The Accuracy of Supervised Learning Algorithm on Machine Learning Implementation: a Literature Review

The Accuracy of Supervised Learning Algorithm on Machine Learning Implementation: a Literature Review

Authors

  • Bagas Tarangga Information Systems UPN Veteran Jawa Timur
  • Evania Trafika Information Systems UPN Veteran Jawa Timur

DOI:

https://doi.org/10.33005/itij.v1i2.17

Keywords:

Machine Leaning, Supervised Learning, SVM Model, LSH, k-NN

Abstract

Machine Learning has become an integral element in technological development, having a significant impact on various sectors of life. This study explores the contribution of Machine Learning in big data processing, automated decision making, and predictive system development. The advantages of Machine Learning, especially in supervised learning, are emphasized by discussing algorithms such as regression, Support Vector Machines (SVM), and Neural Networks. Literature research includes five journals related to supervised learning applications, highlighting findings such as the effectiveness of the Random Forest algorithm in diagnosing pregnancy, the contribution of the SVM model in predicting student study periods, and the level of accuracy with the hybrid LSH and k-NN methods for weather prediction. The practical implementation of fruit detection using cameras shows real application in facilitating price checks and fruit recognition. In conclusion, the literature review confirms the potential and relevance of Machine Learning techniques, especially supervised learning, in providing solutions to various challenges in various sectors. It is recommended that further research explore different industrial sectors or specific case studies to gain a more comprehensive and relevant perspective on current trends in the development of Machine Learning techniques

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References

Nengsih, W. (2019) "Analysis of Supervised and Unsupervised Learning Modeling Accuracy Using Data Mining", Sebatik, Vol. 23, no. 2, pp. 285–291.

Fahira, F., Dwiyanti, Z., & Habibi, R. (2023). Supervised Learning Approach for Pregnancy Diagnosis. Incentive Techno Journal, Vol. 17, no. 2, pp. 99-111.

Nasution, NB, Hartanto, D., Silitonga, DJ, Lasimin, & Mardhiyana, D. (2023). Prediction of Study Length and Student Graduation Predicate Using Supervised Learning Algorithm. G-Tech: Journal of Applied Technology, Vol. 7, no. 2, pp. 386–395.

Utami, AS, Rini, DP, & Lestari, E. (2021). Weather Prediction in Palembang City Based on Supervised Learning Using the K-Nearest Neighbor Algorithm. JUPITER: Journal of Computer Science and Technology Research, Vol. 13, no. 1, pp. 09–18.

K. Kristiawan, DD Somali, TA Linggan Jaya, and A. Widjaja, "Fruit Detection Using Supervised Learning and Feature Extraction for Price Checkers", JuTISI, Vol. 6, no. 3.

Chang, Z., Lei, L., Zhou, Z., Mao, S., & Ristaniemi, T. (2018). Learn to Cache : Machine Learning for Network Edge Caching in the Big Data Era. IEEE Wirell. Commun. Vol. 25. pp. 28–35.

Khairudin, I. (2018). Machine Learning Will Become the Most Important Technology After the Internet in 2018. Cellular. ID. https://selular.id/2018/01/machine-learning-akan-jadi- Teknologi-tercepat-cepat-internet-di-2018/. accessed on December 25, 2023.

AW Tawfik, H. Alhoori, CW Keene, C. Bailey and M. Hogan(2018). "Using a Recommendation System to Support Problems," Technology, Knowledge and Learning, vol. 23, no. 1, pp. 177-187.

FH Pratama, A Triayudi, E Mardiani. (2022). Data Mining K-Medoids and K-Means for Grouping Potential Palm Oil Production in Indonesia. JIPI (Scientific Journal of Informatics Research and Learning) vol.7 no. 4, pp. 1294-1310.

Mardiani, Eri, et al. (2023) Comparison of KNN Methods, Naive Bayes. Decision Tree, Ensemble, Linear Regression on High School Student Performance Analysis. INNOVATIVE Journal: Journal Of Social Science Research Vol. 3, no. 2, pp. 13880-13892.

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Published

10-08-2024

How to Cite

Tarangga, B., & Trafika, E. (2024). The Accuracy of Supervised Learning Algorithm on Machine Learning Implementation: a Literature Review. Information Technology International Journal, 1(2), 71–77. https://doi.org/10.33005/itij.v1i2.17

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