The interaction patterns of employees in social and professional networks play an important role in the success of employees and organizations as a whole. However, in many fields there is a severe under-representation of minority groups; moreover, minority individuals may be segregated from the rest of the network or isolated from one another. While the problem of increasing the representation of minority groups in various fields has been well-studied, diver- sification in terms of numbers alone may not be sufficient: social relationships should also be considered. In this work, we consider the problem of assigning a set of employment candidates to positions in a social network so that diversity and overall fitness are maximized, and propose Fair Employee Assignment (FairEA), a novel algorithm for finding such a matching. The output from FairEA can be used as a benchmark by organizations wishing to evaluate their hiring and assignment practices. On real and synthetic networks, we demonstrate that FairEA does well at finding high-fitness, high-diversity matchings.
翻译:社会和专业网络中雇员的互动模式在整个雇员和组织的成功中起着重要作用,然而,在许多领域,少数群体的代表性严重不足;此外,少数群体个人可能与网络的其余部分隔离,或相互隔离;虽然提高少数群体在各个领域的代表性的问题已经得到很好研究,但仅从人数上进行分散化可能还不够:还应考虑社会关系;在这项工作中,我们考虑为社会网络中的职位分配一组就业候选人的问题,以便最大限度地实现多样性和总体健康,并提出公平雇员分配(FairEA),这是寻找这种匹配的新算法。 FairEA的产出可以用作希望评价其雇用和分配做法的组织的基准。在实际和合成网络中,我们证明FareEA在寻找高利润、高多样性匹配方面做得很好。