Skip to content

This project is a repository for the article "Automatic Literature Mapping Selection: Classification of Papers on Industry Productivity"

License

Notifications You must be signed in to change notification settings

GuiFay/Automatic-Literature-Mapping-Selection

Repository files navigation

Automatic Literature Mapping Selection: Classification of Papers on Industry Productivity

The academic community has witnessed a notable increase in paper publications, whereby the rapid pace at which modern society seeks information underscores the critical need for literature mapping. This study introduces an innovative automatic model for categorizing articles by subject matter using Machine Learning (ML) algorithms for classification and category labeling, alongside a proposed ranking method called SSS (Scientific Significance Score) and using Z-score to select the finest papers.

Use Case: Industry Productivity

This paper’s use case concerns industry productivity. The key findings include the following:

  1. The Decision Tree model demonstrated superior performance with an accuracy rate of 75% in classifying articles within the productivity and industry theme.
  2. Through a ranking methodology based on citation count and publication date, it identified the finest papers.
  3. Recent publications with higher citation counts achieved better scores.
  4. The model’s sensitivity to outliers underscores the importance of addressing database imbalances, necessitating caution during training by excluding biased categories.

These findings not only advance the utilization of ML models for paper classification but also lay a foundation for further research into productivity within the industry, exploring themes such as artificial intelligence, efficiency, industry 4.0, innovation, and sustainability.

About

This project is a repository for the article "Automatic Literature Mapping Selection: Classification of Papers on Industry Productivity"

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published