Importance of Cross-Validation
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Cross-validation is a critical technique in business analytics, particularly in the field of machine learning. It is used to assess the performance of predictive models by partitioning data into subsets, allowing for more reliable evaluation of model accuracy and generalization. This article explores the significance of cross-validation, its methodologies, applications, and best practices in the realm of business analytics. Overview of Cross-Validation Cross-validation is a statistical method used to estimate the skill of machine learning models. It is particularly useful in scenarios where the amount of data is limited, and it helps in mitigating problems such as overfitting. The primary objective of cross-validation is to ensure that a model performs well on unseen data, which is crucial for its deployment in real-world applications. Types of Cross-Validation There are several types of cross-validation techniques, each with its ...