Low-Rank Methods in Event Detection and Subsampled Point-to-Subspace Proximity Tests
Jakub Marecek, Stathis Maroulis, Vana Kalogeraki, Dimitrios Gunopulos

TL;DR
This paper introduces a low-rank subspace model for event detection in streaming IoT data, handling asynchronous sampling and missing data, with a focus on efficient point-to-subspace distance computation and adaptive updates.
Contribution
It proposes a novel low-rank factorization method with interval uncertainty sets and subsampling for real-time event detection in streaming data.
Findings
Effective detection of abnormal behavior in IoT data
Bounded one-sided error based on subsampling
Successful experimental validation on Dublin induction-loop data
Abstract
Monitoring of streamed data to detect abnormal behaviour (variously known as event detection, anomaly detection, change detection, or outlier detection) underlies many applications of the Internet of Things. There, one often collects data from a variety of sources, with asynchronous sampling, and missing data. In this setting, one can predict abnormal behavior using low-rank techniques. In particular, we assume that normal observations come from a low-rank subspace, prior to being corrupted by a uniformly distributed noise. Correspondingly, we aim to recover a representation of the subspace, and perform event detection by running point-to-subspace distance query for incoming data. In particular, we use a variant of low-rank factorisation, which considers interval uncertainty sets around "known entries", on a suitable flattening of the input data to obtain a low-rank model. On-line, we…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Anomaly Detection Techniques and Applications · Machine Learning and Algorithms
