Corpus ID: 3344169

Online Machine Learning in Big Data Streams

@article{Benczr2018OnlineML,
  title={Online Machine Learning in Big Data Streams},
  author={A. Bencz{\'u}r and L. Kocsis and R{\'o}bert P{\'a}lovics},
  journal={ArXiv},
  year={2018},
  volume={abs/1802.05872}
}
The area of online machine learning in big data streams covers algorithms that are (1) distributed and (2) work from data streams with only a limited possibility to store past data. The first requirement mostly concerns software architectures and efficient algorithms. The second one also imposes nontrivial theoretical restrictions on the modeling methods: In the data stream model, older data is no longer available to revise earlier suboptimal modeling decisions as the fresh data arrives. In… Expand
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