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New Trends in Machine Learning

Author

Listed:
  • Promise Enyindah

    (University of Port Harcourt, Nigeria)

  • Clement Major Amama

    (University of Port Harcourt, Nigeria)

  • Chigoziri Bobby Marcus

    (University of Port Harcourt, Nigeria)

Abstract

Machine Learning (ML) has shifted from traditional statistical methods to a system-focused field that balances algorithm performance with privacy, interpretability, efficiency, robustness, and governance. This paper offers a concise review of current ML trends, including Federated Learning (FL), Explainable Artificial Intelligence (XAI), Graph Neural Networks (GNN), Self-Supervised Learning (SSL) and Transfer Learning (TL), AutoML/Neural Architecture Search, TinyML/edge deployment, Reinforcement Learning (RL) improvements, multimodal models, and Quantum ML. It relies on a targeted selection of 36 high-impact studies found through structured searches of major databases (2018–2025) and additional sources. The classification of selected works shows a slight preference for systems- and deployment-focused research (20 out of 36) compared to algorithm-centric studies (16 out of 36), and a simple test of proportions suggests a potential imbalance but lacks statistical conclusiveness (p ≈ 0.25). Key concerns from the review include data efficiency (sample-efficient and self-supervised methods), privacy and secure collaboration (federated and cryptographic techniques), interpretability and auditing (XAI and lifecycle tools), hardware-aware efficiency (TinyML, AutoML, and Green AI), and governance (standards and risk management). The paper concludes by highlighting the following future priorities: sample efficiency, interpretable models, robustness by design, Green AI, and operational governance.

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Handle: RePEc:epw:ejai00:v:5:y:2026:i:1:id:1098
DOI: 10.24018/ejai.2025.4.6.1098
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