Title :
Mining infrequent patterns in data stream
Author :
Lakshmi, R. ; Hemalatha, C. Sweetlin ; Vaidehi, V.
Author_Institution :
Madras Inst. of Technol., Anna Univ., Chennai, India
Abstract :
In recent years researches are focused towards mining infrequent patterns rather than frequent patterns. Mining infrequent pattern plays vital role in detecting any abnormal event. In this paper, an algorithm named Infrequent Pattern Miner for Data Streams (IPM-DS) is proposed for mining nonzero infrequent patterns from data streams. The proposed algorithm adopts the FP-growth based approach for generating all infrequent patterns. The proposed algorithm (IPM-DS) is evaluated using health data set collected from wearable physiological sensors that measure vital parameters such as Heart Rate (HR), Breathing Rate (BR), Oxygen Saturation (SPO2) and Blood pressure (BP) and also with two publically available data sets such as e-coli and Wine from UCI repository. The experimental results show that the proposed algorithm generates all possible infrequent patterns in less time.
Keywords :
data mining; health care; pattern recognition; physiology; FP-growth; IPM-DS; UCI repository; data stream; health data set; nonzero infrequent pattern mining; wearable physiological sensors; Algorithm design and analysis; Data mining; Heart rate; Information technology; Itemsets; Market research; Sensors; Data mining; Data streams; Infrequent patterns;
Conference_Titel :
Recent Trends in Information Technology (ICRTIT), 2014 International Conference on
Conference_Location :
Chennai
DOI :
10.1109/ICRTIT.2014.6996199