A Fast Multidimensional Analysis Scheme to Analyze Linear Learning Sequence of Learning Activities

Jun-Ming Su, S. Tseng
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引用次数: 0

Abstract

Learning activity (LA), a linear sequence structure consisting of several learning steps, is a popular method to integrate the learning content with the pedagogical strategies for facilitating efficient learning. However, how to efficiently analyze the linear learning sequence of a LA in terms of the Grade at each step (G), the learning attempt Count (C), and the learning Time (T) is an issue because it can be regarded as the multidimensional data analysis (MDA) problem. In order to efficiently understand the learning status, how to propose a fast method using the fuzzy pattern matching technique to efficiently analyze the multidimensional learning data in terms of G, C, T dimensions is our main concern. Therefore, in this study, a Fast Multidimensional Learning Activity Data Analysis (FaMiLaDa) scheme is proposed to solve the defined Multidimensional Learning Data Analysis for a LA (MLDA-LA) problem. According to the experimental analysis, FaMiLaDa scheme is able to fast analyze the learning data concerning the G, C, T dimensions in constant time complexity and perform the learning query in real time. Consequently, teachers are able to efficiently understand the learning status of students.
学习活动线性学习序列分析的快速多维分析方案
学习活动是一种由多个学习步骤组成的线性序列结构,是一种将学习内容与教学策略相结合以促进高效学习的常用方法。然而,如何从每一步的Grade (G)、学习尝试次数(C)和学习时间(T)三个方面来有效地分析一个LA的线性学习序列是一个问题,因为它可以被看作是多维数据分析(MDA)问题。为了有效地了解学习状态,如何提出一种利用模糊模式匹配技术对多维学习数据进行G、C、T维高效分析的快速方法是我们关注的主要问题。因此,本研究提出了一种快速多维学习活动数据分析(FaMiLaDa)方案来解决定义多维学习数据分析的LA (MLDA-LA)问题。实验分析表明,FaMiLaDa方案能够在恒定时间复杂度下快速分析G、C、T维度的学习数据,并实时进行学习查询。因此,教师能够有效地了解学生的学习状况。
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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