论文标题
设想人类协作系统将政策转化为决策模型
Envisioning a Human-AI collaborative system to transform policies into decision models
论文作者
论文摘要
法规管理公民日常生活的许多方面。政府和企业通常以编码规则的形式自动化这些自动化(例如,检查公民有资格获得特定利益的资格)。但是,自动化的途径漫长而挑战。为了解决这一问题,最近针对数字政府的全球举措,提议同时用自然语言表达人类消费的政策以及计算上的规则或代码,正在收集广泛的公共部门利益。我们介绍了从社会服务的资格策略中构建半自动构建决策模型的问题,并提出了一种初步的新兴方法,可以将路线从策略文档缩短到使用AI,NLP和知识图的可执行,可解释和标准化的决策模型。尽管面临许多开放式挑战,但在该职位上,我们探讨了AI的巨大潜力,即协助政府机构和政策专家扩展人类可读和机器可执行政策规则的生产,同时提高透明度,解释性,可解释性,可解释性,责任性和决策的责任感。
Regulations govern many aspects of citizens' daily lives. Governments and businesses routinely automate these in the form of coded rules (e.g., to check a citizen's eligibility for specific benefits). However, the path to automation is long and challenging. To address this, recent global initiatives for digital government, proposing to simultaneously express policy in natural language for human consumption as well as computationally amenable rules or code, are gathering broad public-sector interest. We introduce the problem of semi-automatically building decision models from eligibility policies for social services, and present an initial emerging approach to shorten the route from policy documents to executable, interpretable and standardised decision models using AI, NLP and Knowledge Graphs. Despite the many open domain challenges, in this position paper we explore the enormous potential of AI to assist government agencies and policy experts in scaling the production of both human-readable and machine executable policy rules, while improving transparency, interpretability, traceability and accountability of the decision making.