Computer Science ›› 2026, Vol. 53 ›› Issue (6A): 250800004-8.doi: 10.11896/jsjkx.250800004
• Big Data & Data Science • Previous Articles Next Articles
DONG Dong, JIN Pengchao
CLC Number:
| [1] DIGGLE P.Analysis of longitudinal data [M].Oxford:Oxford University Press,2002:1-3. [2] LU Z.Clustering longitudinal data:A review of methods and software packages [J].International Statistical Review,2025,93(3):425-458. [3] TOPHAM G L,WASHBURN I J,HUBBS-TAIT L,et al.TheFamilies and Schools for Health Project:a longitudinal cluster randomized controlled trial targeting children with overweight and obesity [J].International Journal of Environmental Research and Public Health,2021,18(16):8744. [4] POULAKIS K,PEREIRA J B,MUEHLBOECK J S,et al.Multi-cohort and longitudinal bayesian clustering study of stage and subtype in Alzheimer's disease [J].Nature Communications,2022,13(1):4566. [5] SALMANPOUR M R,SHAMSAEI M,HAJIANFAR G,et al.Longitudinal clustering analysis and prediction of Parkinson's disease progression using radiomics and hybrid machine learning [J].Quantitative Imaging in Medicine and Surgery,2022,12(2):906. [6] MATSON G,MCELROY S,LEE Y,et al.Longitudinal analysis of COVID-19 impacts on mobility:an early snapshot of the emerging changes in travel behavior [J].Transportation Research Record,2023,2677(4):298-312. [7] HUANG D Y C,EVANS E,HARA M,et al.Employment tra-jectories:Exploring gender differences and impacts of drug use [J].Journal of Vocational Behavior,2011,79(1):277-289. [8] LI C N,FENG G W,YAO H,et al.Survey on trajectory anomaly detection [J].Journal of Software,2024,35(2):927-974. [9] CÔTÉ P O,NIKANJAM A,AHMED N,et al.Data cleaningand machine learning:a systematic literature review [J].Automated Software Engineering,2024,31(2):54. [10] GRÜN B,LEISCH F.flexmix:Flexible Mixture Modeling:Rpackage version 2.3-20 [EB/OL].https://CRAN.R-project.org/package=flexmix. [11] LEISCH F.FlexMix:A General Framework for Finite Mixture Models and Latent Class Regression in R [J].Journal of Statistical Software,2004,11(8):1-18. [12] GRÜN B,LEISCH F.Fittingfinite mixtures of generalized linear regressions in R [J].Computational Statistics & Data Analysis,2007,51(11):5247-5252. [13] GRÜN B,LEISCH F.FlexMixversion 2:finite mixtures withconcomitant variables and varying and constant parameters [J].Journal of Statistical Software,2008,28(4):1-35. [14] GENOLINI C,ALACOQUE X,SENTENAC M,et al.kml and kml3d:Rpackages to cluster longitudinal data [J].Journal of Statistical Software,2015,65(4):1-34. [15] GENOLINI C,FALISSARD B,KIENER P.kml:K-means for longitudinal data:R package version 2.5-0 [EB/OL].https://CRAN.R-project.org/package=kml. [16] PROUST-LIMA C,PHILIPPS V,LIQUET B.Estimation ofextended mixed models using latent classes and latent processes:The R package lcmm [J].Journal of Statistical Software,2017,78(2):1-56. [17] PROUST-LIMA C,PHILIPPS V,DIAKITE A,et al.lcmm:Extended mixed models using latent classes and latent processes:R package version 2.2.1 [EB/OL].https://cran.r-project.org/package=lcmm. [18] ZHOU Y,CHEN H,IAO S,et al.fdapace:Functionaldata analysis and empirical dynamics:R package version 0.6.0 [EB/OL].https://CRAN.R-project.org/package=fdapace. [19] REN R,FANG K.FADPclust:Functional data clustering using adaptive density peak detection [EB/OL].https://CRAN.R-project.org/package=FADPclust. [20] KNORR E M,NG R T,TUCAKOV V.Distance-based outliers:algorithms