学生熟练程度猜想与选课分类的数据分析

A. Jovith, D. Saveetha, Dheeraj Sharma
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引用次数: 0

摘要

与真正的自习室教育相比,传统的在线教学框架仍然存在弱点,例如,缺乏逻辑和通用的帮助,缺乏介绍和输入的适应性帮助,学生和框架之间缺乏令人满意的帮助。同样,他们依赖于实时信息,并据此预测结果。这并不包括在早期集中的预科学生的信息。这给任何学习和预测算法都带来了一个问题。这项工作旨在帮助学生明确他们的主题,俱乐部,项目,实习,工作偏好。除了学生档案外,该项目还向学生提供建议,告诉他们如何利用这些档案来提高他们的学术和数学能力。在这方面,相信这些简介将提供一个有价值的工具,使候补生能够建立他们的就业能力。分析框架将每个替补的学习练习和连接历史记录监控到替补分析数据库模型中。根据这一模式,并沿着这些路线,工作展示了动态学习计划的个别替补。数据分析工具、分类技术和算法将用于预测学生科目选择的结果。学生的数据(标记和兴趣)将被分类到集群中,在集群上实现自我学习、预测算法,以满足学生的兴趣和需求。像map reduce这样的回归技术将用于将数据分离并分类为确定的数据集。它在输入、理解、准备和理解这四个方面起作用。本文给出了使用协同过滤策略进行替补执行预测的最佳方法。这些策略经常在像Netflix这样的推荐框架中使用。这种框架的基本思想是利用用户对系统中事物的评价所产生的相似性。我们选择在指导的条件下使用这些程序来预测替补的执行。我们用他们的考试成绩来计算他们的可比性,通过他们最近通过的科目的评估来显示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Analysis on Student Proficiency Conjecture and Course Selection Assortment
Conventional online instructive frameworks still have weaknesses when contrasted with a genuine study hall education, for example, absence of logical and versatile help, and absence of adaptable help of the introduction and input, absence of the agreeable help among understudies and frameworks. Likewise, they depend on the live information and anticipate the out comings dependent on that. This does exclude information of understudies in a foundation concentrating for some earlier years. This poses a problem for any learning and predictive algorithms to work on them. This work intends to assist the students in articulating their subject, club, project, internship, job preferences. In addition to student profiling, the venture additionally gives counsel to understudies with respect to how the profiles might be utilized to improve their scholastic and quantitative aptitude. In this regard, it is trusted that the profiles will give a valuable device to enable understudies to build up their employability. The profiling framework monitors the learning exercises and connection history of every individual understudy into the understudy profiling database model. In light of this model and along these lines the work demonstrates dynamic learning plans for individual understudies.Data analytic tools, classification techniques, and algorithms will be used to predict the outcomes of the student subject choices. Data (marks and interests) of the students will be classified into clusters upon which self-learning, predictive algorithms will be implemented to cater to students interests and needs. Regression techniques like map reduce will be used to segregate and classify data into definite datasets. It works on these four dimensions like input, comprehending, preparing and understanding. This paper gives the best way to use collaborative filtering strategies for understudy execution forecast. These strategies are frequently utilized in recommender frameworks like Netflix. The essential thought of such frameworks is to use the similitude of users dependent on their evaluations of the things in the system. We have chosen to utilize these procedures in the instructive condition to foresee understudy execution. We compute the comparability of understudies using their examination results, shown by the evaluations of their recently passed subjects.
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