4.5 Article

Online Updating of Statistical Inference in the Big Data Setting

Journal

TECHNOMETRICS
Volume 58, Issue 3, Pages 393-403

Publisher

AMER STATISTICAL ASSOC
DOI: 10.1080/00401706.2016.1142900

Keywords

Data compression; Data streams; Estimating equations; Linear regression models

Funding

  1. NSF DMS grant [1521730]
  2. NIH [GM70335, P01CA142538]
  3. NSF SCREMS grant [0723557]
  4. Division Of Mathematical Sciences
  5. Direct For Mathematical & Physical Scien [0723557] Funding Source: National Science Foundation
  6. Division Of Mathematical Sciences
  7. Direct For Mathematical & Physical Scien [1521730] Funding Source: National Science Foundation

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We present statistical methods for big data arising from online analytical processing, where large amounts of data arrive in streams and require fast analysis without storage/access to the historical data. In particular, we develop iterative estimating algorithms and statistical inferences for linear models and estimating equations that update as new data arrive. These algorithms are computationally efficient, minimally storage-intensive, and allow for possible rank deficiencies in the subset design matrices due to rare-event covariates. Within the linear model setting, the proposed online-updating framework leads to predictive residual tests that can be used to assess the goodness of fit of the hypothesized model. We also propose a new online-updating estimator under the estimating equation setting. Theoretical properties of the goodness-of-fit tests and proposed estimators are examined in detail. In simulation studies and real data applications, our estimator compares favorably with competing approaches under the estimating equation setting. Supplementary materials for this article are available online.

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