English

Towards a Job Title Classification System

Machine Learning 2016-06-06 v1 Artificial Intelligence

Abstract

Document classification for text, images and other applicable entities has long been a focus of research in academia and also finds application in many industrial settings. Amidst a plethora of approaches to solve such problems, machine-learning techniques have found success in a variety of scenarios. In this paper we discuss the design of a machine learning-based semi-supervised job title classification system for the online job recruitment domain currently in production at CareerBuilder.com and propose enhancements to it. The system leverages a varied collection of classification as well clustering algorithms. These algorithms are encompassed in an architecture that facilitates leveraging existing off-the-shelf machine learning tools and techniques while keeping into consideration the challenges of constructing a scalable classification system for a large taxonomy of categories. As a continuously evolving system that is still under development we first discuss the existing semi-supervised classification system which is composed of both clustering and classification components in a proximity-based classifier setup and results of which are already used across numerous products at CareerBuilder. We then elucidate our long-term goals for job title classification and propose enhancements to the existing system in the form of a two-stage coarse and fine level classifier augmentation to construct a cascade of hierarchical vertical classifiers. Preliminary results are presented using experimental evaluation on real world industrial data.

Keywords

Cite

@article{arxiv.1606.00917,
  title  = {Towards a Job Title Classification System},
  author = {Faizan Javed and Matt McNair and Ferosh Jacob and Meng Zhao},
  journal= {arXiv preprint arXiv:1606.00917},
  year   = {2016}
}
R2 v1 2026-06-22T14:16:28.394Z