Open Access
E-MAP: Efficiently Mining Asynchronous Periodic Patterns
Fahad Maqbool,Shariq Bashir,A. Rauf Baig +2 more
- 01 Jan 2006
TL;DR: The experimental results suggest that mining asynchronous periodic patterns using the proposed E-MAP (Efficient Mining of Asynchronous Periodic Patterns) algorithm is fast and efficient than as compared to previous approach SMCA, which is a three-step based algorithm for mining maximal complex patterns and requires depth-firstenumeration for mining multi events and maximalcomplex patterns.
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Abstract: Summary Mining periodic patterns in temporal dataset plays an important role in data mining and knowledge discovery tasks. In this paper, we propose a novel algorithm E-MAP (Efficient Mining of Asynchronous Periodic Patterns) for efficient mining of asynchronous periodic patterns in large temporal datasets. Our proposed algorithm discovers all maximal complex patterns in a single step and single scan without mining single event and multi events patterns. To check the effectiveness of our approach, we also provide detailed experimental results on real and artificial large temporal datasets. Our experimental results suggest that mining asynchronous periodic patterns using our proposed algorithm is fast and efficient than as compared to previous approach SMCA, which is a three-step based algorithm for mining maximal complex patterns and requires depth-firstenumeration for mining multi events and maximal complex patterns.
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Citations
Discovering Periodic-Frequent Patterns in Transactional Databases
Syed Khairuzzaman Tanbeer,Chowdhury Farhan Ahmed,Byeong-Soo Jeong,Young-Koo Lee +3 more
- 19 Apr 2009
TL;DR: An efficient tree-based data structure is used, called Periodic-frequent pattern tree (PF-tree in short), that captures the database contents in a highly compact manner and enables a pattern growth mining technique to generate the complete set of periodic-f frequent patterns in a database for user-given periodicity and support thresholds.
178
Hierarchical trajectory clustering for spatio-temporal periodic pattern mining
TL;DR: A new trajectory clustering algorithm which considers semantic spatio-temporal information such as direction, speed and time based on Traclus is proposed and comparative experimental results with three popular clustering methods are presented.
75
Mining Regular Patterns in Transactional Databases
TL;DR: This paper introduces a novel concept of mining regular patterns from transactional databases and devise an efficient tree-based data structure, called a Regular Pattern tree (RP-tree in short), that captures the database contents in a highly compact manner and enables a pattern growth-based mining technique to generate the complete set of regular patterns in a database for a user-defined regularity threshold.
36
•Journal Article
Periodic Pattern Mining – Algorithms and Applications
TL;DR: A survey of the state of art research on periodic pattern mining algorithms and their application areas was given and a discussion of merits and demerits of these algorithms was given.
Periodic Pattern Mining for Spatio-Temporal Trajectories: A Survey
Dongzhi Zhang,Kyungmi Lee,Ickjai Lee +2 more
- 01 Nov 2015
TL;DR: This paper surveys the breath and depth review of spatio-temporal periodic pattern mining and presents an overview of periodic pattern discovering methods from spatio -temporal trajectory data.
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