Quality 4.0: using text mining to reveal trending topics
Quality 4.0: using text mining to reveal trending topics
Índice
Skill set needed for quality professionals to embrace novel approaches, as well as the absence of clearly defined implement ation roadmaps. The use of a powerful and data-oriented technique to explore Quality 4.0 perfectly fits with the essence of this novel concept. In conclusion, through the utilization of a state-of-the-art text mining technique to explore an emergent concept within the realm of Quality and its practical applications, this chapter provides readers with The pursuit of quality and operational excellence is an ongoing journey for organisations seeking sustainable success in today’s dynamic business environment. This chapter explores the latest trends shaping the field of quality management and operational excellence by focusing on Quality 4.0, a concept that embodies the pervasive integration of digital technology into quality management practices. To understand the most prominent topics surrounding Quality 4.0 within the literature spanning from January 2016 to December 2023, this study employs a text mining technique known as Latent Dirichlet Allocation (LDA), which, to the best of the authors’ knowledge, has not been previously utilized for this purpose. The LDA algorithm identified twenty-two distinct topics, which were broadly grouped into four main categories: Historical Aspects, Human Factors, Implementation, Literature Analysis, and Technological Applications. These subjects highlight several facets of this subject, including the uncertainties regarding the invaluable insights to effectively navigate the dynamic landscape of Quality 4.0.
Hermilio Vilarinho is a Researcher at INESC TEC at the Faculty of Engineering (FEUP) of the University of Porto (Portugal). He holds a PhD in Industrial Engineering and Management from FEUP (2023) and a degree in Mechanical Engineering from the Federal University of Bahia, Brazil and Business Administration from the Catholic University of Salvador, Brazil. He has a master’s degree in management and a specialisation in Environmental Management from the Federal University of Bahia. He has worked as an Engineering professional in leading positions in Brazil, USA, Angola and Japan, with emphasis on Quality Management and Project Management. He has also worked as a university professor.
Miguel Rodrigues holds a PhD in Industrial Engineering and Management from FEUP (2024) and a Master degree in Management from Católica Porto Business School. He has been involved with quantitative and qualitative research, with a focus on machine learning forecasts, and is currently following a career as an MLOps engineer.
Henriqueta Nóvoa is an Associate Professor at the Faculty of Engineering (FEUP) of the University of Porto(Portugal). She holds a Ph.D. in Engineering Sciences from FEUP (2000) and a first degree in Electrical Engineering from FEUP. She has worked as a production test engineer at Texas Instruments for 6 years. She has been teaching courses in Quality Management, Statistics and Strategic Planning of Information Systems since 1990. She has been involved in research projects in diverse areas, such as wine industry, construction industry and packaging. She published more than 30 refereed papers in international conferences and scientific journals.
Akhmedova, G. O., Mirolimov, M. M., Vanin, V. V., and Sinyavsky, N. G. (2023a). Environmental quality certification as a vector of sustainable entrepreneurship development in industry 4.0. Proceedings on Engineering Sciences, 5(S2):173–190.
Akhmedova, M. S., Meliksetyan, K. A., Krutilin, A. A., and Boris, O. A. (2023b). The role of quality management in the development of high-tech industrial enterprises in the context of industry 4.0. Proceedings on Engineering Sciences, 5(s2):207–220.
Alzahrani, B., Bahaitham, H., Andejany, M., and Elshennawy, A. (2021). Howready is higher education for quality 4.0 transformation according to the lns research framework? Sustainability, 13(9):5169.
Ammar, M., Haleem, A., Javaid, M., Bahl, S., and Verma, A. S. (2022). Implementing industry 4.0 technologies in self-healing materials and digitally managing the quality of manufacturing. Materials Today: Proceedings, 52:2285– 2294.
Antonino, P. O., Capilla, R., Pelliccione, P., Schnicke, F., Espen, D., Kuhn, T., and Schmid, K. (2022). A Quality 4.0 model for architecting Industry 4.0 systems. Advanced Engineering Informatics, 54:101801.
