Data Preprocessing Methods - Strategies and Best Practices: Investigating strategies and best practices for preprocessing data, including cleaning, transformation, and feature engineering

Authors

  • Dr. Byung-Woo Kim Professor of Automotive Engineering, Korea University, South Korea Author

Keywords:

feature scaling, outliers

Abstract

Data preprocessing is a crucial step in the data mining and machine learning pipeline, involving the transformation of raw data into a format suitable for analysis. This paper provides a comprehensive review of strategies and best practices for data preprocessing, focusing on cleaning, transformation, and feature engineering techniques. We begin by discussing the importance of data preprocessing and its impact on the quality of machine learning models. Next, we delve into various data cleaning techniques, including handling missing values, dealing with outliers, and addressing inconsistencies in the data. We then explore different data transformation methods, such as normalization, standardization, and encoding categorical variables. Finally, we examine feature engineering approaches to create new features from existing ones, including techniques like binning, one-hot encoding, and feature scaling. Throughout the paper, we highlight the importance of each preprocessing step and provide practical recommendations for implementing these techniques effectively.

Downloads

Download data is not yet available.

References

Sadhu, Ashok Kumar Reddy. "Enhancing Healthcare Data Security and User Convenience: An Exploration of Integrated Single Sign-On (SSO) and OAuth for Secure Patient Data Access within AWS GovCloud Environments." Hong Kong Journal of AI and Medicine 3.1 (2023): 100-116.

Tatineni, Sumanth. "Applying DevOps Practices for Quality and Reliability Improvement in Cloud-Based Systems." Technix international journal for engineering research (TIJER)10.11 (2023): 374-380.

Perumalsamy, Jegatheeswari, Manish Tomar, and Selvakumar Venkatasubbu. "Advanced Analytics in Actuarial Science: Leveraging Data for Innovative Product Development in Insurance." Journal of Science & Technology 4.3 (2023): 36-72.

Selvaraj, Amsa, Munivel Devan, and Kumaran Thirunavukkarasu. "AI-Driven Approaches for Test Data Generation in FinTech Applications: Enhancing Software Quality and Reliability." Journal of Artificial Intelligence Research and Applications 4.1 (2024): 397-429.

Katari, Monish, Selvakumar Venkatasubbu, and Gowrisankar Krishnamoorthy. "Integration of Artificial Intelligence for Real-Time Fault Detection in Semiconductor Packaging." Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online) 2.3 (2023): 473-495.

Tatineni, Sumanth, and Naga Vikas Chakilam. "Integrating Artificial Intelligence with DevOps for Intelligent Infrastructure Management: Optimizing Resource Allocation and Performance in Cloud-Native Applications." Journal of Bioinformatics and Artificial Intelligence 4.1 (2024): 109-142.

Prakash, Sanjeev, et al. "Achieving regulatory compliance in cloud computing through ML." AIJMR-Advanced International Journal of Multidisciplinary Research 2.2 (2024).

Reddy, Sai Ganesh, et al. "Harnessing the Power of Generative Artificial Intelligence for Dynamic Content Personalization in Customer Relationship Management Systems: A Data-Driven Framework for Optimizing Customer Engagement and Experience." Journal of AI-Assisted Scientific Discovery 3.2 (2023): 379-395.

Shanmugam, Lavanya, Ravish Tillu, and Suhas Jangoan. "Privacy-Preserving AI/ML Application Architectures: Techniques, Trade-offs, and Case Studies." Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online) 2.2 (2023): 398-420.

Perumalsamy, Jegatheeswari, Manish Tomar, and Selvakumar Venkatasubbu. "Advanced Analytics in Actuarial Science: Leveraging Data for Innovative Product Development in Insurance." Journal of Science & Technology 4.3 (2023): 36-72.

Downloads

Published

11-05-2024

How to Cite

[1]
Dr. Byung-Woo Kim, “Data Preprocessing Methods - Strategies and Best Practices: Investigating strategies and best practices for preprocessing data, including cleaning, transformation, and feature engineering”, Australian Journal of Machine Learning Research & Applications, vol. 4, no. 1, pp. 208–214, May 2024, Accessed: Nov. 23, 2024. [Online]. Available: https://sydneyacademics.com/index.php/ajmlra/article/view/97

Similar Articles

11-19 of 19

You may also start an advanced similarity search for this article.