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S&T Best Computing Projects
Classification of short answers for semi-automated grading and feedback in online assessment
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Classification of short answers for semi-automated grading and feedback in online assessment - PDF
Classification of short answers for semi-automated grading and feedback in online assessment - video
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Collection
S&T Best Computing Projects
Record Details
Record ID
stcompfyp:65
Title
Classification of short answers for semi-automated grading and feedback in online assessment
Type of Work
Final Year Project/Work
Collection
S&T Best Computing Projects
Contributor
Tsui, Yiu Chuen 徐耀全 (group member)
Lai, Ka Wai 賴家威 (group member)
Cheng, Mang Kwan (group member)
Lui, Kwok Fai Andrew 呂國輝 (supervisor)
School / Unit
School of Science and Technology (S&T)
Program
Bachelor of Computing with Honours in Internet Technology
Date
2017
Abstract
The aim of the project is to develop a semi-automated grading short answer algorithm to reduce and make better use of instructors grading effort. The main objective is to classify and cluster the student short answer and then grade the short answer automatically.
Type of Resource
Mixed
Language
English
Physical Description
This work includes 1 PDF file and 1 video clip.
Awards
1st runner-up, Final Year Project (FYP) Competition (14th), 2017 (IEEE(HK) Computational Intelligence Chapter, Institute of Electrical and Electronics Engineers Hong Kong Section)
Notes
Team name : SkynetALT
Keywords
teaching and classroom support; clustering
Access Eligibility
Public Access
Permanent Link
https://repository.lib.hkmu.edu.hk/sw/islandora/object/stcompfyp:65
Object Details
Record ID
stcompfyp:66
Title
Classification of short answers for semi-automated grading and feedback in online assessment - PDF
Collection
S&T Best Computing Projects
Type of Resource
PDF
Physical Description
2 pages.
Access Eligibility
Public Access
Permanent Link
https://repository.lib.hkmu.edu.hk/sw/islandora/object/stcompfyp:66
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