Daily Activity Feature Selection in Smart Homes Based on Pearson Correlation Coefficient

被引:7
作者
Yaqing Liu
Yong Mu
Keyu Chen
Yiming Li
Jinghuan Guo
机构
[1] Dalian Maritime University,School of Information Science and Technology
[2] Sichuan University of Science and Engineering,Artificial Intelligence Key Laboratory of Sichuan Province
来源
Neural Processing Letters | 2020年 / 51卷
关键词
Activity recognition; Feature selection; Pearson Correlation Coefficient; Smart home;
D O I
暂无
中图分类号
学科分类号
摘要
In the case of a smart home, the ability to recognize daily activities depends primarily on the strategy used for selecting the appropriate features related to these activities. To achieve the goal, this paper presents a daily activity feature selection strategy based on the Pearson Correlation Coefficient. Firstly, a daily activity feature is viewed as a vector in Pearson Correlation Coefficient formula. Secondly, the relation degree between daily activity features is obtained according to weighted Pearson Correlation Coefficient formula. At last, redundant features are removed by the relation degree between daily activity features. Two distinct datasets are adopted to mitigate the effects of the coupling of the dataset used and the sensor configuration. Three different machine learning techniques are employed to evaluate the performance of the proposed approach in activity recognition. The experiment results show that the proposed approach yields higher recognition rates and achieves average improvement F-measures of 1.56% and 2.7%, respectively.
引用
收藏
页码:1771 / 1787
页数:16
相关论文
共 136 条
[1]  
Chan M(2008)A review of smart homes- present state and future challenges Comput Methods Programs Biomed 91 55-81
[2]  
Campo E(2010)Ambient assisted living research in the carelab Interactions 14 30-33
[3]  
Estève D(2018)Activity recognition in sensor data streams for active and assisted living environments IEEE Trans Circuits Syst Video Technol 28 2933-364
[4]  
Fourniols JY(2017)Collegial activity learning between heterogeneous sensors Knowl Inf Syst 53 337-189
[5]  
Ruyter BD(2017)Towards improving feature extraction and classification for activity recognition on streaming data J Ambient Intell Humaniz Comput 8 177-1526
[6]  
Zwartkruispelgrim E(2019)Improved SMOTE algorithm to deal with imbalanced activity classes in smart homes Neural Process Lett 50 1503-526
[7]  
Aarts E(2018)Feature extraction based on information gain and sequential pattern for english question classification IET Softw 12 520-390
[8]  
Machot FA(2019)Timely daily activity recognition from headmost sensor events ISA Trans 94 379-45950
[9]  
Mosa AH(2018)Ensemble data reduction techniques and multi-RSMOTE via fuzzy integral for bug report classification IEEE Access 6 45934-302
[10]  
Ali M(2019)An improved ant colony optimization algorithm based on hybrid strategies for scheduling problem IEEE Access 59 288-175