Automated Feature Engineering for Machine Learning: Techniques and Applications

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Prof. Kumar Sunder

Abstract

Feature engineering is critical in building effective machine learning models. This paper explores automated feature engineering techniques, focusing on their application across various domains. We compare manual and automated approaches, demonstrating how automation enhances model accuracy and reduces development time. The study underscores the potential of automated feature engineering in accelerating the machine learning pipeline.

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How to Cite
Automated Feature Engineering for Machine Learning: Techniques and Applications. (2023). Research-Gate Journal, 9(9). https://research-gate.in/index.php/Rgj/article/view/30
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How to Cite

Automated Feature Engineering for Machine Learning: Techniques and Applications. (2023). Research-Gate Journal, 9(9). https://research-gate.in/index.php/Rgj/article/view/30

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