The study of algorithmic fairness received growing attention recently. This stems from the awareness that bias in the input data for machine learning systems may result in discriminatory outputs. For clustering tasks, one of the most central notions of fairness is the formalization by Chierichetti, Kumar, Lattanzi, and Vassilvitskii [NeurIPS 2017]. A clustering is said to be fair, if each cluster has the same distribution of manifestations of a sensitive attribute as the whole input set. This is motivated by various applications where the objects to be clustered have sensitive attributes that should not be over- or underrepresented. Most research on this version of fair clustering has focused on centriod-based objectives. In contrast, we di...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
We study fair center based clustering problems. In an influential paper, Chierichetti, Kumar, Lattan...
Clustering is a fundamental building block of modern statistical analysis pipelines. Fair clustering...
We consider the family of Correlation Clustering optimization problems under fairness constraints. I...
We study the question of fair clustering under the disparate impact doctrine, where each protected c...
Correlation clustering is a ubiquitous paradigm in unsupervised machine learning where addressing un...
As algorithms play a large role in our decision making, the possibility of algorithmic bias has led ...
Clustering algorithms are a class of unsupervised machine learning (ML) algorithms that feature ubiq...
We explore the area of fairness in clustering from the different perspective of modifying clustering...
Hierarchical Agglomerative Clustering (HAC) algorithms are extensively utilized in modern data scien...
Producción CientíficaWe consider the problem of diversity enhancing clustering, i.e, developing clus...
In the last few years, the need of preventing classification biases due to race, gender, social stat...
In this paper, we introduce and study the Robust-Correlation-Clustering problem: given a graph G = (...
Clustering problems and clustering algorithms are often overly sensitive to the presence of outliers...
25 pagesNowadays, the analysis of complex phenomena modeled by graphs plays a crucial role in many r...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
We study fair center based clustering problems. In an influential paper, Chierichetti, Kumar, Lattan...
Clustering is a fundamental building block of modern statistical analysis pipelines. Fair clustering...
We consider the family of Correlation Clustering optimization problems under fairness constraints. I...
We study the question of fair clustering under the disparate impact doctrine, where each protected c...
Correlation clustering is a ubiquitous paradigm in unsupervised machine learning where addressing un...
As algorithms play a large role in our decision making, the possibility of algorithmic bias has led ...
Clustering algorithms are a class of unsupervised machine learning (ML) algorithms that feature ubiq...
We explore the area of fairness in clustering from the different perspective of modifying clustering...
Hierarchical Agglomerative Clustering (HAC) algorithms are extensively utilized in modern data scien...
Producción CientíficaWe consider the problem of diversity enhancing clustering, i.e, developing clus...
In the last few years, the need of preventing classification biases due to race, gender, social stat...
In this paper, we introduce and study the Robust-Correlation-Clustering problem: given a graph G = (...
Clustering problems and clustering algorithms are often overly sensitive to the presence of outliers...
25 pagesNowadays, the analysis of complex phenomena modeled by graphs plays a crucial role in many r...
AbstractWe consider the following general correlation-clustering problem [N. Bansal, A. Blum, S. Cha...
We study fair center based clustering problems. In an influential paper, Chierichetti, Kumar, Lattan...
Clustering is a fundamental building block of modern statistical analysis pipelines. Fair clustering...