Online Partitioned Local Depth for semi-supervised applications
John D. Foley
Justin T. Lee
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Abstract
We introduce an extension of the partitioned local depth (PaLD) algorithm that is adapted to online applications such as semi-supervised prediction. The new algorithm we present, online PaLD, is well-suited to situations where it is a possible to pre-compute a cohesion network from a reference dataset. After steps to construct a queryable data structure, online PaLD can extend the cohesion network to a new data point in time. Our approach complements previous speed up approaches based on approximation and parallelism. For illustrations, we present applications to online anomaly detection and semi-supervised classification for health-care datasets.
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