Antony, J., McDermott, O., and Sony, M. (2022). Quality 4.0 conceptualisation and theoretical understanding: a global exploratory qualitative study. The TQM Journal, 34(5):1169 –1188.
Antony, J., McDermott, O., Sony, M., Toner, A., Bhat, S., Cudney, E. A., and Doulatabadi, M. (2023a). Benefits, challenges, critical success factors and motivations of quality 4.0 –a qualitative global study. Total Quality Management & Business Excellence, 34(7-8):827–846.
Antony, J., Sony, M., McDermott, O., Furterer, S., and Pepper, M. (2023b). How does performance vary between early and late adopters of industry 4.0? a qualitative viewpoint. International Journal of Quality & Reliability Management, 40(1):1–24.
Antony, J., Sony, M., McDermott, O., Jayaraman, R., and Flynn, D. (2023c). An exploration of organizational readiness factors for Quality 4.0: an intercontinental study and future research directions. International Journal of Quality & Reliability Management, 40(2):582–606.
Balouei Jamkhaneh, H., Shahin, A., Parkouhi, S. V., and Shahin, R. (2022). The new concept of quality in the digital era: a human resource empowerment perspective. The TQM Journal, 34(1):125– 144.
Bisgin, H., Liu, Z., Fang, H., Kelly, R., Xu, X., and Tong, W. (2014). A phenome-guided drug repositioning through a latent variable model. BMC bioinformatics, 15:1 –12.
Biswas, S., Bozanic, D., Pamucar, D., and Marinkovic, D. (2023). A spherical fuzzy based decision making framework with einstein aggregation for comparing preparedness of SMEs in quality 4.0. Facta Universitatis, Series: Mechanical Engineering, 21(3):453–478.
Blei, D. M. (2012). Probabilistic topic models. Communications of the ACM, 55(4):77 –84.
Blei, D. M., Ng, A. Y., and Jordan, M. I. (2003). Latent Dirichlet Allocation. Journal of Machine Learning Research, 3(Jan):993–1022.
Bogoviz, A. V., Parakhina, V. N., Morozova, I. A., and Patsyuk, E. V. (2023). Integration of sustainable development goals into the quality management systemof enterprises in industry 4.0. Proceedings on Engineering, 5(S2):191– 206.
Bregonzio, M., Li, J., Gong, S., and Xiang, T. (2010). Discriminativetopicsmodelling for action feature selection and recognition. In BMVC, pages 1–11. Citeseer.
Chen, H., Xie, L., Leung, C.-C., Lu, X., Ma, B., and Li, H. (2016). Modeling latent topics and temporal distance for story segmentation of broadcast news. IEEE/ACM transactions on audio, speech, and language processing, 25(1):112–123.
Dev, N. K., Shankar, R., and Qaiser, F. H. (2020). Industry 4.0 and circular economy: Operational excellence for sustainable reverse supply chain performance. Resources, Conservation and Recycling, 153:104583.
Dias, A. M., Carvalho, A. M., and Sampaio, P. (2022). Quality 4.0: literature review analysis, definition and impacts of the digital transformation process on quality. International Journal of Quality & Reliability Management, 39(6):1312–1335.
Djekic, I., Velebit, B., Pavlic, B., Putnik, P., Sojic Merkulov, D., Bebek Markovinovic, A., and Bursac Kovacevic, D. (2023). Food Quality 4.0: Sustainable food manufacturing for the twenty -first century. Food Engineering Reviews, 15(4):577–608.
Dror, S. (2022). QFD for selecting key success factors in the implementation of quality 4.0. Quality and Reliability Engineering International, 38(6):3216– 3232.
Efimova, A. and Bris, P. (2021). Quality 4.0 for processes and customers. Quality Innovation Prosperity- Kvalita Inovacia Prosperita.
Emblemsvag, J. (2020). On Quality 4.0 in project-based industries. The TQM Journal, 32(4):725–739. Feinerer, I. and Hornik, K. (2023). tm: Text Mining Package. R package version 0.7-11.
