论文标题

关于启发式模型,假设和参数

On Heuristic Models, Assumptions, and Parameters

论文作者

Judson, Samuel, Feigenbaum, Joan

论文摘要

有见地的跨学科合作对于技术的原则治理至关重要。当这样的努力解决计算与社会之间的相互作用时,他们通常专注于建模,即计算机科学家正式定义问题以实现算法解决方案的过程。但是建模是一个多方面且内在不完美的过程。尤其是在跨学科工作中,由于将复杂的技术细节传达给非专家的实际挑战,因此通常会受到不平衡的审查。我们认为,晦涩难懂的技术警告,选择和预选赛的宽松家庭可能不足以使计算机的社会效应取决于更大程度地审查的建模选择。研究人员经常使用这些文物来撰写计算的理论基础或对规范设计决策的影响负担的负担。此外,他们细微的技术性质通常会使对管理这些决定做出的酌情决定进行彻底的社会技术审查。我们描述了此类对象的三个特定类别:启发式模型,假设和参数。我们提出了六个原因,这些对象可能对计算的全面分析危害,并认为当研究人员解释的科学工作时,它们值得考虑。

Insightful interdisciplinary collaboration is essential to the principled governance of technology. When such efforts address the interaction between computation and society, they often focus on modeling, the process by which computer scientists formally define problems in order to enable algorithmic solutions. But modeling is a multifaceted and inherently imperfect process. Especially in interdisciplinary work, it often receives uneven scrutiny because of the practical challenges of communicating complex technical details to non-experts. We argue that there is an underappreciated if loose family of obscure and opaque technical caveats, choices, and qualifiers that the social effects of computing can depend just as much on as far more heavily scrutinized modeling choices. These artifacts are often used by researchers to paper over the incomplete theoretical foundations of computing or to burden shift responsibility for the impact of normative design decisions. Further, their nuanced technical nature often complicates thorough sociotechnical scrutiny of the discretionary decisions made to manage them. We describe three specific classes of such objects: heuristic models, assumptions, and parameters. We raise six reasons these objects may be hazardous to comprehensive analysis of computing and argue they deserve deliberate consideration as researchers explain scientific work.

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