With the increasing pervasiveness of algorithms across industry and government, a growing body of work has grappled with how to understand their societal impact and ethical implications. Various methods have been used at different stages of algorithm development to encourage researchers and designers to consider the potential societal impact of their research. An understudied yet promising area in this realm is using participatory foresight to anticipate these different societal impacts. We employ crowdsourcing as a means of participatory foresight to uncover four different types of impact areas based on a set of governmental algorithmic decision making tools: (1) perceived valence, (2) societal domains, (3) specific abstract impact types, and (4) ethical algorithm concerns. Our findings suggest that this method is effective at leveraging the cognitive diversity of the crowd to uncover a range of issues. We further analyze the complexities within the interaction of the impact areas identified to demonstrate how crowdsourcing can illuminate patterns around the connections between impacts. Ultimately this work establishes crowdsourcing as an effective means of anticipating algorithmic impact which complements other approaches towards assessing algorithms in society by leveraging participatory foresight and cognitive diversity.
翻译:随着整个行业和政府的算法日益普及,越来越多的工作在努力如何理解其社会影响和伦理影响。在算法发展的不同阶段,使用了各种方法鼓励研究人员和设计者考虑其研究的潜在社会影响。该领域一个研究不足但有希望的领域是利用参与性展望来预测这些不同的社会影响。我们利用众包作为一种参与性展望手段,根据一套政府算法决策工具,发现四种不同类型的影响领域:(1) 认知价值,(2) 社会领域,(3) 特定抽象影响类型和(4) 伦理算法问题。我们的调查结果表明,这种方法有效地利用人群认知多样性来发现一系列问题。我们进一步分析所查明的影响领域互动的复杂性,以表明众包如何利用众包揭示各种影响之间的联系模式。最终,这项工作将众包作为预测算法影响的有效手段,通过利用参与性展望和认知多样性来补充评估社会算法的其他方法。