Adaptive Learning Algorithms for Dynamic Environments: A Study on Real-Time Model Adaptation
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Abstract
Conventional machine learning models frequently fail to provide optimal results in ever-changing dynamic settings due to constantly shifting data distributions and underlying circumstances. Autonomous systems, financial markets, and tailored recommendations are just a few areas that have found great success using adaptive learning algorithms, which are able to modify models in real-time to changing data patterns. an exhaustive analysis of RL-based, online-learning, and other forms of adaptive learning that enable ML models to readily adapt to novel contexts without requiring initial training. From anomaly detection and autonomous navigation to real-time prediction, we test these algorithms in a variety of dynamic settings, comparing their accuracy, stability, and computational economy. In dynamic circumstances, our results show that adaptive learning models perform better than static models, with better decision-making abilities and faster response times. the necessity of ongoing model adaption in dynamic contexts, highlighting the practicality of adaptive algorithms.
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