An Integer Linear Programming Model for Diagnosing Unmastered Mathematical Topics Based on Bloom's Cognitive Domains

Irvan Irvan, Krishna Prafidya Romantica, Zainal Azis, Tua Halomoan Harahap

Abstract


This study aims to develop a mathematical model based on Integer Linear Programming (ILP) to map unmastered mathematical topics among senior high school students according to the cognitive domains of Bloom's Taxonomy, namely Knowledge (C1), Comprehension (C2), and Application (C3). The research method employed a quantitative approach, utilizing test result data from a 48-item instrument covering 16 mathematical subtopics, administered to 147 twelfth-grade students in the Natural Science program. The data were analyzed using LINDO 6.1 software to generate a profile of student mastery for each subtopic and cognitive domain. The results indicate that student mastery was generally higher in the Knowledge (C1) domain, with eight subtopics achieved, compared to the Comprehension (C2) domain with six subtopics and the Application (C3) domain with five subtopics. Out of the total 48 test items, only 19 items (39.6%) were mastered by the students, while 29 items (60.4%) were not. The Equations and Inequalities (X2) subtopic was the only material not mastered across all three domains. These findings suggest the need for learning strategies that place greater emphasis on strengthening conceptual understanding and contextual application. The application of the ILP model in this study proves effective as a diagnostic tool for identifying student weaknesses in a detailed and objective manner, thereby serving as a reference for teachers in designing targeted remedial programs. Furthermore, this model has the potential to be replicated in other schools to continuously monitor the development of student proficiency.

Keywords


Mathematical Model, Integer Linear Programming, Proficiency Mapping, Cognitive Domains, Bloom's Taxonomy, Senior High School Mathematics

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References


Kementerian Pendidikan, Kebudayaan, Riset, dan Teknologi Republik Indonesia, Rencana Strategis Kementerian Pendidikan, Kebudayaan, Riset, dan Teknologi 2020–2024, Jakarta, Indonesia, 2020.

L. W. Anderson and L. A. Sosniak, Bloom’s Taxonomy: A Forty-Year Retrospective. Chicago, IL, USA: Univ. Chicago Press, 1994.

OECD, PISA 2012 Results: What Students Know and Can Do, Paris, France: OECD Publishing, 2014.

N. F. Wulandari and Jailani, “Indonesian students’ mathematics problem solving skill in PISA and TIMSS,” in Proc. Int. Conf. Research, Implementation and Education of Mathematics and Sciences, Yogyakarta State Univ., Yogyakarta, Indonesia, 2015, pp. 191–198.

H. Tambunan, “Mathematical model for mapping students’ cognitive capability,” Int. J. Eval. Res. Educ., vol. 5, no. 3, pp. 221–226, Sep. 2016.

B. S. Bloom, Taxonomy of Educational Objectives: The Classification of Educational Goals. New York, NY, USA: Longman, 1956.

G. B. Dantzig and M. N. Thapa, Linear Programming. New York, NY, USA: Springer, 1997.

A. A. Anwar and A. S. Bahaj, “Student project allocation using integer programming,” IEEE Trans. Educ., vol. 46, no. 3, pp. 53–59, Aug. 2003.

S. Daskalaki, T. Birbas, and E. Housos, “An integer programming formulation for a case study in university timetabling,” Eur. J. Oper. Res., vol. 153, no. 1, pp. 117–135, Feb. 2004.

A. K. Junoh, et al., “Allocation marks model for examination based on Bloom’s taxonomy,” in Proc. IPCSIT, vol. 10, pp. 53–59, 2011.

A. K. Junoh, et al., “Classification of examination marks according to Bloom’s taxonomy by using binary linear programming,” in Proc. IPCSIT, vol. 36, pp. 20–25, 2012.

Wikipedia, “Intelligent tutoring systems,” https://en.wikipedia.org/wiki/Intelligent_tutoring_system (diakses: 14 Agustus 2025).

G. Siemens, “Learning analytics: The emergence of a discipline,” American Behavioral Scientist, vol. 57, no. 10, pp. 1380–1400, 2013.

S. Minn, M. A. Choi, Y. Lee, and H. J. Kim, “Interpretable knowledge tracing via concept selection,” arXiv preprint arXiv:2105.08012, 2021.

J. Shen, et al., “Symbolic cognitive diagnosis via hybrid optimization and knowledge representation learning,” arXiv preprint arXiv:2302.00514, 2023.

A. Muharani, et al., “Kemampuan representasi matematis siswa dalam pembelajaran pemodelan matematika pada materi program linear,” SJME (Supremum Journal of Mathematics Education), vol. 9, no. 1, pp. 15–25, Jan. 2025.

A. S. Firdaus, et al., “Pengaruh model pembelajaran berbasis masalah terhadap kemampuan pemecahan masalah matematis siswa,” GAMMA J. Matematika, Sains, dan Pendidikan, vol. 15, no. 2, pp. 101–110, Dec. 2023.

R. Guo, et al., “The influence of mind mapping on computational thinking: A quasi-experimental study,” Frontiers in Education, vol. 9, 2024.

Nature, “Improving students programming performance through mind mapping and collaborative learning,” Nature Education, vol. 3, no. 2, 2025.

Educ. Inf. Technol., “Profiling the skill mastery of introductory programming students using diagnostic assessment,” Educational Information Technology, vol. 29, 2024.

Kementerian Pendidikan dan Kebudayaan Republik Indonesia, Kisi-Kisi Ujian Nasional SMA/MA Tahun Pelajaran 2024/2025, Jakarta, Indonesia, 2024.

Badan Standar Nasional Pendidikan (BSNP), Prosedur Operasional Standar (POS) Ujian Nasional Tahun Pelajaran 2024/2025, Jakarta, Indonesia, 2024.

J. C. Nunnally and I. H. Bernstein, Psychometric Theory, 3rd ed. New York, NY, USA: McGraw-Hill, 1994.




DOI: https://doi.org/10.30596/ijems.v7i2.27150

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