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AI without borders: The rise of cross-disciplinary machine learning
0
Zitationen
7
Autoren
2026
Jahr
Abstract
This literature review thoroughly analyzes Machine Learning (ML) algorithms, their applications in many fields, current developments, and interdisciplinary viewpoints. An in-depth analysis of academic literature demonstrates the significant influence of machine learning on research, industry, and society. It effectively performs several tasks, including predictive modeling, image recognition, natural language processing, and autonomous systems. Although machine learning has great potential to transform decision-making and foster innovation, it faces challenges such as data accuracy and bias, model explainability, scalability, and ethical concerns that require careful study. Future research should focus on multidisciplinary cooperation, transparent governance frameworks, and responsible deployment of AI to enable equitable and ethical usage of ML technology. It is crucial to explore new trends like federated learning, quantum machine learning, human-centric ML, and advancements in explainable and interpretable ML models. These efforts are essential for utilizing ML to create a positive societal impact and promote innovation in various fields.
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