Evolving Large-Scale Data Stream Analytics based on Scalable PANFIS
Mahardhika Pratama, Choiru Za'in, Eric Pardede

TL;DR
This paper introduces a scalable, evolving fuzzy inference system framework for large-scale data stream analytics, combining active learning and model fusion to improve speed and accuracy in non-stationary environments.
Contribution
It proposes a novel distributed framework, Scalable PANFIS, that effectively handles evolving large-scale data streams using active learning and model fusion techniques.
Findings
Scalable PANFIS with active learning doubles training speed.
The framework achieves higher accuracy than Spark-based algorithms.
Training time outperforms existing Spark algorithms on benchmark datasets.
Abstract
Many distributed machine learning frameworks have recently been built to speed up the large-scale data learning process. However, most distributed machine learning used in these frameworks still uses an offline algorithm model which cannot cope with the data stream problems. In fact, large-scale data are mostly generated by the non-stationary data stream where its pattern evolves over time. To address this problem, we propose a novel Evolving Large-scale Data Stream Analytics framework based on a Scalable Parsimonious Network based on Fuzzy Inference System (Scalable PANFIS), where the PANFIS evolving algorithm is distributed over the worker nodes in the cloud to learn large-scale data stream. Scalable PANFIS framework incorporates the active learning (AL) strategy and two model fusion methods. The AL accelerates the distributed learning process to generate an initial evolving…
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Taxonomy
TopicsData Stream Mining Techniques · Neural Networks and Applications · Machine Learning and Data Classification
