Constructing A Novel Spark-based Distributed Maximum Frequent Sequence Pattern Mining for IoT Log

Author(s):  
Xiong Chen ◽  
Ruliang Xiao ◽  
Du Xin ◽  
Xinhong Lin ◽  
Li Lin
2021 ◽  
Vol 21 (1) ◽  
Author(s):  
Xia Yu ◽  
Ning Ma ◽  
Tao Yang ◽  
Yawen Zhang ◽  
Qing Miao ◽  
...  

Abstract Background Early alarm of hypoglycemia, detection of asymptomatic hypoglycemia, and effective control of blood glucose fluctuation make a great contribution to diabetic treatment. In this study, we designed a multi-level hypoglycemia early alarm system to mine potential information in Continuous Glucose Monitoring (CGM) time series and improve the overall alarm performance for different clinical situations. Methods Through symbolizing the historical CGM records, the Prefix Span was adopted to obtain the early alarm/non-alarm frequent sequence libraries of hypoglycemia events. The longest common subsequence was used to remove the common frequent sequence for achieving the hypoglycemia early alarm in different clinical situations. Then, the frequent sequence pattern libraries with different risk thresholds were designed as the core module of the proposed multi-level hypoglycemia early alarm system. Results The model was able to predict hypoglycemia events in the clinical dataset of level-I (sensitivity 85.90%, false-positive 23.86%, miss alarm rate 14.10%, average early alarm time 20.61 min), level-II (sensitivity 80.36%, false-positive 17.37%, miss alarm rate 19.63%, average early alarm time 27.66 min), and level-III (sensitivity 78.07%, false-positive 13.59%, miss alarm rate 21.93%, average early alarm time 33.80 min), respectively. Conclusions The proposed approach could effectively predict hypoglycemia events based on different risk thresholds to meet different prevention and treatment requirements. Moreover, the experimental results confirm the practicality and prospects of the proposed early alarm system, which reflects further significance in personalized medicine for hypoglycemia prevention.


2020 ◽  
Author(s):  
Xia Yu ◽  
Ning Ma ◽  
Tao Yang ◽  
Yawen Zhang ◽  
Qing Miao ◽  
...  

Abstract Background: Early alarm of hypoglycemia, detection of asymptomatic hypoglycemia, and effective control of blood glucose fluctuation make a great contribution to the treatment for diabetic patients. In this study, we designed a multi-level hypoglycemia early alarm system to improve the overall performance of hypoglycemia early alarm. Methods: Through symbolizing the historical CGM data, the Prefix Span was adopted to obtain the early alarm and non-alarm frequent sequence libraries of hypoglycemia. The longest common subsequence was used to remove the common frequent sequence for achieving the hypoglycemia early alarm on the clinical dataset. Frequent sequence pattern libraries with different risk levels were designed by choosing different thresholds and a multi-level hypoglycemia early alarm system for different clinical situations were established. Results: The model was able to predict hypoglycemia events in the clinical dataset of level-I (sensitivity 85.90%, false-positive 23.86%, miss alarm rate 14.10%, average early alarm time 20.61min), level-II (sensitivity 80.36%, false-positive 17.37%, miss alarm rate 19.63%, average early alarm time 27.66min), and level-III (sensitivity 78.07%, false-positive 13.59%, miss alarm rate 21.93%, average early alarm time 33.80min), respectively.Conclusions: The proposed approach could effectively predict hypoglycemia events on the basis of different thresholds to meet different prevention and treatment requirements in clinical situations. Moreover, the experimental results confirm the practicality and prospects of the proposed early alarm system, which reflects further significance in personalized medicine for hypoglycemia prevention.


2018 ◽  
Vol 105 (2) ◽  
pp. 673-689 ◽  
Author(s):  
Keon Myung Lee ◽  
Chan Sik Han ◽  
Joong Nam Jun ◽  
Jee Hyong Lee ◽  
Sang Ho Lee

2018 ◽  
Vol 48 (10) ◽  
pp. 2809-2822 ◽  
Author(s):  
Youxi Wu ◽  
Yao Tong ◽  
Xingquan Zhu ◽  
Xindong Wu

Author(s):  
Huiyu Zhou ◽  
Kaoru Shimada ◽  
Shingo Mabu ◽  
Kotaro Hirasawa

Author(s):  
Pradeep Kumar ◽  
Raju S. Bapi ◽  
P. Radha Krishna

Interestingness measures play an important role in finding frequently occurring patterns, regardless of the kind of patterns being mined. In this work, we propose variation to the AprioriALL Algorithm, which is commonly used for the sequence pattern mining. The proposed variation adds up the measure interest during every step of candidate generation to reduce the number of candidates thus resulting in reduced time and space cost. The proposed algorithm derives the patterns which are qualified and more of interest to the user. The algorithm, by using the interest, measure limits the size the candidates set whenever it is produced by giving the user more importance to get the desired patterns.


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