Efficient Machine Learning for Big Data: A Review
O. Y. Al-Jarrah, P. D. Yoo, S Muhaidat, G. K. Karagiannidis, and K., Taha

TL;DR
This review discusses advances in machine learning techniques optimized for large-scale data, focusing on reducing computational costs while maintaining accuracy and stability in data-intensive applications.
Contribution
It introduces new algorithmic approaches that minimize memory and processing requirements without sacrificing predictive performance.
Findings
New algorithms reduce computational costs
Techniques maintain or improve accuracy
Focus on scalable, efficient models
Abstract
With the emerging technologies and all associated devices, it is predicted that massive amount of data will be created in the next few years, in fact, as much as 90% of current data were created in the last couple of years,a trend that will continue for the foreseeable future. Sustainable computing studies the process by which computer engineer/scientist designs computers and associated subsystems efficiently and effectively with minimal impact on the environment. However, current intelligent machine-learning systems are performance driven, the focus is on the predictive/classification accuracy, based on known properties learned from the training samples. For instance, most machine-learning-based nonparametric models are known to require high computational cost in order to find the global optima. With the learning task in a large dataset, the number of hidden nodes within the network…
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Taxonomy
TopicsMachine Learning and Data Classification · Neural Networks and Applications · Machine Learning and ELM
