Abstract:
Lots of structured and unstructured information can provide educational
insights through information retrieval. Gathering educational information in an
effective way is also a major challenge. In addition, historical records can be
obtained by effectively storing the information collected. Traditional analytical
methods need to be expanded. The proposed method can effectively manage large
volumes of data by combining apriori, prefix tree and eclat solutions. These
techniques are reported to be more effective by integrating Hadoop and Mapreduce
platforms. It also builds educational data collection software on Android mobile
phones designed to improve education in the home country. This software can be
accessed by adding a user account. A QR code is used to verify that you are a
registered student or teacher.
In the education area of Myanmar, computers, mobile and internet have
become important tools for high school students. To enable the quality and the
flexibility of the education, verities of education programs and methods are greatly
included but with different manners. Frequent itemset mining (FIM) is most popular
technique in datamining area like health care, manufacture and finance. The
proposed system develops two parts. The first part is implements teacher assessment
survey application. Teacher assessment survey application is to collect educational
data. The second part is introduced two FIM methods. These are Apriori Prefix Tree
Eclat (ATE) and Eclat Prefix Tree (ET) based on Hadoop Mapreduce platform.
Proposed method ATE is developed for large dataset to handle scalability and
optimization. ET method is implemented to compare compile time to proposed
method ATE. The proposed method is thinking instructor, student behavior and
giving managerial decision support, analysis on teacher assessment survey data. The
proposed method is for the decision maker. It helps to think about supporting student
behavior and management decisions. It can be used to manage the frequent itemset
results of the proposed method. It can effectively analyze large pieces of educational
data in a timely manner. Using this proposed method can be used to effectively
analyze the frequency and results of educational data in a short period of time. In
addition, the proposed method is applicable to many universities. For university can
also be used in management for individual teachers or for multiple teachers. It is
particularly suitable for the analysis of large educational data.