickets; False Alerts; SVM Classification Model; Hash Functions; Domain Words; SVM Algorithm; Spatial Data Analysis; Real Alert
Publication date: 06-2020
· 15.6x23.4 cm · Paperback
Publication date: 10-2015
· 15.6x23.4 cm · Hardback
Description
/li>Contents
/li>Readership
/li>Biography
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Event mining encompasses techniques for automatically and efficiently extracting valuable knowledge from historical event/log data. The field, therefore, plays an important role in data-driven system management. Event Mining: Algorithms and Applications presents state-of-the-art event mining approaches and applications with a focus on computing system management.
The book first explains how to transform log data in disparate formats and contents into a canonical form as well as how to optimize system monitoring. It then shows how to extract useful knowledge from data. It describes intelligent and efficient methods and algorithms to perform data-driven pattern discovery and problem determination for managing complex systems. The book also discusses data-driven approaches for the detailed diagnosis of a system issue and addresses the application of event summarization in Twitter messages (tweets).
Understanding the interdisciplinary field of event mining can be challenging as it requires familiarity with several research areas and the relevant literature is scattered in diverse publications. This book makes it easier to explore the field by providing both a good starting point for readers not familiar with the topics and a comprehensive reference for those already working in this area.
Introduction. Event Generation and System Monitoring. Pattern Discovery and Summarization. Applications.
Dr. Tao Li is a professor and Graduate Program Director in the School of Computing and Information Sciences at Florida International University (FIU) and a professor in the School of Computer Science at Nanjing University of Posts and Telecommunication. He is on the editorial boards of ACM Transactions on Knowledge Discovery from Data, IEEE Transactions on Knowledge and Data Engineering, and Knowledge and Information System Journal. He has received numerous honors, including an NSF CAREER Award, IBM Faculty Research Awards, an FIU Excellence in Research and Creativities Award, and IBM Scalable Data Analytics Innovation Award and Mentorship Awards. His research interests are in data mining, information retrieval, and computing system management. He received a PhD in computer science from the University of Rochester.