Title
MC^2 : An Integrated Toolbox for Change, Causality and Motif Discovery.
Abstract
Time series are being generated continuously from all kinds of human endeavors. The ubiquity of time-series data generates a need for data mining and pattern discovery algorithms targeting this data format which is becoming of ever increasing importance. Three basic problems in mining time-series data are change point discovery, causality discovery and motif discovery. This paper presents an integrated toolbox that can be used to perform any of these tasks on multidimensional real-valued time-series using state of the art algorithms. The proposed toolbox provides practitioners in time-series analysis and data mining with several tools useful for data generation, preprocessing, modeling evaluation and mining of long sequences. The paper also reports real world applications that uses the toolbox in HRI, physiological signal processing, and human behavior modeling and understanding.
Year
Venue
Field
2016
IEA/AIE
Data mining,Signal processing,Causality,Data format,Computer science,Toolbox,Motif (music),Preprocessor,Test data generation
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
24
2
Name
Order
Citations
PageRank
Yasser F. O. Mohammad118019.21
Toyoaki Nishida21097196.19