Purdue University Graduate School
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INVESTIGATING DATA ACQUISITION TO IMPROVE FAIRNESS OF MACHINE LEARNING MODELS

thesis
posted on 2024-04-23, 00:53 authored by EktaEkta

Machine learning (ML) algorithms are increasingly being used in a variety of applications and are heavily relied upon to make decisions that impact people’s lives. ML models are often praised for their precision, yet they can discriminate against certain groups due to biased data. These biases, rooted in historical inequities, pose significant challenges in developing fair and unbiased models. Central to addressing this issue is the mitigation of biases inherent in the training data, as their presence can yield unfair and unjust outcomes when models are deployed in real-world scenarios. This study investigates the efficacy of data acquisition, i.e., one of the stages of data preparation, akin to the pre-processing bias mitigation technique. Through experimental evaluation, we showcase the effectiveness of data acquisition, where the data is acquired using data valuation techniques to enhance the fairness of machine learning models.

History

Degree Type

  • Master of Science

Department

  • Computer and Information Technology

Campus location

  • West Lafayette

Advisor/Supervisor/Committee Chair

Dr. Romila Pradhan

Additional Committee Member 2

Dr. John Springer

Additional Committee Member 3

Dr. Sudip Vhaduri