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UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING

Year 2024, Volume: 11 Issue: 2, 83 - 93, 31.12.2024

Abstract

Purpose- In the modern information age, organizations face an overwhelming amount of textual data from various sources. The true potential of this data is realized when transformed into actionable knowledge. This study aims to create a text-based model for information classification and knowledge extraction in industrial engineering.
Methodology- The research follows a descriptive-survey approach, employing text-mining techniques to analyze a comprehensive dataset of scientific research articles from the Science Direct database between 2015 and 2020. Data preprocessing was performed using Excel, while analysis was conducted with MATLAB software. The proposed model employs the nearest neighbor and support vector machine algorithms for robust text classification and knowledge extraction.
Findings- The study demonstrates the model's effectiveness in systematically extracting valuable knowledge from diverse textual sources. It shows that this approach can facilitate information extraction without compromising data integrity, thereby contributing to knowledge management practices in industrial engineering.
Conclusion- The text-based model developed in this study provides a reliable method for extracting knowledge from extensive textual datasets. The approach can be applied to other fields beyond industrial engineering, indicating its broader relevance and utility in the contemporary information age.

References

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There are 17 citations in total.

Details

Primary Language English
Subjects Labor Economics, Microeconomics (Other), Business Administration
Journal Section Articles
Authors

Fereidoon Bidollahkhany 0009-0004-3064-9289

Mehdi Basiri 0000-0002-2519-4679

Publication Date December 31, 2024
Submission Date April 25, 2024
Acceptance Date December 15, 2024
Published in Issue Year 2024 Volume: 11 Issue: 2

Cite

APA Bidollahkhany, F., & Basiri, M. (2024). UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING. Research Journal of Business and Management, 11(2), 83-93. https://doi.org/10.17261/Pressacademia.2024.1948
AMA Bidollahkhany F, Basiri M. UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING. RJBM. December 2024;11(2):83-93. doi:10.17261/Pressacademia.2024.1948
Chicago Bidollahkhany, Fereidoon, and Mehdi Basiri. “UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING”. Research Journal of Business and Management 11, no. 2 (December 2024): 83-93. https://doi.org/10.17261/Pressacademia.2024.1948.
EndNote Bidollahkhany F, Basiri M (December 1, 2024) UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING. Research Journal of Business and Management 11 2 83–93.
IEEE F. Bidollahkhany and M. Basiri, “UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING”, RJBM, vol. 11, no. 2, pp. 83–93, 2024, doi: 10.17261/Pressacademia.2024.1948.
ISNAD Bidollahkhany, Fereidoon - Basiri, Mehdi. “UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING”. Research Journal of Business and Management 11/2 (December 2024), 83-93. https://doi.org/10.17261/Pressacademia.2024.1948.
JAMA Bidollahkhany F, Basiri M. UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING. RJBM. 2024;11:83–93.
MLA Bidollahkhany, Fereidoon and Mehdi Basiri. “UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING”. Research Journal of Business and Management, vol. 11, no. 2, 2024, pp. 83-93, doi:10.17261/Pressacademia.2024.1948.
Vancouver Bidollahkhany F, Basiri M. UTILIZING TEXT MINING TO EXTRACT KNOWLEDGE AND CLASSIFY INFORMATION IN INDUSTRIAL ENGINEERING. RJBM. 2024;11(2):83-9.

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