基于特征提取模型的大学生风险水平识别

Mamta Singh, J. Singh, Arpana Rawal
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引用次数: 11

摘要

四十年来,学术界对教学目标的满足问题引起了管理者和专业人士的真诚关注。人们已经花了大量的时间用预测建模的方法来揭示学生的轮廓模式,然而,在确定导致学生不同表现的原因特征并对其采取果断和补救措施方面却很少付出努力。数据挖掘技术可以用来理解教学专业中出现的陷阱。在机器学习中,特征选择或属性分析通常被视为预处理步骤。本文针对计算机科学与应用课程二年级学生的表现,提出了一个识别对学术贡献最大的属性的框架。一个适当的监督机器学习模型应用于我们的固有属性集,以达到(NBC)对给定模式的外部属性的预测场景。因此,该模型能够提取每个被预测为“风险”类别的学生所付出的外部努力的适应度过程序列。最终用户可以利用这些优先关系来识别和解决最不适合提升学生评价的控制因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Extraction Model to Identify At -- Risk Level of Students in Academia
Since four decades, a sincere concern has aroused among managerial, professional, towards the satisfaction of teaching-learning objective in Academia. Huge span of time has already been spent revealing student's profile patterns using predictive modeling methods, however, very little effort is put up in identifying the causative features responsible for varied students' performances followed by decisive and remedial actions upon them. Data mining techniques can be used to understand the pitfalls arising in the teaching-learning professions. In machine learning feature selection or Attribute analysis is often treated as a preprocessing step. This paper proposes a framework for identify the most contributed attributes towards academia, for the performance of second year students of computer science and application course. An appropriate supervised machine learning model is applied upon our set of inherent attributes in order to arrive (NBC) at predictive scenarios for given pattern of external attributes. Thus, the model is able to extract the fitness procedure sequences of external effort put up by each student who is predicted in 'at-risk' category. The end-user can make use of these precedence relations to identify and resolve the most unfit governing factor for upgrading students' appraisals.
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