Garbage In, Garbage Out: a Case Study on Defective Product Prediction in Manufacturing

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2023

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Institute of Electrical and Electronics Engineers Inc.

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Abstract

Despite their potential business value and invest-ments, data science projects often fail owing to a lack of preparedness, implementation challenges, and poor data quality. This study aimed to develop a machine learning model for predicting defective products in the dyeing process within the manufacturing domain. However, inadequate importance given to data by the involved factory, insufficient data quality, and the lack of the necessary technical infrastructure for data science projects have hindered attaining desired results. This study emphasizes to academic researchers and industry experts the significance of data quality and technical infrastructure, highlights how these deficiencies can impact the success of a data science project, and provides several recommendations. © 2023 IEEE.

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data quality, data science, imbalanced data, machine learning, manufacturing

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UBMK 2023 - Proceedings: 8th International Conference on Computer Science and Engineering -- 8th International Conference on Computer Science and Engineering, UBMK 2023 -- 13 September 2023 through 15 September 2023 -- Burdur -- 193873

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282

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287
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