2021
DOI: 10.1214/21-ejs1872
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Crawling subsampling for multivariate spatial autoregression model in large-scale networks

Abstract: In network data analysis, multivariate spatial autoregression (MSAR) models may be used to analyze the autocorrelation among multiple responses. With large-scale networks, the estimation for MSAR on the entire network is computationally expensive. In this case, the subsampling method could be adopted. This approach selects a sample of nodes and then uses the estimate based on the sample to approximate the estimate on the full data. However, traditional sampling methods cannot obtain unbiased parameter estimate… Show more

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Cited by 2 publications
(2 citation statements)
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“…Particularly, the network effect β 1 reflects the influence of connected nodes through their averages at time t − 1, and the momentum effect β 2 quantifies the autoregressive effects from the same node. The NAR model and its variants have been applied to a wide range of fields, such as social behavior studies (Sojourner, 2013;Liu et al, 2017;Zhu et al, 2018), financial risk management (Härdle et al, 2016;Zou et al, 2017), spatial data modeling (Lee and Yu, 2009;Shi and Lee, 2017), among others.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Particularly, the network effect β 1 reflects the influence of connected nodes through their averages at time t − 1, and the momentum effect β 2 quantifies the autoregressive effects from the same node. The NAR model and its variants have been applied to a wide range of fields, such as social behavior studies (Sojourner, 2013;Liu et al, 2017;Zhu et al, 2018), financial risk management (Härdle et al, 2016;Zou et al, 2017), spatial data modeling (Lee and Yu, 2009;Shi and Lee, 2017), among others.…”
Section: Introductionmentioning
confidence: 99%
“…and Sojourner (2013); Liu et al (2017); Zhu et al (2018) consider the multivariate responses. However, previous researches do not fully address two important issues that arise commonly in real applications, namely, heterogeneous network effect and unknown cross-sectional dependence.…”
Section: Introductionmentioning
confidence: 99%