Fonseca, L., Amaral, A., and Oliveira, J. (2021). Quality 4.0: the EFQM 2020 model and industry 4.0 relationships and implications. Sustainability, 13(6):3107.
Frick, J., Guha, R., Peryea, T., and Southall, N. T. (2015). Evaluating disease similarity using latent dirichlet allocation. BioRxiv, page 030593.
Garvin, D. A. (1984). What does “Product Quality” really mean? Sloan management review, 25:25–43. Glogovac, M., Ruso, J., and Maricic, M. (2022). ISO 9004 maturity model for quality in industry 4.0.
Total Quality Management & Business Excellence, 33(5 -6):529–547.
Griffiths, T. L. and Steyvers, M. (2004). Finding scientific topics. Proceedings of the National academy of Sciences, 101(suppl 1):5228–5235.
Haleem, A., Javaid, M., Singh, R. P., and Suman, R. (2021). Quality 4.0 technologies to enhance traditional Chinese medicine for overcoming healthcare challenges during covid-19. Digital Chinese Medicine, 4(2):71–80.
Hassoun, A., Jagtap, S., Garcia-Garcia, G., Trollman, H., Pateiro, M., Lorenzo, J. M., Trif, M., Rusu, V., Aadil, R. M., Simat, V., et al. (2023). Food quality 4.0: From traditional approaches to digitalized automated analysis. Journal of Food Engineering, 337:111216.
Hearst, M. (2003). What is text mining. SIMS, UC Berkeley.
Hoffman, M. D., Blei, D. M., and Bach, F. R. (2010). Online learning for Latent Dirichlet Allocation. In Neural Information Processing Systems.
Jamkhaneh, H. B., Jalali, R., Shahin, R., Lima, R. M., Rasouli, E., and Jamali, G. (2022). Analysis and prioritization of Quality 4.0 dimensions and companies’ readiness to adapt to industry 4.0 evolutions through Bayesian best – worst method.
Jelodar, H., Wang, Y., Yuan, C., and Feng, X. (2017). Latent Dirichlet Allocation (LDA) and topic modeling: models, applications, a survey. Multimedia Tools and Applications, 78:15169 – 15211.
Jelodar, H., Wang, Y., Yuan, C., Feng, X., Jiang, X., Li, Y., and Zhao, L. (2019). Latent Dirichlet Allocation (LDA) and topic modeling: models, applications, a survey. Multimedia Tools and Applications, 78:15169–15211.
Karami, A., Lundy, M., Webb, F., and Dwivedi, Y. K. (2020). Twitter and research: A systematic literature review through text mining. IEEE access, 8:67698 –67717.
Karbekova, A. B., Makhkamova, S. G., Inkova, N. A., and Pakhomova, O. K. (2023). Automation based on datasets and ai of corporate accounting and sustainability reporting in quality management in industry 4.0. Proceedings on Engineering Sciences, 5(S2):265 –278.
Li, J., Maiti, A., Springer, M., and Gray, T. (2020). Blockchain for supply chain quality management: challenges and opportunities in context of open manufacturing and industrial internet of things. International Journal of Computer Integrated Manufacturing, 33(12):1321 –1355.
Liu, H., Xu, L., Yang, M., Yan, M., Zhang, X., et al. (2015). Predicting component failures using Latent Dirichlet Allocation. Mathematical Problems in Engineering, 2015.
Maier, D., Waldherr, A., Miltner, P., Wiedemann, G., Niekler, A., Keinert, A., Pfetsch, B., Heyer, G., Reber, U., Häussler, T., Schmid-Petri, H., and Adam, S. (2018). Applying LDA topic modeling in communication research: Toward a valid and reliable methodology. Communication Methods and Measures, 12:118 – 93.
Mtotywa, M. M. (2022). Developing a Quality 4.0 maturity index for improved business operational efficiency and performance. Quality Innovation Prosperity, 26(2):101 –127.
