Sociotechnical systems within cities are now equipped with machine learning algorithms in hopes to increase efficiency and functionality by modeling and predicting trends. Machine learning algorithms have been applied in these domains to address challenges such as balancing the distribution of bikes throughout a city and identifying demand hotspots for ride sharing drivers. However, these algorithms applied to challenges in sociotechnical systems have exacerbated social inequalities due to previous bias in data sets or the lack of data from marginalized communities. In this paper, I will address how smart mobility initiatives in cities use machine learning algorithms to address challenges. I will also address how these algorithms unintentionally discriminate against features such as socioeconomic status to motivate the importance of algorithmic fairness. Using the bike sharing program in Pittsburgh, PA, I will present a position on how discrimination can be eliminated from the pipeline using Bayesian Optimization.
翻译:城市内社会技术系统现在配备了机器学习算法,希望通过建模和预测趋势提高效率和功能; 在这些领域应用机器学习算法,以应对诸如平衡整个城市的自行车分布和确定汽车共享司机需求热点等挑战; 然而,这些算法适用于社会技术系统的挑战,由于以往数据集中的偏见或边缘化社区缺乏数据,加剧了社会不平等; 在本文件中,我将讨论城市智能流动倡议如何利用机器学习算法应对挑战; 我还将讨论这些算法如何无意中歧视社会经济地位等特征,以激发算法公平的重要性。 我将在匹兹堡的自行车共享方案下,说明如何利用巴耶西亚最佳化来消除输油管中的歧视。