The Influence of Data Quality and Machine Learning Algorithms on AI Prediction Performance in Business Analysis in Indonesia

Main Article Content

Loso Judijanto
Donny Muda Priyangan
Hanifah Nurul Muthmainah
I Wayan Jata

Abstract

This research investigates the intricate relationships among AI prediction performance, business analysis, data quality, and machine learning algorithms within the manufacturing sector in Indonesia. Through structural equation modeling analysis, the study explores the impact of these variables on one another, shedding light on the dynamics that contribute to successful AI adoption and business decision-making. The findings underscore the pivotal role of data quality in influencing AI prediction performance and machine learning algorithms, ultimately shaping the effectiveness of business analysis. The results provide practical insights for manufacturing companies seeking to optimize their data management practices and harness the potential of advanced technologies for strategic decision-making.

Article Details

How to Cite
Judijanto, L., Muda Priyangan, D., Muthmainah, H. N., & Jata, I. W. (2023). The Influence of Data Quality and Machine Learning Algorithms on AI Prediction Performance in Business Analysis in Indonesia. The Eastasouth Journal of Information System and Computer Science, 1(02), 75–86. https://doi.org/10.58812/esiscs.v1i02.182
Section
Articles

References

I. Kovalenko, K. Barton, J. Moyne, and D. M. Tilbury, “Opportunities and Challenges to Integrate Artificial Intelligence Into Manufacturing Systems: Thoughts From a Panel Discussion [Opinion],” IEEE Robot. Autom. Mag., vol. 30, no. 2, pp. 109–112, 2023, doi: 10.1109/MRA.2023.3262464.

R. Kumar and S. Sundaramurthy, “AI and IoT in Manufacturing and Related Security Perspectives for Industry 4.0,” in Artificial Intelligence and Cyber Security in Industry 4.0, Springer, 2023, pp. 47–70.

Y. Iskandar, “Strategic Business Development of Polosan Mas Ibing with the Business Model Canvas Approach,” in International Conference on Economics, Management and Accounting (ICEMAC 2021), 2022, pp. 164–179.

M. Musapa, Nyai.holilah, and S. S. M. M. Yusuf Iskandar, Strategies to Increase MSME Income to Maintain Business Continuity in the Era of the Industrial Revolution 4.0 (Study on Food and Beverage MSMEs in Sukabumi Regency), vol. 0. Atlantis Press International BV, 2023. doi: 10.2991/978-94-6463-226-2_37.

M. A. K. Harahap, R. N. Wurarah, A. Fathurohman, A. Suroso, and Y. Iskandar, “Globalization Substance And Industrial Revolution 4.0 And The Role Of Technological Innovation For Economic Development Towards Entrepreneurship,” J. Bisnisman Ris. Bisnis dan Manaj., vol. 4, no. 3, pp. 37–51, 2023, doi: 10.52005/bisnisman.v4i3.122.

S. Ayvaz and K. Alpay, “Predictive maintenance system for production lines in manufacturing: A machine learning approach using IoT data in real-time,” Expert Syst. Appl., vol. 173, p. 114598, 2021.

U. Awan, I. Gölgeci, D. Makhmadshoev, and N. Mishra, “Industry 4.0 and circular economy in an era of global value chains: What have we learned and what is still to be explored?,” J. Clean. Prod., p. 133621, 2022.

T. Triyonowati, S. Suwitho, and T. M. Titik Mildawati, “Does innovation efficiency affect financial performance The role of ownership concentration,” 2023.

Y. Yusriadi, R. Rusnaedi, N. Siregar, S. Megawati, and G. Sakkir, “Implementation of artificial intelligence in Indonesia,” Int. J. Data Netw. Sci., vol. 7, no. 1, pp. 283–294, 2023.

R. B. Setianingrum, M. F. N. Dewata, and R. Kumar, “Technology Company Merger and Acquisition: a Study of Indonesian and European Union Competition Law,” Varia Justicia, vol. 19, no. 1, pp. 1–18, 2023.

U. B. Jaman, A. F. Lubis, and S. Suhartono, “Legal Challenges in the Development of Information and Communication Technology SMEs in Jabodetabek Region, Indonesia,” West Sci. Law Hum. Rights, vol. 1, no. 04, pp. 149–156, 2023, doi: 10.58812/wslhr.v1i04.321.

A. Junaedi, R. A. Bramasta, U. B. Jaman, and A. Ardhiyansyah, The Effect of Digital Marketing and E-Commerce on Increasing Sales Volume, vol. 1. Atlantis Press International BV, 2023. doi: 10.2991/978-94-6463-226-2_12.

D. Tangkesalu, E. R. T. Tiekink, and D. Tooy, “Open Access Precision Agriculture : Integrating Technology for Enhanced Efficiency and Sustainability in Crop Management,” 2023.

Z. Xu et al., “AlerTiger: Deep Learning for AI Model Health Monitoring at LinkedIn,” arXiv Prepr. arXiv2306.01977, 2023.

R. Padilla-Vega, C. Sanchez-Rivero, and A. Ojeda-Castro, “Navigating the business landscape: challenges and opportunities of implementing artificial intelligence in cybersecurity governance.,” Issues Inf. Syst., vol. 24, no. 4, 2023.

N. Noponen, “Impact of artificial intelligence on management,” Electron. J. Bus. Ethics Organ. Stud., vol. 24, no. 2, 2019.

L. Judijanto and A. Info, “Evaluation of the Influence of Organizational Factors , Human Resources , and Entrepreneurship on Agribusiness Business Productivity : A Case Study on Oil Palm Plantations in Cikidang Area , Sukabumi Regency,” vol. 01, no. 01, pp. 1–7, 2023.