Nenadál, J., Vykydal, D., Halfarová, P., and Tylecková, E. (2022). Quality 4.0 maturity assessment in light of the current situation in the Czech Republic. Sustainability, 14(12):7519.
Nenadál, J. (2020). The new EFQM model: What is really new and could be considered as a suitable tool with respect to Quality 4.0 concept? Quality Innovation Prosperity, 24(1):17 – 28.
Nosirov, J. T., Kukaeva, L. I., Hussein, B. A. A., and Ustenko, V. S. (2023). Disclosure of the export potential of high-tech enterprises in the context of Industry 4.0 through quality management. Proceedings on Engineering, 5(S2):295– 310.
Popkova, E. G., Chililov, A. M., Makarova, E. V., and Ryabyshev, D. E. (2023). Climate innovation in the practice of quality management of enterprises in industry 4.0. Proceedings on Engineering, 5(S2):249–264.
Prashar, A. (2023). Quality management in Industry 4.0 environment: a morphological analysis and research agenda. International Journal of Quality & Reliability Management, 40(3):863–885.
Radziwill, N. (2018). Let’s get digital: The many ways the fourth industrial revolution is reshaping the way we think about quality. Quality Progress, ASQ, pages 24 –29.
Reeves, C. A. and Bednar, D. A. (1994). Defining quality: Alternatives and implications. Academy of management Review, 19(3):419–445.
Saraiva, P. (2023). Quality 5.0 in turbulent times. Quality Progress, ASQ, 56(10):18 –25
Sony, M., Antony, J., and Douglas, J. A. (2020). Essential ingredients for the implementation of quality 4.0: a narrative review of literature and future directions for research. The TQM Journal, 32(4):779–793.
Sony, M., Antony, J., Douglas, J. A., and McDermott, O. (2021). Motivations, barriers and readiness factors for Quality 4.0 implementation: an exploratory study. The TQM Journal, 33(6):1502– 1515.
Sureshchandar, G. (2023). Quality 4.0–a measurement model using the confirmatory factor analysis (CFA) approach. International Journal of Quality &Reliability Management, 40(1):280 –303.
Sutoová A., Soos, L., and Kocá, F. (2020). Learning needs determination forˇ industry 4.0 maturity development in automotive organisations in Slovakia. Quality Innovation Prosperity, 24(3):122– 139.
Thekkoote, R. (2022). Enabler toward successful implementation of quality 4.0 in digital transformation era: a comprehensive review and future research agenda.
International Journal of Quality & Reliability Management, 39(6):1368–1384. Tolmachev, A. V., Sozinova, A. A., Savelyeva, N. K., and Saidakova, V. A. (2023). The attraction of digital personnel and corporate training in quality management in industry 4.0 with a balance between sustainability and competitiveness. Proceedings on Engineering Sciences, 5(S2):311 –326.
Tran, N. Q., Carden, L. L., and Zhang, J. Z. (2022). Work from anywhere: remote stakeholder management and engagement. Personnel Review, 51(8):2021 – 2038.
Wawak, S., Sutoová, A., Vykydal, D., and Halfarová, P. (2023). Factors affecting quality 4.0 implementation in Czech, Slovak and Polish organizations: Preliminary research. Advances in Production Engineering & Management, 18(3).
Yadav, N., Shankar, R., and Singh, S. P. (2021). Critical success factors for Lean Six Sigma in Quality
4.0. International Journal of Quality and Service Sciences, 13(1):123 –156.
Yanamandra, R., Abidi, N., Srivastava, R., Kukunuru, S., and Alzoubi, H. M. (2023). Approaching Quality 4.0: The digital process management as a competitive advantage. In 2023 International Conference on Business Analytics for Technology and Security (ICBATS), pages 1–6. IEEE.
Zulqarnain, A., Wasif, M., and Iqbal, S. A. (2022). Developing a Quality 4.0 implementation framework and evaluating the maturity levels of industries in developing countries. Sustainability, 14(18):11298.
Quality, operational excellence, Latent Dirichlet Allocation, quality 4.0.

