FAIR-EDU: Promote FAIRness in EDUcation Institutions

FAIR-EDU: Promote FAIRness in EDUcation Institutions

When a bias impacts human beings as individuals or as groups characterized by certain legally-protected sensitive attributes (e.g., gender), the inequalities reinforced by search and recommendation algorithms can lead to severe societal consequences, such as discrimination and unfairness. Considering also that the University of L’Aquila (UAQ) has adopted the “Gender equality plan” approved by the “Board of Directors” on 15/12/2021. We proposed FAIR-EDU: Promote FAIRness in EDUcation Institutions, a project of six months where we test and estimate the algorithmic bias present in the staff-related data generated and used by UAQ. We identified seven research questions that will be answered in four interleaved phases carried on with the support of the GEP’s WG and the IT staff of UAQ.

Introduction

Both search and recommendation algorithms rank users with results that aim to match their needs and interests. Despite the (non-)personalized perspective that characterizes each class of algorithms, both learn patterns from data which often conveys biases regarding unbalances and inequalities.

In most cases, the trained models and, by extension, the final ranking capture and strengthen these biases in the learned patterns. When a bias impacts human beings as individuals or groups characterized by certain legally-protected sensitive attributes (e.g., their race, gender, or religion), the inequalities reinforced by search and recommendation algorithms even lead to severe societal consequences, such as discrimination and unfairness [1].

Detecting, characterizing, and mitigating biases while preserving effectiveness is thus a timely goal for modern search and recommendation algorithms that are becoming central in several application domains. Challenges that arise in real-world applications (e.g., justice [2], education [4], etc.) are focused on controlling the effects of popularity biases to improve users’ perceived quality of the results.

Different methods have been proposed to mitigate bias at several levels of data processing, mostly focusing on classification problems. However, it must be noticed that the multi-class classification problem is still not effectively addressed, even if it is widely adopted and constitutes a building block for personalization and search systems in critical domains [5-7].

Historically, the research community of Classic Academic Systems (CAS) was mainly focused on evaluating the bias in students-related tasks, such as their enrollment and the evaluation of their learning [8-10], rather than considering and assessing the bias related to the academic’s staff (e.g., researchers, professors, technicians, administrative, etc.). Moreover, in the past year, the University of L’Aquila (UAQ) has approved the “Gender equality plan” approved by the “Board of Directors” with resolution no. 389 of 15/12/2021 “. The Gender Equality Plan of UAQ is part of a path already started and now consolidated for the promotion of gender equality and the achievement of objectives of equality, participation, and non-discrimination.

Planned Objectives

Considering the problems and scenarios in FAIR-EDU: Promote FAIRness in EDUcation Institutions project, we analyzed the algorithmic bias present in the staff-related data generated and used by the University of L’Aquila. We remark that the project aims to be an exploratory path that constitutes the basis for further development at the National and European levels. Hereafter we report the identified research questions to clarify later which are the specific deliverable made by the project that answers them:

Final Remarks

FAIR-EDU is focused on analyzing the algorithmic bias in the data of the University of L’Aquila thus, its contribution to the gender issue is twofold:

People

Andrea D'Angelo A
Andrea D'Angelo
University of L'Aquila
Giordano d'Aloisio G
Giordano d'Aloisio
University of L'Aquila
Diana Di Marco D
Diana Di Marco
M.Sc. in Computer Science @UAQ, 2023
Francesca Marzi F
Francesca Marzi
University of L'Aquila
Prof. Antinisca Di Marco P
Prof. Antinisca Di Marco
University of L'Aquila
Prof. Giovanni Stilo
University of L'Aquila