header
Local cover image
Local cover image
Image from OpenLibrary

Mining students{u2019} performance Indicators from student response systems / Sarah Hassan Sayed ; Supervised Aly Fahmy , Mohammad Elramly

By: Contributor(s): Material type: TextTextLanguage: English Publication details: Cairo : Sarah Hassan Sayed , 2019Description: 122 Leaves ; 30cmOther title:
  • التنقيب عن مؤشرات أداء الطلاب من نظم الإجابة الإلكترونية [Added title page title]
Subject(s): Online resources: Available additional physical forms:
  • Issued also as CD
Dissertation note: Thesis (M.Sc.) - Cairo University - Faculty of Computers and Information - Department of Computer Science Summary: Improving the quality of education is always a desired goal in educational institutions, and involving technology in the educational process can improve education by supporting teachers with variety of tools to facilitate their job. One supporting solution is automatic scoring systems for students{u2019} short answers. This system can eliminate from teachers the burden of grading a large number of test questions and facilitate performing even more assessments either during lectures or via quizzes especially when the number of students is large. This research presents a learning model for short answers clustering and automatic scoring without using reference answers. The model is divided into three phases: (1) an embedding model for short answers representation, (2) a clustering model to cluster answers into groups based on their similarities, and (3) a regression model for predicting students{u2019} scores. For the embedding phase, a comprehensive evaluation of multiple state-of-the-art embedding models was applied to choose the best technique for text representation. Seven models were tested and evaluated separately by training a regression model to predict students{u2019} scores based on the cosine similarity between embeddings of students{u2019} answers and reference answers as a training feature. The study shows that using pre-trained models achieved comparable results for the task of automatic short answer scoring. The model that achieved the best results is doc2vec model which was trained on answers - students{u2019} answers and reference answers - from the benchmark dataset in order to learn vector representations of answers. The model achieved 0.569 correlation coefficient value measured based on the correlation between actual grades and predicted scores. The model achieved 0.797 root mean square error (RMSE) value for correctness of predictions
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Home library Call number Copy number Status Barcode
Thesis Thesis قاعة الرسائل الجامعية - الدور الاول المكتبة المركزبة الجديدة - جامعة القاهرة Cai01.20.03.M.Sc.2019.Sa.M (Browse shelf(Opens below)) Not for loan 01010110079543000
CD - Rom CD - Rom مخـــزن الرســائل الجـــامعية - البدروم المكتبة المركزبة الجديدة - جامعة القاهرة Cai01.20.03.M.Sc.2019.Sa.M (Browse shelf(Opens below)) 79543.CD Not for loan 01020110079543000

Thesis (M.Sc.) - Cairo University - Faculty of Computers and Information - Department of Computer Science

Improving the quality of education is always a desired goal in educational institutions, and involving technology in the educational process can improve education by supporting teachers with variety of tools to facilitate their job. One supporting solution is automatic scoring systems for students{u2019} short answers. This system can eliminate from teachers the burden of grading a large number of test questions and facilitate performing even more assessments either during lectures or via quizzes especially when the number of students is large. This research presents a learning model for short answers clustering and automatic scoring without using reference answers. The model is divided into three phases: (1) an embedding model for short answers representation, (2) a clustering model to cluster answers into groups based on their similarities, and (3) a regression model for predicting students{u2019} scores. For the embedding phase, a comprehensive evaluation of multiple state-of-the-art embedding models was applied to choose the best technique for text representation. Seven models were tested and evaluated separately by training a regression model to predict students{u2019} scores based on the cosine similarity between embeddings of students{u2019} answers and reference answers as a training feature. The study shows that using pre-trained models achieved comparable results for the task of automatic short answer scoring. The model that achieved the best results is doc2vec model which was trained on answers - students{u2019} answers and reference answers - from the benchmark dataset in order to learn vector representations of answers. The model achieved 0.569 correlation coefficient value measured based on the correlation between actual grades and predicted scores. The model achieved 0.797 root mean square error (RMSE) value for correctness of predictions

Issued also as CD

There are no comments on this title.

to post a comment.

Click on an image to view it in the image viewer

Local cover image
Share
Under the supervision of New Central Library Manager

Implemented and Customized by: Eng.M.Mohamady
Contact:   info@cl.cu.edu.eg

© All rights reserved  New Central Library