Feature Selection in High-Dimensional Data: Enhancing Model Interpretability, Efficiency in Complex Domains
In high-dimensional data, the abundance of features often introduces noise, complexity, and redundancy, posing significant challenges to machine learning models. Feature selection plays a crucial role in mitigating these issues by identifying the most relevant features, thereby enhancing model interpretability and efficiency.
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