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2 Best Machine Learning Algorithms with Overfitting Risk Cons

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Algorithms with overfitting risk tend to memorize training data rather than learning generalizable patterns, leading to poor performance on new data. Machine learning algorithms with overfitting risk cons demonstrate excessive adaptation to training data, capturing noise and specific details rather than underlying patterns, which results in poor generalization capabilities and reduced performance when applied to new, unseen datasets.
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