Incremental learning in students classification system with efficient knowledge transformation

Roshani Ade, P. R. Deshmukh
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引用次数: 2

Abstract

The amount of students data in the educational databases is growing day by day, so the knowledge taken out from these data need to be updated continuously. In the circumstances, where there is a need of handling continuous flow of student's data, there is a challenge of how to handle this massive amount of data into the information and how to accommodate new knowledge introduces with the new data. In this paper, the adaptive incremental learning algorithm for Students classification system is proposed, which competently transforms the knowledge throughout the system and also detects the new concept class efficiently. In this paper, conceptual view of the system is designed with the algorithm and experimental results on the student's data as well as some available data sets are used to prove the efficiency of the proposed algorithm.
学生分类系统中的增量学习与高效知识转化
教育数据库中学生数据的数量日益增长,因此从这些数据中提取的知识需要不断更新。在需要处理连续的学生数据流的情况下,如何将大量的数据处理成信息以及如何适应新数据引入的新知识是一个挑战。本文提出了一种学生分类系统的自适应增量学习算法,既能有效地对整个系统中的知识进行转换,又能有效地检测出新的概念类。本文结合算法设计了系统的概念视图,并利用学生数据和一些现有数据集的实验结果证明了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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