Complexity Science Hub, Vienna, Austria.
Central European University, Vienna, Austria.
Sci Rep. 2022 Feb 7;12(1):2012. doi: 10.1038/s41598-022-05434-1.
Though algorithms promise many benefits including efficiency, objectivity and accuracy, they may also introduce or amplify biases. Here we study two well-known algorithms, namely PageRank and Who-to-Follow (WTF), and show to what extent their ranks produce inequality and inequity when applied to directed social networks. To this end, we propose a directed network model with preferential attachment and homophily (DPAH) and demonstrate the influence of network structure on the rank distributions of these algorithms. Our main findings suggest that (i) inequality is positively correlated with inequity, (ii) inequality is driven by the interplay between preferential attachment, homophily, node activity and edge density, and (iii) inequity is driven by the interplay between homophily and minority size. In particular, these two algorithms reduce, replicate and amplify the representation of minorities in top ranks when majorities are homophilic, neutral and heterophilic, respectively. Moreover, when this representation is reduced, minorities may improve their visibility in the rank by connecting strategically in the network. For instance, by increasing their out-degree or homophily when majorities are also homophilic. These findings shed light on the social and algorithmic mechanisms that hinder equality and equity in network-based ranking and recommendation algorithms.
虽然算法承诺带来许多好处,包括效率、客观性和准确性,但它们也可能引入或放大偏见。在这里,我们研究了两种著名的算法,即 PageRank 和 Who-to-Follow (WTF),并展示了当它们应用于有向社交网络时,它们的排名在多大程度上产生了不平等和不公平。为此,我们提出了一个带有优先连接和同质性(DPAH)的有向网络模型,并展示了网络结构对这些算法的排名分布的影响。我们的主要发现表明:(i)不平等与不公平呈正相关;(ii)不平等是由优先连接、同质性、节点活动和边密度之间的相互作用驱动的;(iii)不公平是由同质性和少数群体规模之间的相互作用驱动的。特别是,当多数群体具有同质性、中立性和异质性时,这两种算法会分别减少、复制和放大少数群体在顶级排名中的代表性。此外,当这种代表性减少时,少数群体可以通过在网络中进行策略性连接来提高他们在排名中的可见度。例如,当多数群体也具有同质性时,通过增加他们的出度或同质性。这些发现揭示了阻碍基于网络的排名和推荐算法中的平等和公平的社会和算法机制。