研究人类-人工智能协同设计空间探索的框架

Antoni Virós-i-Martin, Daniel Selva
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引用次数: 1

摘要

本文提出了一个框架来描述和解释以设计空间探索(design Space Exploration, DSE)为重点的人机协同设计。DSE是一种流行的方法,用于复杂系统的早期设计,起源于著名的设计探索范式。人类设计师和认知设计助手都被建模为智能代理,具有内部状态(例如,动机,认知工作量),知识状态(在领域,设计过程和问题特定知识中分离),世界的估计状态(即,设计任务的状态)和其他代理,目标层次(短期和长期,设计和学习目标)和一组长期属性(例如,Kirton的适应创新清单风格,风险规避)。该框架强调了DSE中设计目标和学习目标之间的关系,正如之前在文献中所强调的那样(例如,概念知识理论,LinD模型),并建立在人机交互(例如,共享目标,计划,注意力)的共同点理论之上,作为开发成功的助手和交互的基石。从该框架的角度回顾了近年来人类-人工智能协同决策系统的研究,并指出了一些新的研究问题。这个框架可以帮助设计研究人员建立有希望的假设,并设计研究来测试这些考虑最相关因素的假设,从而帮助推进人类-人工智能协同设计理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework to Study Human-AI Collaborative Design Space Exploration
This paper presents a framework to describe and explain human-machine collaborative design focusing on Design Space Exploration (DSE), which is a popular method used in the early design of complex systems with roots in the well-known design as exploration paradigm. The human designer and a cognitive design assistant are both modeled as intelligent agents, with an internal state (e.g., motivation, cognitive workload), a knowledge state (separated in domain, design process, and problem specific knowledge), an estimated state of the world (i.e., status of the design task) and of the other agent, a hierarchy of goals (short-term and long-term, design and learning goals) and a set of long-term attributes (e.g., Kirton’s Adaption-Innovation inventory style, risk aversion). The framework emphasizes the relation between design goals and learning goals in DSE, as previously highlighted in the literature (e.g., Concept-Knowledge theory, LinD model) and builds upon the theory of common ground from human-computer interaction (e.g., shared goals, plans, attention) as a building block to develop successful assistants and interactions. Recent studies in human-AI collaborative DSE are reviewed from the lens of the proposed framework, and some new research questions are identified. This framework can help advance the theory of human-AI collaborative design by helping design researchers build promising hypotheses, and design studies to test these hypotheses that consider most relevant factors.
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