Modeling Information Blackouts in Missing Not-At-Random Time Series
A State-Space Approach Using Missingness as Signal
DOI:
https://doi.org/10.31224/6180Keywords:
missing not at random, MNAR, missing data, sensor blackouts, traffic sensors, time series, state-space models, linear dynamical systems, Kalman filter, RTS smoother, expectation-maximization, imputation, forecasting, probabilistic modeling, transportation systems, Allan MaAbstract
Traffic sensor networks frequently experience “blackouts,” i.e., contiguous intervals of missing observations. This preprint evaluates two tasks: (1) blackout imputation (reconstructing values inside blackout windows) and (2) post-blackout forecasting at horizons +1, +3, and +6 steps on a 5-minute grid. We compare a MAR linear dynamical system (Kalman filtering with RTS smoothing) against an MNAR extension that treats the missingness mask as an informative observation channel via a logistic missingness model conditioned on the latent state. The repository includes code, evaluation-window manifests, and notebooks for experiments on the Seattle Loop dataset and the METR-LA dataset.
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- 2026-01-06 (2)
- 2026-01-05 (1)
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Copyright (c) 2026 Aman Sunesh, Allan Ma, Siddarth Nilol

This work is licensed under a Creative Commons Attribution 4.0 International License.