51. Auto-Generating Examination Paper Based on Genetic Algorithms
- Author
-
Na Deng, Yipeng Li, Shudong Liu, Yutian Liu, Deliang Zhong, and Xu Chen
- Subjects
business.industry ,Computer science ,Online learning ,Paper based ,Machine learning ,computer.software_genre ,Test (assessment) ,Order (exchange) ,Factor (programming language) ,Line (geometry) ,Genetic algorithm ,Artificial intelligence ,Informatization ,business ,computer ,computer.programming_language - Abstract
With the acceleration of education informatization, the social demand for online examination papers is increasing. However, there are some problems in the generation of online examination papers. Firstly, it is impossible to randomly generate examination papers quickly. Besides, it is impossible to dynamically adjust examination papers according to test results. Thirdly, it is impossible to generate examination papers based on individual characteristics of students. In order to solve these problems, this paper proposes a new auto-generation examination paper model based on genetic algorithm. The model dynamically adjusts the difficulty factor of individual test questions by analyzing the online learning data and historical user test result data, and then guarantees the difficulty of generating examination papers in line with the changes in the current educational environment. The simulation results show that the algorithm improves the efficiency and accuracy of the generation examination paper, and effectively controls the difficulty coefficient of the examination paper.
- Published
- 2019