Title
A review on time series data mining
Abstract
Time series is an important class of temporal data objects and it can be easily obtained from scientific and financial applications. A time series is a collection of observations made chronologically. The nature of time series data includes: large in data size, high dimensionality and necessary to update continuously. Moreover time series data, which is characterized by its numerical and continuous nature, is always considered as a whole instead of individual numerical field. The increasing use of time series data has initiated a great deal of research and development attempts in the field of data mining. The abundant research on time series data mining in the last decade could hamper the entry of interested researchers, due to its complexity. In this paper, a comprehensive revision on the existing time series data mining research is given. They are generally categorized into representation and indexing, similarity measure, segmentation, visualization and mining. Moreover state-of-the-art research issues are also highlighted. The primary objective of this paper is to serve as a glossary for interested researchers to have an overall picture on the current time series data mining development and identify their potential research direction to further investigation.
Year
DOI
Venue
2011
10.1016/j.engappai.2010.09.007
Eng. Appl. of AI
Keywords
Field
DocType
time series,data mining,interested researcher,visualization,data size,similarity measure,temporal data object,time series data mining,current time series data,existing time series data,segmentation,time series data,representation,abundant research,indexation,temporal data
Data science,Time series,Data stream mining,Similarity measure,Information retrieval,Computer science,Visualization,Search engine indexing,Curse of dimensionality,Temporal database,Glossary
Journal
Volume
Issue
ISSN
24
1
Engineering Applications of Artificial Intelligence
Citations 
PageRank 
References 
201
6.00
265
Authors
1
Search Limit
100265
Name
Order
Citations
PageRank
Tak-chung Fu140721.29