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Multi-modal recommender system for predicting project manager performance within a competency-based framework.

Imene Jemal1, Wilfried Armand Naoussi Sijou1, Belkacem Chikhaoui1

  • 1Applied Artificial Intelligence Institute, TELUQ University, Montreal, QC, Canada.

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|May 24, 2024
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Summary
This summary is machine-generated.

This study introduces a novel recommender system approach for automatically predicting project manager competency scores. Content-based filtering shows high precision, improving performance evaluations and addressing the cold-start problem effectively.

Keywords:
competency-based assessmentmulti-modal datanatural language processingrecommender systemscore prediction

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Area of Science:

  • Computational Social Science
  • Human Resources Technology
  • Performance Management Systems

Background:

  • Traditional competency assessment for project managers is manual, time-consuming, and prone to evaluator bias.
  • Accurate performance evaluation is crucial for professional development and organizational success.
  • Existing methods lack efficiency and consistency in scoring diverse competencies.

Purpose of the Study:

  • To develop and evaluate an automated approach for predicting project manager competency scores.
  • To compare the effectiveness of various recommender system techniques in this context.
  • To address the challenges of cold-starting in competency assessment.

Main Methods:

  • Data fusion of demographic, profile, and historical assessment data.
  • Natural Language Processing (NLP) for text data pre-processing.
  • Comparison of content-based, demographic, collaborative, and hybrid filtering recommender systems.

Main Results:

  • Content-based filtering achieved 81.03% precision for general competency scoring.
  • Demographic filtering showed 54.05% precision for new project managers (cold-start).
  • Content-based filtering demonstrated 85.79% precision for new competencies (cold-start).

Conclusions:

  • Recommender systems offer a viable and efficient solution for automated competency assessment.
  • Content-based filtering is particularly effective for both general and cold-start competency predictions.
  • This approach can significantly streamline performance evaluation for project managers.