Title
ResumeNet: A Learning-Based Framework for Automatic Resume Quality Assessment
Abstract
Recruitment of appropriate people for certain positions is critical for any companies or organizations. Manually screening to select appropriate candidates from large amounts of resumes can be exhausted and time-consuming. However, there is no public tool that can be directly used for automatic resume quality assessment (RQA). This motivates us to develop a method for automatic RQA. Since there is also no public dataset for model training and evaluation, we build a dataset for RQA by collecting around 10K resumes, which are provided by a private resume management company. By investigating the dataset, we identify some factors or features that could be useful to discriminate good resumes from bad ones, e.g., the consistency between different parts of a resume. Then a neural-network model is designed to predict the quality of each resume, where some text processing techniques are incorporated. To deal with the label deficiency issue in the dataset, we propose several variants of the model by either utilizing the pair/triplet-based loss, or introducing some semi-supervised learning technique to make use of the abundant unlabeled data. Both the presented baseline model and its variants are general and easy to implement. Various popular criteria including the receiver operating characteristic (ROC) curve, F-measure and ranking-based average precision (AP) are adopted for model evaluation. We compare the different variants with our baseline model. Since there is no public algorithm for RQA, we further compare our results with those obtained from a website that can score a resume. Experimental results in terms of different criteria demonstrate effectiveness of the proposed method. We foresee that our approach would transform the way of future human resources management.
Year
DOI
Venue
2018
10.1109/ICDM.2018.00046
2018 IEEE International Conference on Data Mining (ICDM)
Keywords
DocType
Volume
Resume quality assessment,dataset and features,neural network,text processing
Conference
abs/1810.02832
ISSN
ISBN
Citations 
1550-4786
978-1-5386-9160-1
0
PageRank 
References 
Authors
0.34
24
5
Name
Order
Citations
PageRank
Yong Luo111.04
Huaizheng Zhang293.58
Yongjie Wang300.68
Yonggang Wen42512156.47
Xinwen Zhang569746.90