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Adaptive Robust Local Online Density Estimation for Streaming Data.
Chen, Zhong; Fang, Zhide; Sheng, Victor; Zhao, Jiabin; Fan, Wei; Edwards, Andrea; Zhang, Kun.
Affiliation
  • Chen Z; Department of Computer Science, Xavier University of Louisiana, New Orleans LA, USA.
  • Fang Z; Biostatistics, School of Public Health, LSU Health Sciences Center, New Orleans LA, USA.
  • Sheng V; Department of Computer Science, Texas Tech University, Lubbock TX, USA.
  • Zhao J; Cisco Services Technology Group, San Jose CA, USA.
  • Fan W; Tencent Medical AI Lab, Palo Alto CA, USA.
  • Edwards A; Department of Computer Science, Xavier University of Louisiana, New Orleans LA, USA.
  • Zhang K; Department of Computer Science, Xavier University of Louisiana, New Orleans LA, USA.
Int J Mach Learn Cybern ; 12(6): 1803-1824, 2021 Jun.
Article in En | MEDLINE | ID: mdl-34149955
Accurate online density estimation is crucial to numerous applications that are prevalent with streaming data. Existing online approaches for density estimation somewhat lack prompt adaptability and robustness when facing concept-drifting and noisy streaming data, resulting in delayed or even deteriorated approximations. To alleviate this issue, in this work, we first propose an adaptive local online kernel density estimator (ALoKDE) for real-time density estimation on data streams. ALoKDE consists of two tightly integrated strategies: (1) a statistical test for concept drift detection and (2) an adaptive weighted local online density estimation when a drift does occur. Specifically, using a weighted form, ALoKDE seeks to provide an unbiased estimation by factoring in the statistical hallmarks of the latest learned distribution and any potential distributional changes that could be introduced by each incoming instance. A robust variant of ALoKDE, i.e., R-ALoKDE, is further developed to effectively handle data streams with varied types/levels of noise. Moreover, we analyze the asymptotic properties of ALoKDE and R-ALoKDE, and also derive their theoretical error bounds regarding bias, variance, MSE and MISE. Extensive comparative studies on various artificial and real-world (noisy) streaming data demonstrate the efficacies of ALoKDE and R-ALoKDE in online density estimation and real-time classification (with noise).
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Int J Mach Learn Cybern Year: 2021 Document type: Article Affiliation country: United States Country of publication: Germany

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Int J Mach Learn Cybern Year: 2021 Document type: Article Affiliation country: United States Country of publication: Germany