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Scalable Online Change Detection for High-dimensional Data Streams

We discuss a subsampling scheme on data streams to approximate the Maximum Mean Discrepancy of data in buckets of exponential size in an efficient manner. In particular, we introduce

We finish by presenting open questions and discuss limitations of MMDAW. Afterwards, we aim at having an open discussion about obtaining error bounds on the quality of the estimate.

Paper: Kalinke, F., Heyden, M., Fouché, E., & Böhm, K. (2022). Scalable Online Change Detection for High-dimensional Data Streams. arXiv preprint arXiv:2205.12706.