Socially Fair Mitigation of Misinformation on Social Networks via Constraint Stochastic Optimization

03/23/2022
by   Ahmed Abouzeid, et al.
0

Recent social networks' misinformation mitigation approaches tend to investigate how to reduce misinformation by considering a whole-network statistical scale. However, unbalanced misinformation exposures among individuals urge to study fair allocation of mitigation resources. Moreover, the network has random dynamics which change over time. Therefore, we introduce a stochastic and non-stationary knapsack problem, and we apply its resolution to mitigate misinformation in social network campaigns. We further propose a generic misinformation mitigation algorithm that is robust to different social networks' misinformation statistics, allowing a promising impact in real-world scenarios. A novel loss function ensures fair mitigation among users. We achieve fairness by intelligently allocating a mitigation incentivization budget to the knapsack, and optimizing the loss function. To this end, a team of Learning Automata (LA) drives the budget allocation. Each LA is associated with a user and learns to minimize its exposure to misinformation by performing a non-stationary and stochastic walk over its state space. Our results show how our LA-based method is robust and outperforms similar misinformation mitigation methods in how the mitigation is fairly influencing the network users.

READ FULL TEXT
research
02/14/2023

When Mitigating Bias is Unfair: A Comprehensive Study on the Impact of Bias Mitigation Algorithms

Most works on the fairness of machine learning systems focus on the blin...
research
11/11/2021

Fair AutoML

We present an end-to-end automated machine learning system to find machi...
research
07/20/2013

Non-stationary Stochastic Optimization

We consider a non-stationary variant of a sequential stochastic optimiza...
research
10/11/2022

On Adaptivity in Non-stationary Stochastic Optimization With Bandit Feedback

In this paper we study the non-stationary stochastic optimization questi...
research
01/31/2021

Priority-based Post-Processing Bias Mitigation for Individual and Group Fairness

Previous post-processing bias mitigation algorithms on both group and in...
research
07/13/2021

Identifying Influential Users in Unknown Social Networks for Adaptive Incentive Allocation Under Budget Restriction

In recent years, recommendation systems have been widely applied in many...
research
08/15/2022

Bias amplification in experimental social networks is reduced by resampling

Large-scale social networks are thought to contribute to polarization by...

Please sign up or login with your details

Forgot password? Click here to reset