Scalable Teacher Forcing Network for Semi-Supervised Large Scale Data Streams
Abstract
The large-scale data stream problem refers to high-speed information flow which cannot be processed in scalable manner under a traditional computing platform. This problem also imposes expensive labelling cost making the deployment of fully supervised algorithms unfeasible. On the other hand, the problem of semi-supervised large-scale data streams is little explored in the literature because most works are designed in the traditional single-node computing environments while also being fully supervised approaches. This paper offers Weakly Supervised Scalable Teacher Forcing Network (WeScatterNet) to cope with the scarcity of labelled samples and the large-scale data streams simultaneously. WeScatterNet is crafted under distributed computing platform of Apache Spark with a data-free model fusion strategy for model compression after parallel computing stage. It features an open network structure to address the global and local drift problems while integrating a data augmentation, annotation and auto-correction () method for handling partially labelled data streams. The performance of WeScatterNet is numerically evaluated in the six large-scale data stream problems with only label proportions. It shows highly competitive performance even if compared with fully supervised learners with label proportions.
Cite
@article{arxiv.2107.02943,
title = {Scalable Teacher Forcing Network for Semi-Supervised Large Scale Data Streams},
author = {Mahardhika Pratama and Choiru Za'in and Edwin Lughofer and Eric Pardede and Dwi A. P. Rahayu},
journal= {arXiv preprint arXiv:2107.02943},
year = {2021}
}
Comments
This paper has been accepted for publication in Information Sciences