1. Mining Big Time-series Data on the Web
- Author
-
Yasushi Sakurai, Yasuko Matsubara, and Christos Faloutsos
- Subjects
Computer science ,Nearest neighbor search ,02 engineering and technology ,Data science ,Automatic summarization ,World Wide Web ,Web mining ,020204 information systems ,Online search ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Social media ,Anomaly detection ,State (computer science) ,Time series - Abstract
Online news, blogs, SNS and many other Web-based services has been attracting considerable interest for business and marketing purposes. Given a large collection of time series, such as web-click logs, online search queries, blog and review entries, how can we efficiently and effectively find typical time-series patterns? What are the major tools for mining, forecasting and outlier detection? Time-series data analysis is becoming of increasingly high importance, thanks to the decreasing cost of hardware and the increasing on-line processing capability. The objective of this tutorial is to provide a concise and intuitive overview of the most important tools that can help us find meaningful patterns in large-scale time-series data. Specifically we review the state of the art in three related fields: (1) similarity search, pattern discovery and summarization, (2) non-linear modeling and forecasting, and (3) the extension of time-series mining and tensor analysis. We also introduce case studies that illustrate their practical use for social media and Web-based services.
- Published
- 2016
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