Fairness in graph mining: A survey
Graph mining algorithms have been playing a significant role in myriad fields over the years.
However, despite their promising performance on various graph analytical tasks, most of …
However, despite their promising performance on various graph analytical tasks, most of …
Fairsna: Algorithmic fairness in social network analysis
In recent years, designing fairness-aware methods has received much attention in various
domains, including machine learning, natural language processing, and information …
domains, including machine learning, natural language processing, and information …
Social Network Analysis: A Survey on Process, Tools, and Application
Due to the explosive rise of online social networks, social network analysis (SNA) has
emerged as a significant academic field in recent years. Understanding and examining …
emerged as a significant academic field in recent years. Understanding and examining …
[HTML][HTML] Algorithmic fairness datasets: the story so far
Data-driven algorithms are studied and deployed in diverse domains to support critical
decisions, directly impacting people's well-being. As a result, a growing community of …
decisions, directly impacting people's well-being. As a result, a growing community of …
Influence maximization considering fairness: A multi-objective optimization approach with prior knowledge
H Gong, C Guo - Expert Systems with Applications, 2023 - Elsevier
The influence maximization problem (IMP) has been one of the most attractive topics in the
field of social networks. However, sometimes fairness in IMP should be considered …
field of social networks. However, sometimes fairness in IMP should be considered …
Adversarial graph embeddings for fair influence maximization over social networks
Influence maximization is a widely studied topic in network science, where the aim is to
reach the maximum possible number of nodes, while only targeting a small initial set of …
reach the maximum possible number of nodes, while only targeting a small initial set of …
Seeding network influence in biased networks and the benefits of diversity
The problem of social influence maximization is widely applicable in designing viral
campaigns, news dissemination, or medical aid. State-of-the-art algorithms often select …
campaigns, news dissemination, or medical aid. State-of-the-art algorithms often select …
Tackling documentation debt: a survey on algorithmic fairness datasets
A growing community of researchers has been investigating the equity of algorithms,
advancing the understanding of risks and opportunities of automated decision-making for …
advancing the understanding of risks and opportunities of automated decision-making for …
Reducing Access Disparities in Networks using Edge Augmentation✱
In social networks, a node's position is, in and of itself, a form of social capital. Better-
positioned members not only benefit from (faster) access to diverse information, but innately …
positioned members not only benefit from (faster) access to diverse information, but innately …
Fairness in influence maximization through randomization
The influence maximization paradigm has been used by researchers in various fields in
order to study how information spreads in social networks. While previously the attention …
order to study how information spreads in social networks. While previously the attention …