Deconvolution of Mixing Time Series on a Graph

Abstract

In many applications we are interested in making inference on latent time series from indirect measurements, which are often low-dimensional projections resulting from mixing or aggregation. Positron emission tomography, super-resolution, and network traffic monitoring are some examples. Inference in such settings requires solving a sequence of ill-posed inverse problems, yt = Axt , where the projection mechanism provides information on A. We consider problems in which A specifies mixing on a graph of times series that are bursty and sparse. We develop a multilevel state-space model for mixing times series and an efficient approach to inference. A simple model is used to calibrate regularization parameters that lead to efficient inference in the multilevel state-space model. We apply this method to the problem of estimating point-to-point traffic flows on a network from aggregate measurements. Our solution outperforms existing methods for this problem, and our two-stage approach suggests an efficient inference strategy for multilevel models of multivariate time series.

Cite

Text

Blocker and Airoldi. "Deconvolution of Mixing Time Series on a Graph." Conference on Uncertainty in Artificial Intelligence, 2011.

Markdown

[Blocker and Airoldi. "Deconvolution of Mixing Time Series on a Graph." Conference on Uncertainty in Artificial Intelligence, 2011.](https://mlanthology.org/uai/2011/blocker2011uai-deconvolution/)

BibTeX

@inproceedings{blocker2011uai-deconvolution,
  title     = {{Deconvolution of Mixing Time Series on a Graph}},
  author    = {Blocker, Alexander W. and Airoldi, Edoardo M.},
  booktitle = {Conference on Uncertainty in Artificial Intelligence},
  year      = {2011},
  pages     = {51-60},
  url       = {https://mlanthology.org/uai/2011/blocker2011uai-deconvolution/}
}