Through the Fairness Lens: Experimental Analysis and Evaluation of Entity Matching

07/06/2023
by   Nima Shahbazi, et al.
0

Entity matching (EM) is a challenging problem studied by different communities for over half a century. Algorithmic fairness has also become a timely topic to address machine bias and its societal impacts. Despite extensive research on these two topics, little attention has been paid to the fairness of entity matching. Towards addressing this gap, we perform an extensive experimental evaluation of a variety of EM techniques in this paper. We generated two social datasets from publicly available datasets for the purpose of auditing EM through the lens of fairness. Our findings underscore potential unfairness under two common conditions in real-world societies: (i) when some demographic groups are overrepresented, and (ii) when names are more similar in some groups compared to others. Among our many findings, it is noteworthy to mention that while various fairness definitions are valuable for different settings, due to EM's class imbalance nature, measures such as positive predictive value parity and true positive rate parity are, in general, more capable of revealing EM unfairness.

READ FULL TEXT

page 13

page 19

page 20

research
08/02/2023

MultiEM: Efficient and Effective Unsupervised Multi-Table Entity Matching

Entity Matching (EM), which aims to identify all entity pairs referring ...
research
03/14/2023

Demographic Parity Inspector: Fairness Audits via the Explanation Space

Even if deployed with the best intentions, machine learning methods can ...
research
02/25/2023

On the Cost of Demographic Parity in Influence Maximization

Modeling and shaping how information spreads through a network is a majo...
research
06/19/2019

Inherent Tradeoffs in Learning Fair Representation

With the prevalence of machine learning in high-stakes applications, esp...
research
08/26/2018

Discriminative but Not Discriminatory: A Comparison of Fairness Definitions under Different Worldviews

We mathematically compare three competing definitions of group-level non...
research
10/17/2022

Systematic Evaluation of Predictive Fairness

Mitigating bias in training on biased datasets is an important open prob...
research
06/02/2023

Navigating Fairness in Radiology AI: Concepts, Consequences,and Crucial Considerations

Artificial Intelligence (AI) has significantly revolutionized radiology,...

Please sign up or login with your details

Forgot password? Click here to reset