S. A. Wahdiniawati, A. L. Jusdienar, A. S. Yahya, L. Judijanto, and S. Immi, “Assessing the Impact of Training , Industry Partnerships , and Government Policies on the Success of Business Development Programs : A Case Study in Central Java Province,” vol. 1, no. 11, pp. 361–371, 2023.

S.-Y. Chen and S.-Y. Liu, “Developing students’ action competence for a sustainable future: A review of educational research, Sustainability, 12, 4, 1374,” Search in, 2020.

K. Š. Makar, “Driven by Artificial Intelligence (AI)–Improving Operational Efficiency and Competitiveness in Business,” in 2023 46th MIPRO ICT and Electronics Convention (MIPRO), 2023, pp. 1142–1147.

M. Poretschkin et al., “Guideline for Trustworthy Artificial Intelligence--AI Assessment Catalog,” arXiv Prepr. arXiv2307.03681, 2023.

L. Groves, A. Peppin, A. Strait, and J. Brennan, “Going public: the role of public participation approaches in commercial AI labs,” in Proceedings of the 2023 ACM Conference on Fairness, Accountability, and Transparency, 2023, pp. 1162–1173.

N. Gurney, J. H. Miller, and D. V Pynadath, “The Role of Heuristics and Biases During Complex Choices with an AI Teammate,” arXiv Prepr. arXiv2301.05969, 2023.

Á. Huertas-García, C. Martí-González, R. G. Maezo, and A. E. Rey, “A Comparative Study of Machine Learning Algorithms for Anomaly Detection in Industrial Environments: Performance and Environmental Impact,” arXiv Prepr. arXiv2307.00361, 2023.

C. Ji, “Research on an integrated index prediction model based on RF-XGBOOST-ANN,” in 2023 IEEE International Conference on Control, Electronics and Computer Technology (ICCECT), 2023, pp. 545–549.

S. Tang and J. Yuan, “Beyond submodularity: a unified framework of randomized set selection with group fairness constraints,” J. Comb. Optim., vol. 45, no. 4, p. 102, 2023.

E. Khusainova, E. Dodwell, and R. Mitra, “SOAR: Simultaneous Or‐of‐And Rules for classification of positive and negative classes,” Stat, vol. 12, no. 1, p. e577, 2023.

E. Wolok, L. M. Yapanto, A. L. C. H. P. Lapian, T. Wolok, and A. Aneta, “Manufacturing Industry Strategy in Increasing the Acceleration of Economic Growth in Indonesia,” Int. J. Prof. Bus. Rev., vol. 8, no. 4, pp. e01927–e01927, 2023.

W. Widiyanti, R. Nurmalasari, M. Marsono, Y. Yoto, and A. Suyetno, “The importance of synergy between industry and educational institutions using technology to support implementation freedom to learn-independent campus,” in AIP Conference Proceedings, 2023, vol. 2590, no. 1.

B. Tjahjadi, I. B. G. A. Agastya, N. Soewarno, and A. Adyantari, “Green human capital readiness and business performance: do green market orientation and green supply chain management matter?,” Benchmarking An Int. J., 2022.

I. P. P. Salmon, R. Harta, A. Ardianto, and A. Sunarya, “Penerapan Telework Hubs Pada Lembaga Perguruan Tinggi Terbuka Jarak Jauh: Peluang Dan Tantangan,” REFORMASI, vol. 13, no. 1, pp. 83–97, 2023.

K. Voss, “Guest editorial: Current issues in composite-based and covariance-based structural equations modeling: what to do and when to do it,” Eur. J. Mark., vol. 57, no. 6, pp. 1593–1596, 2023.

R. Reyes-Carreto, F. Godinez-Jaimes, and M. Guzmán-Martínez, “The Basics of Structural Equations in Medicine and Health Sciences,” in Recent Advances in Medical Statistics, IntechOpen, 2022.

K. A. Bollen, Z. F. Fisher, M. L. Giordano, A. G. Lilly, L. Luo, and A. Ye, “An introduction to model implied instrumental variables using two stage least squares (MIIV-2SLS) in structural equation models (SEMs).,” Psychol. Methods, vol. 27, no. 5, p. 752, 2022.

Y. Haji-Othman and M. S. S. Yusuff, “Assessing reliability and validity of attitude construct using partial least squares structural equation modeling (PLS-SEM),” Int. J. Acad. Res. Bus. Soc. Sci., vol. 12, no. 5, pp. 378–385, 2022.

X. Cao, “The application of structural equation model in psychological research,” CNS Spectr., vol. 28, no. S1, pp. S17–S19, 2023.

S. A. Qureshi, A. Naseem, and Y. Ahmad, “Outsourcing or in-house manufacturing in Hi-tech industry: supply chain process with Delphi-AHP approach,” Kybernetes, 2023.

J. Mayer and R. Jochem, “Quality Forecasts in Manufacturing Using Autoregressive Models,” Intell. Hum. Syst. Integr. (IHSI 2023) Integr. People Intell. Syst., vol. 69, no. 69, 2023.

G. Schuh, P. Scholz, T. Leich, and R. May, “Identifying and analyzing data model requirements and technology potentials of machine learning systems in the manufacturing industry of the future,” in 2020 61st International Scientific Conference on Information Technology and Management Science of Riga Technical University (ITMS), 2020, pp. 1–10.

C. Rocha, C. Quandt, F. Deschamps, S. Philbin, and G. Cruzara, “Collaborations for digital transformation: Case studies of industry 4.0 in Brazil,” IEEE Trans. Eng. Manag., 2021.