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Contribution to Book
Translation and Rotation Invariant Mining of Frequent Trajectories: Application to Protein Unfolding Pathways
Emerging Technologies in Knowledge Discovery and Data Mining: PAKDD 2007 International Workshops Nanjing, China, May 22-25, 2007 Revised Selected Papers (2007)
  • Alexander Andreopoulos, York University
  • Bill Andreopoulos, York University
  • Aijun An, York University
  • Xiaogang Wang, York University
Abstract
We present a framework for mining frequent trajectories, which are translated and/or rotated with respect to one another. We then discuss a multiresolution methodology, based on the wavelet transformation, for speeding up the discovery of frequent trajectories. We present experimental results using noisy protein unfolding trajectories and synthetic datasets. Our results demonstrate the effectiveness of the proposed approaches for finding frequent trajectories. A multiresolution mining strategy provides significant mining speed improvements.
Publication Date
May, 2007
Editor
Takashi Washio, Zhi-Hua Zhou, Joshua Zhexue Huang, Xiaohua Hu, Jinyan Li, Chao Xie, Jieyue He, Deqing Zou, Kuan-Ching Li, and Mário M. Freire
Publisher
Springer, Berlin, Heidelberg
Series
Lecture Notes in Computer Science
ISBN
9783540770183
DOI
10.1007/978-3-540-77018-3_19
Citation Information
Alexander Andreopoulos, Bill Andreopoulos, Aijun An and Xiaogang Wang. "Translation and Rotation Invariant Mining of Frequent Trajectories: Application to Protein Unfolding Pathways" Emerging Technologies in Knowledge Discovery and Data Mining: PAKDD 2007 International Workshops Nanjing, China, May 22-25, 2007 Revised Selected Papers Vol. 4819 (2007)
Available at: http://works.bepress.com/william-andreopoulos/30/