Abstract
AbstractAI In this era, scene based translation and intelligent word segmentation are not new technologies. However, there is still no good solution for long and complex Chinese semantic analysis. The subjective question scoring still relies on the teacher's manual marking. However, there are a large number of examinations, and the manual marking work is huge. At present, the labor cost is getting higher and higher, the traditional manual marking method can't meet the demand The demand for automatic marking is increasingly strong in modern society. At present, the automatic marking technology of objective questions has been very mature and widely used. However, by reasons of the complexity and the difficulty of natural language processing technology in Chinese text, there are still many shortcomings in subjective questions marking, such as not considering the impact of semantics, word order and other issues on scoring accuracy. The automatic scoring technology of subjective questions is a complex technology, involving pattern recognition, machine learning, natural language processing and other technologies. Good results have been seen in the calculation method-based deep learning and machine learning. The rapid development of NLP technology has brought a new breakthrough for subjective question scoring. We integrate two deep learning models based on the Siamese Network through bagging to ensure the accuracy of the results, the text similarity matching model based on the birth networks and the score point recognition model based on the named entity recognition method respectively. Combining with the framework of deep learning, we use the simulated manual scoring method to extract and match the score point sequence of students’ answers with standard answers. The score recognition model effectively improves the efficiency of model calculation and long text keyword matching. The loss value of the final training score recognition model is about 0.9, and the accuracy is 80.54%. The accuracy of the training text similarity matching model is 86.99%, and the fusion model is single. The scoring time is less than 0.8s, and the accuracy is 83.43%.
Publisher
Springer Nature Singapore
Reference29 articles.
1. Rudner, L., Gagne, P.: An overview of three approaches to scoring written essays by computer. Practical Assessment 151(3), 501 (2001)
2. Bachman, L.F., Carr, N., Kamei, G., et al.: A reliable approach toautomatic assessment of short answer free responses. In: Proceedings of the19th International Conference on Computational Linguistics - Volume 2. DBLP (2002)
3. Wang, J., Guo, W., Tang, Z.: Automatic scoring method for subjective questions based on domain ontology and dependency parsing. J. Guizhou University (Natural Science) 37(06), 79–84+124 (2020)
4. Huang, F.: Design of XML structure based automatic scoring system for text translation information. Modern Electron. Tech. 42(23), 177–181 (2019)
5. Sultan, M.A., Salazar, C., Sumner, T.: Fast and easy short answer grading with highaccuracy. In: Proceedings of the 2016 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, pp. 1070–1075 (2016)
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Intelligent Scoring System for English Subjective Questions Based on Neural Networks;2024 IEEE 4th International Conference on Electronic Communications, Internet of Things and Big Data (ICEIB);2024-04-19