• DocumentCode
    1536333
  • Title

    A Fast Algorithm for Robust Mixtures in the Presence of Measurement Errors

  • Author

    Sun, Jianyong ; Kabán, Ata

  • Author_Institution
    Center for Plant Integrative Biol., Univ. of Nottingham, Sutton Bonington, UK
  • Volume
    21
  • Issue
    8
  • fYear
    2010
  • Firstpage
    1206
  • Lastpage
    1220
  • Abstract
    In experimental and observational sciences, detecting atypical, peculiar data from large sets of measurements has the potential of highlighting candidates of interesting new types of objects that deserve more detailed domain-specific followup study. However, measurement data is nearly never free of measurement errors. These errors can generate false outliers that are not truly interesting. Although many approaches exist for finding outliers, they have no means to tell to what extent the peculiarity is not simply due to measurement errors. To address this issue, we have developed a model-based approach to infer genuine outliers from multivariate data sets when measurement error information is available. This is based on a probabilistic mixture of hierarchical density models, in which parameter estimation is made feasible by a tree-structured variational expectation-maximization algorithm. Here, we further develop an algorithmic enhancement to address the scalability of this approach, in order to make it applicable to large data sets, via a K-dimensional-tree based partitioning of the variational posterior assignments. This creates a non-trivial tradeoff between a more detailed noise model to enhance the detection accuracy, and the coarsened posterior representation to obtain computational speedup. Hence, we conduct extensive experimental validation to study the accuracy/speed tradeoffs achievable in a variety of data conditions. We find that, at low-to-moderate error levels, a speedup factor that is at least linear in the number of data points can be achieved without significantly sacrificing the detection accuracy. The benefits of including measurement error information into the modeling is evident in all situations, and the gain roughly recovers the loss incurred by the speedup procedure in large error conditions. We analyze and discuss in detail the characteristics of our algorithm based on results obtained on appropriately designed synthetic data experimen- - ts, and we also demonstrate its working in a real application example.
  • Keywords
    data mining; expectation-maximisation algorithm; probability; trees (mathematics); K-dimensional-tree based partitioning; hierarchical density model; measurement error; parameter estimation; probabilistic mixture; robust mixture; tree-structured variational expectation-maximization; Algorithm design and analysis; Astrophysics; Biology computing; Data mining; Extraterrestrial measurements; Measurement errors; Object detection; Partitioning algorithms; Robustness; Sun; K-dimensional (KD)-tree; measurement errors; outlier detection; robust mixture modeling; variational expectation-maximization (EM) algorithm; Algorithms; Animals; Artifacts; Computer Simulation; Data Mining; Humans; Models, Statistical; Normal Distribution; Time Factors;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2010.2048219
  • Filename
    5510186