WEB BASED OPEN INTELLIGENT JOURNAL SYSTEM APPLICATION
Open Journal System (OJS) is an open-source software application to manage and publish scientific journals. OJS has an open access literature that is digital, online, free of charge, and free of most copyright and licensing restrictions. OJS existence as online open access journal management plat...
Saved in:
Main Author: | |
---|---|
Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/85027 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Open Journal System (OJS) is an open-source software application to manage and publish
scientific journals. OJS has an open access literature that is digital, online, free of charge, and free
of most copyright and licensing restrictions. OJS existence as online open access journal
management platform does not attract authors in publishing their scientific paper in open access
journal. Two main reasons are authors were not familiar enough with open access journals in their
field and perceived open access journals in their field to have low impact and prestige. OJS doesn’t
have the solution or feature that can address these issues. Therefore, new features are needed in
OJS to address this issue.
This thesis focuses on the development of new web-based journal management system with the
addition of new features, which is journal recommendation system and authors analysis in the form
of authors statistics. This journal management system is divided into backend and frontend
components. The backend component is divided into two sub-systems, namely the API sub-system
and the machine learning sub-system for the journal recommendation system.
The result from this thesis is journal management website with journal recommendations system
and author analysis. Testing was carried out using unit testing and system testing. In addition, the
journal recommendation model was evaluated using four metrics, that is accuracy, precision,
recall, and f1-score. Test and evaluation results show that journal management system has met the
necessary requirements. The journal recommendation feature able to recommend journal to
authors with 57 % accuracy and the author analysis feature able to show researchers statistic to
visitors. |
---|