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Vol-3218
urn:nbn:de:0074-3218-4
Copyright © 2022 for
the individual papers by the papers' authors.
Copyright © 2022 for the volume
as a collection by its editors.
This volume and its papers are published under the
Creative Commons License Attribution 4.0 International
(CC BY 4.0).
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RecSys-in-HR 2022
Recommender Systems for Human Resources 2022
Proceedings of the 2nd Workshop on Recommender Systems for Human Resources (RecSys-in-HR 2022)
co-located with the 16th ACM Conference on Recommender Systems (RecSys 2022)
Seattle, USA, 18th-23rd September 2022.
Edited by
*
Aalborg University Copenhagen,
Department of Communication and Psychology, Faculty of Humanities, Copenhagen, Denmark
**
Randstad,
Randstad Groep Nederland, Diemen, The Netherlands
***
Indeed,
Indeed, USA
****
KU Leuven,
Department of Computer Science, Leuven, Belgium
Table of Contents
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Summary: There were 12 papers submitted for peer-review to this workshop. Out of these,
11 papers were accepted for this volume,
11 as regular papers.
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Automated Personnel Scheduling with Reinforcement Learning and Graph Neural Networks
Benjamin Platten,
Matthew Macfarlane,
David Graus,
Sepideh Mesbah
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Beyond human-in-the-loop: scaling occupation taxonomy at Indeed
Suyi Tu,
Olivia Cannon
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Closing the Gender Wage Gap: Adversarial Fairness in Job Recommendation
Clara Rus,
Jeffrey Luppes,
Harrie Oosterhuis,
Gido H. Schoenmacker
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Design of Negative Sampling Strategies for Distantly Supervised Skill Extraction
Jens-Joris Decorte,
Jeroen Van Hautte,
Johannes Deleu,
Chris Develder,
Thomas Demeester
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DGL4C: a Deep Semi-supervised Graph Representation Learning Model for Resume Classification
Wissem Inoubli,
Armelle Brun
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End-to-End Bias Mitigation in Candidate Recommender Systems with Fairness Gates
Adam Mehdi Arafan,
David Graus,
Fernando P. Santos,
Emma Beauxis-Aussalet
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Explainable Career Path Predictions using Neural Models
Roan Schellingerhout,
Volodymyr Medentsiy,
Maarten Marx
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Flexible Job Classification with Zero-Shot Learning
Thom Lake
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Model Threshold Optimization for Segmented Job-Jobseeker Recommendation System
Yichao Jin,
Anirudh Alampally,
Dheeraj Toshniwal,
Zhiming Xu,
Ankush Girdhar
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Skill Extraction from Job Postings using Weak Supervision
Mike Zhang,
Kristian Nørgaard Jensen,
Rob van der Goot,
Barbara Plank
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Using vector representations for matching tasks to skills
Miriam Amin,
Jan-Peter Bergmann,
Yuri Campbell
2022-09-16: submitted by Mesut Kaya,
metadata incl. bibliographic data published under Creative Commons CC0
2022-09-19: published on CEUR Workshop Proceedings (CEUR-WS.org, ISSN 1613-0073)
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