and applications [J].The VLDB Journal,2000,8(3):237-253. [21] LEE J G,HAN J,LI X.Trajectory outlier detection:A partition-and-detect framework [C]//2008 IEEE 24th International Conference on Data Engineering.IEEE,2008:140-149. [22] LIU L,QIAO S,ZHANG Y,et al.An efficient outlying trajecto-ries mining approach based on relative distance [J].InternationalJournal of Geographical Information Science,2012,26(10):1789-1810. [23] GENOLINI C,FALISSARD B.KmL:k-means for longitudinal data [J].Computational Statistics,2010,25(2):317-328. [24] WANG J,YUAN Y,NI T,et al.Anomalous trajectory detection and classification based on difference and intersection set distance [J].IEEE Transactions on Vehicular Technology,2020,69(3):2487-2500. [25] MANGÉ V,ANEZIN Y,TOURNERET J Y,et al.Detectingabnormal ship trajectories using functional isolation forests and dynamic time warping [C]//32nd European Signal Processing Conference(EUSIPCO 2024).IEEE,2024:2342-2346. [26] LIU Z,PI D,JIANG J.Density-based trajectory outlier detection algorithm [J].Journal of Systems Engineering and Electronics,2013,24(2):335-340. [27] LUAN F,ZHANG Y,CAO K,et al.Based local density trajectory outlier detection with partition-and-detect framework [C]//2017 13th International Conference on Natural Computation,Fuzzy Systems and Knowledge Discovery(ICNC-FSKD).IEEE,2017:1708-1714. [28] GUAN B,ZHANG Y,LIU L,et al.An improving algorithm of trajectory outliersdetection [C]//Advanced Technology in Teaching-Proceedings of the 2009 3rd International Conference on Teaching and Computational Science(WTCS 2009).Berlin:Springer,2012:907-914. [29] PICIARELLI C,MICHELONI C,FORESTI G L.Trajectory-based anomalous event detection [J].IEEE Transactions on Circuits and Systems for Video Technology,2008,18(11):1544-1554. [30] LI X,HAN J,KIM S,et al.Roam:Rule-and motif-based anomaly detection in massive moving object data sets [C]//Procee-dings of the 2007 SIAM International Conference on Data Mi-ning.Society for Industrial and Applied Mathematics,2007:273-284. [31] LUO D,CHEN P,YANG J,et al.A new classification method for ship trajectories based on AIS data [J].Journal of Marine Science and Engineering,2023,11(9):1646. [32] SYLVESTRE M P,BOULANGER L,et al.traj:Clustering offunctional data based on measures of change:R package version 2.2.1 [EB/OL].Available:https://CRAN.R-project.org/package=traj. [33] TANG H,HUANG J,LIN H,et al.The global burden and biomarkers of cardiovascular disease attributable to ambient particu-late matter pollution [J].Journal of Translational Medicine,2025,23(1):359. [34] MORENO-TORRES J G,RAEDER T,ALAIZ-RODRÍGUEZR,et al.A unifying view on dataset shift in classification [J].Pattern Recognition,2012,45(1):521-530. [35] KOH P W,SAGAWA S,MARKLUND H,et al.Wilds:Abenchmark of in-the-wild distribution shifts [C]//International Conference on Machine Learning.PMLR,2021:5637-5664. [36] BREIMAN L.Random forests [J].Machine Learning,2001,45:5-32. [37] GENEUR R,POGGI J M,TULEAU-MALOT C.Variable se-lection using random forests [J].Pattern Recognition Letters,2010,31(14):2225-2236. [38] DOBSON A J,BARNETT A G.An introduction to generalized linear models[M].Chapman and Hall/CRC,2018. [39] PELLEG D,MOORE A.X-means:Extending K-means with Efficient Estimation of the Number of Clusters [C]//Proceedings of the Seventeenth International Conference on Machine Learning(ICML 2000).San Francisco:Morgan Kaufmann,2000:727-734. [40] GENOLINI