2022
DOI: 10.48550/arxiv.2205.07871
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Mondrian Forest for Data Stream Classification Under Memory Constraints

Abstract: Supervised learning algorithms generally assume the availability of enough memory to store their data model during the training and test phases. However, in the Internet of Things, this assumption is unrealistic when data comes in the form of infinite data streams, or when learning algorithms are deployed on devices with reduced amounts of memory. In this paper, we adapt the online Mondrian forest classification algorithm to work with memory constraints on data streams. In particular, we design five out-of-mem… Show more

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