PerfectHR: Using AI to Reduce Candidate-Job Mismatch and Improve Recruitment Efficiency
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Date
2025
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Publisher
Queen Mary University of London
Abstract
The recruitment process is critical for
organizations to find the right talent. However, existing
recruitment software often faces issues like candidate-job
mismatches and biases, leading to inefficient hiring processes.
This paper presents PerfectHR, a recruitment software solution
designed to reduce candidate-job mismatches and improve
recruitment efficiency using artificial intelligence. The software
integrates a logistic regression model for candidate classification
and OpenAI’s GPT-4 language model for CV summarization.
PerfectHR addresses bias in the dataset and algorithm by
excluding sensitive features such as age and gender to ensure
that they do not influence the model predictions. The application
was developed using React.js for the frontend, Node.js for the
backend, MongoDB for database management, and deployed on
Vercel. Initial testing indicates that PerfectHR provides a
reliable and user-friendly experience, effectively supporting job
postings, candidate evaluations, and communication. Future
work will focus on expanding the training dataset to cover a
broader range of job types and further refining the application
to improve performance and scalability.
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Keywords
Recruitment software, AI, candidate-job mismatch