Mathematical Biology
Feature extraction is the process of transforming raw data into a set of relevant attributes or features that can be effectively used for machine learning algorithms. This technique aims to reduce the complexity of data while retaining essential information that improves the performance of models, making it crucial in fields like mathematical biology where large datasets are common. By identifying significant patterns or characteristics from biological data, feature extraction enables better predictions and insights.
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