C,FALISSARD B.KmL:k-means for longitudinaldata [J].Computational Statistics,2010,25(2):317-328. [41] WIJAYA Y A,KURNIADY D A,SETYANTO E,et al.Davies-Bouldin index algorithm for optimizing clustering case studies map school facilities [J].TEM J,2021,10(3):1099-1103. [42] DAU H A,BAGNALL A,KAMGAR K,et al.The UCR time series archive [J].IEEE/CAA Journal of Automatica Sinica,2019,6(6):1293-1305. [43] ALOIA M S,GOODWIN M S,VELICER W F,et al.Time series analysis of treatment adherence patterns in individuals with obstructive sleep apnea [J].Annals of Behavioral Medicine,2008,36(1):44-53. [44] XIE J,GIRSHICK R,FARHADI A.Unsupervised deep embedding for clustering analysis [C]//International Conference on Machine Learning.PMLR,2016:478-487. [45] HAN J W,KAMBER M,PEI J.Data Mining:Concepts andTechniques [M].Beijing:China Machine Press,2012:236-240. [46] STEINLEY D.Properties of the Hubert-Arabie adjusted Rand index [J].Psychological Methods,2004,9(3):386-396. |
| [1] | JIANG Yakun, LIN Xu. Intrusion Detection Method for Power Monitoring System Based on Multi-source Network Data [J]. Computer Science, 2025, 52(11A): 241200157-7. |
| [2] | QIAN Zekai, DING Xiaoou, SUN Zhe, WANG Hongzhi, ZHANG Yan. Intelligent Evidence Set Selection Method for Diverse Data Cleaning Tasks [J]. Computer Science, 2024, 51(8): 124-132. |
| [3] | PENG Bo, LI Yaodong, GONG Xianfu. Improved K-means Photovoltaic Energy Data Cleaning Method Based on Autoencoder [J]. Computer Science, 2024, 51(6A): 230700070-5. |
| [4] | WANG Chundong, DU Yingqi, MO Xiuliang, FU Haoran. Enhanced Federated Learning Frameworks Based on CutMix [J]. Computer Science, 2023, 50(11A): 220800021-8. |
| [5] | LIANG Haowei, WANG Shi, CAO Cungen. Study on Short Text Classification with Imperfect Labels [J]. Computer Science, 2023, 50(1): 185-193. |
| [6] | WANG Jun, WANG Xiu-lai, PANG Wei, ZHAO Hong-fei. Research on Big Data Governance for Science and Technology Forecast [J]. Computer Science, 2021, 48(9): 36-42. |
| [7] | LIU Zhen-peng, SU Nan, QIN Yi-wen, LU Jia-huan, LI Xiao-fei. FS-CRF:Outlier Detection Model Based on Feature Segmentation and Cascaded Random Forest [J]. Computer Science, 2020, 47(8): 185-188. |
| [8] | XU He, WU Hao, LI Peng. Design of Temporal-spatial Data Processing Algorithm for IoT [J]. Computer Science, 2020, 47(11): 310-315. |
| [9] | LIU Jin-shuo, LIU Bi-wei, ZHANG Mi, LIU Qing. Fault Prediction of Power Metering Equipment Based on GBDT [J]. Computer Science, 2019, 46(6A): 392-396. |
| [10] | WANG Xiao-xia, SUN De-cai. Q-sample-based Local Similarity Join Parallel Algorithm [J]. Computer Science, 2019, 46(12): 38-44. |
| [11] | SUN De-cai and WANG Xiao-xia. MapReduce Based Similarity Self-join Algorithm for Big Dataset [J]. Computer Science, 2017, 44(5): 20-25. |
| [12] | GU Yun-hua, GAO Bao, ZHANG Jun-yong and DU Jie. RFID Data Cleaning Algorithm Based on Tag Velocity and Sliding Sub-window [J]. Computer Science, 2015, 42(1): 144-148. |
| [13] | WANG Wan-liang,GU Xi-ren and ZHAO Yan-wei. RFID Uncertain Data Cleaning Algorithm Based on Dynamic Tags [J]. Computer Science, 2014, 41(Z6): 383-386. |
| [14] | CHEN Jing-yun,ZHOU Liang and DING Qiu-lin. Cleaning Method Research of RFID Data Stream Based on Improved Kalman Filter [J]. Computer Science, 2014, 41(3): 202-204. |
| [15] | . Data Cleaning and its General System Framework [J]. Computer Science, 2012, 39(Z11): 207-211. |
|
||