There is an urgent call to detect and prevent "biased data"at the earliest possible stage of the data pipelines used to build automated decision-making systems. In this paper, we are focusing on controlling the data bias in entity resolution (ER) tasks aiming to discover and unify records/descriptions from different data sources that refer to the same real-world entity. We formally define the ER problem with fairness constraints ensuring that all groups of entities have similar chances to be resolved. Then, we introduce FairER, a greedy algorithm for solving this problem for fairness criteria based on equal matching decisions. Our experiments show that FairER achieves similar or higher accuracy against two baseline methods over 7 datasets, ...
Data-driven algorithms are studied in diverse domains to support critical decisions, directly impact...
Accuracy and individual fairness are both crucial for trustworthy machine learning, but these two as...
In this work, we propose Fair-CDA, a fine-grained data augmentation strategy for imposing fairness c...
There is an urgent call to detect and prevent "biased data"at the earliest possible stage of the dat...
Decisions based on algorithms and systems generated from data have become essential tools that perva...
Automated data-driven decision systems are ubiquitous across a wide variety of online ser-vices, fro...
We consider settings in which the right notion of fairness is not captured by simple mathematical de...
We investigate fairness in classification, where automated decisions are made for individuals from d...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
We study fairness in classification, where individuals are classified, e.g., admitted to a uni-versi...
The issue of fairness in machine learning models has recently attracted a lot of attention as ensuri...
In recent years, a great deal of fairness notions has been proposed. Yet, most of them take a reduct...
This version of the article has been accepted for publication, after peer review (when applicable) a...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Algorithmic fairness plays an increasingly critical role in machine learning research. Several group...
Data-driven algorithms are studied in diverse domains to support critical decisions, directly impact...
Accuracy and individual fairness are both crucial for trustworthy machine learning, but these two as...
In this work, we propose Fair-CDA, a fine-grained data augmentation strategy for imposing fairness c...
There is an urgent call to detect and prevent "biased data"at the earliest possible stage of the dat...
Decisions based on algorithms and systems generated from data have become essential tools that perva...
Automated data-driven decision systems are ubiquitous across a wide variety of online ser-vices, fro...
We consider settings in which the right notion of fairness is not captured by simple mathematical de...
We investigate fairness in classification, where automated decisions are made for individuals from d...
The adoption of automated, data-driven decision making in an ever expanding range of applications ha...
We study fairness in classification, where individuals are classified, e.g., admitted to a uni-versi...
The issue of fairness in machine learning models has recently attracted a lot of attention as ensuri...
In recent years, a great deal of fairness notions has been proposed. Yet, most of them take a reduct...
This version of the article has been accepted for publication, after peer review (when applicable) a...
Algorithmic decision making systems are ubiquitous across a wide variety of online as well as offlin...
Algorithmic fairness plays an increasingly critical role in machine learning research. Several group...
Data-driven algorithms are studied in diverse domains to support critical decisions, directly impact...
Accuracy and individual fairness are both crucial for trustworthy machine learning, but these two as...
In this work, we propose Fair-CDA, a fine-grained data augmentation strategy for imposing fairness c...