2022
DOI: 10.48550/arxiv.2205.12706
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Scalable Online Change Detection for High-dimensional Data Streams

Abstract: Detecting changes in data streams is a core objective in their analysis and has applications in, say, predictive maintenance, fraud detection, and medicine. A principled approach to detect changes is to compare distributions observed within the stream to each other. However, data streams often are high-dimensional, and changes can be complex, e.g., only manifest themselves in higher moments. The streaming setting also imposes heavy memory and computation restrictions. We propose an algorithm, Maximum Mean Disc… Show more

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