Clustering techniques have been used on educational data to find groups of students who demonstrate similar learning patterns. Many educational data are relatively small in the sense that they contain less than a thousand student records. At the same time, each student may participate in dozens of activities, and this means that these datasets are high dimensional. Finding meaningful clusters from these datasets challenges traditional clustering algorithms. In this paper, we show a variety of ways to cluster student grade sheets using various clustering and subspace clustering algorithms. Our preliminary results suggest that each algorithm has its own strength and weakness, and can be used to find clusters of different properties. We also s...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
Currently, the data recorded in the educational context pres-ent two main challenges to data mining ...
We present a novel method for clustering data drawn from a union of arbitrary dimensional subspaces,...
In this paper, we applied a number of clustering algorithms on pretest data collected from 264 high-...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
This research aims to develop an improved model for subspace clustering based on density connection....
This research aims to develop an improved model for subspace clustering based on density connection....
International audienceThis paper describes a proposal of relevant clustering features and the result...
It is well--known that the provision of personalized instruction can enhance student learning. AI--b...
Many educational courses operate with models that were previously available only in mathematics or o...
Researchers have discovered many successful algorithms and methodologies for solving problems at the...
Clustering techniques often define the similarity between instances using distance measures over the...
Abstract—The problem of detecting clusters in high-dimensional data is increasingly common in machin...
The analysis of relation between student performance and other variables in education setting is oft...
Student behaviour should correlate to the course performance. This paper explored different types of...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
Currently, the data recorded in the educational context pres-ent two main challenges to data mining ...
We present a novel method for clustering data drawn from a union of arbitrary dimensional subspaces,...
In this paper, we applied a number of clustering algorithms on pretest data collected from 264 high-...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
This research aims to develop an improved model for subspace clustering based on density connection....
This research aims to develop an improved model for subspace clustering based on density connection....
International audienceThis paper describes a proposal of relevant clustering features and the result...
It is well--known that the provision of personalized instruction can enhance student learning. AI--b...
Many educational courses operate with models that were previously available only in mathematics or o...
Researchers have discovered many successful algorithms and methodologies for solving problems at the...
Clustering techniques often define the similarity between instances using distance measures over the...
Abstract—The problem of detecting clusters in high-dimensional data is increasingly common in machin...
The analysis of relation between student performance and other variables in education setting is oft...
Student behaviour should correlate to the course performance. This paper explored different types of...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
Currently, the data recorded in the educational context pres-ent two main challenges to data mining ...
We present a novel method for clustering data drawn from a union of arbitrary dimensional subspaces,...