Vai trò của SVM trong việc tối ưu hóa các mô hình dự đoán

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SVM plays a crucial role in the realm of machine learning, particularly in optimizing prediction models for enhanced accuracy and generalization. This essay delves into the significance of SVM, exploring its mechanisms, advantages, limitations, and real-world applications. <br/ > <br/ >In conclusion, SVM stands as a powerful tool for optimizing prediction models, leveraging its ability to find optimal hyperplanes and maximize margins. Its effectiveness in high-dimensional spaces, memory efficiency, and versatility make it a valuable asset in various fields. However, it is essential to consider its computational cost and sensitivity to kernel selection. Despite these limitations, SVM's ability to enhance prediction accuracy and its wide-ranging applications solidify its importance in the ever-evolving landscape of machine learning. <br/ >