International Journal of Computer Applications |
Foundation of Computer Science (FCS), NY, USA |
Volume 186 - Number 39 |
Year of Publication: 2024 |
Authors: Krishna Advaith Siddhartha Rangavajjula, Anil Kumar Pulipaka |
10.5120/ijca2024923974 |
Krishna Advaith Siddhartha Rangavajjula, Anil Kumar Pulipaka . A Supervised Approach to Zero-Shot Learning for Field Classification of Texts: Leveraging File Data for Improved Text Categorization. International Journal of Computer Applications. 186, 39 ( Sep 2024), 40-47. DOI=10.5120/ijca2024923974
Assessing work from various fields is necessary to analyze & survey an institution's performance over a certain period of time having progression in multiple divisions. Many necessary characteristics such as Impact Factor (IF) of acclaimed works are influenced by non-uniform distribution of publications in different sections and renowned journals. Classifying file elements with NLP based on the publication titles would be supportive and intuitive. Text Analysis and Field Classification requires a large amount of data for a model to be trained and efficient. So, a Zero shot learning approach is opted to distinguish various publications into their respective sectors. Unlike other models, this model is enhanced to leverage CSV format files for both input and output. Different Pre-Trained Language models have been used and their performances are recorded. The advantage of zero shot learning over regular methods is discussed.