ResumAI: Revolutionizing Automated Resume Analysis and Recommendation with Multi-Model Intelligence | IEEE Conference Publication | IEEE Xplore

ResumAI: Revolutionizing Automated Resume Analysis and Recommendation with Multi-Model Intelligence


Abstract:

Finding and organizing suitable candidates for a vacant job position can pose challenges, especially when there is a high volume of submissions. This can impede team grow...Show More

Abstract:

Finding and organizing suitable candidates for a vacant job position can pose challenges, especially when there is a high volume of submissions. This can impede team growth as it becomes challenging to identify the most suitable individual in a timely manner. To address this issue, an automated system called "Resume Recommendation and Classification" can expedite the selection process and aid in decision-making, while also reducing the time-consuming task of fair screening and shortlisting. This research utilizes Natural Language Processing to collect resumes and extract the necessary information. Subsequently, the resumes are ranked using BERT and TF-IDF word embeddings to obtain similarity scores. A classification model is then developed to categorize resumes based on job designations. To categorize the resumes, various techniques were employed, including Multinomial Naive Bayes, Linear Support Vector Classifiers, and k-NN Classifiers. These approaches enable the classification of resumes based on specific criteria.
Date of Conference: 01-03 December 2023
Date Added to IEEE Xplore: 18 April 2024
ISBN Information:
Conference Location: Bangalore, India

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