MSc Thesis Defense "Adila: Fairness-informed Collaborative Team Formation" By: Hamed Ghasr Loghmani

Thursday, January 11, 2024 - 13:00 to 14:00

The School of Computer Science is pleased to present…

MSc Thesis Defense Announcement

Adila: Fairness-informed Collaborative Team Formation MSc Thesis Defense by:
Hamed Ghasr Loghmani
Date: Thursday, January 11, 2024
Time: 1:00PM - 2:00PM
Location: Essex Hall 122

Abstract:

Team formation aims to automate forming teams of experts who can successfully solve difficult tasks, which have firsthand effects on creating organizational performance. While existing neural team formation methods can efficiently analyze massive collections of experts to form effective collaborative teams, they largely ignore the fairness in recommended teams of experts. Fairness breeds innovation and increases teams’ success by enabling a stronger sense of community, reducing conflict, and stimulating more creative thinking. We study the application of state-of-the-art re-ranking algorithms to mitigate the potential bias in the neural team formation models based on demographic parity and equality of opportunity. Our early experiments show that, first, neural team formation models are biased. Second, we are able to mitigate bias using re-ranking algorithms, with no or negligible loss in the efficacy of teams. The code to reproduce the experiments is available at https://github.com/fani-lab/Adila (عادله , a feminine Arabic given name meaning just and fair.)
 

Keywords: Team Formation, Fairness, Social Information Retrieval

Thesis Committee:

Internal Reader: Dr. Boubakeur Boufama
External Reader: Dr. Natalie Delia, Interdisciplinary and Critical Studies, Faculty of Arts, Humanities & Social Sciences
Advisor: Dr. Hossein Fani
Chair: Dr. Luis Rueda
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