人机协作:探索交互式机器学习的界面

Q3 Engineering
Gonesh Chandra Saha Et al.
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引用次数: 0

摘要

人-人工智能协作体现了人工智能系统和人类协同工作的理念,利用彼此的优势,取得比任何一方孤立都能做的更多。这是从人工智能作为人类劳动替代品的传统观念向人工智能增强人类能力的伙伴关系的转变。这种合作建立在信任的基础上,人类依靠人工智能获得数据驱动的洞察力,人工智能依靠人类的专业知识做出细微的决策。在不断发展的技术领域,最深刻的变革之一是人类与人工智能(AI)之间的合作。通过机器学习(ML)的接口,人类与人工智能算法交互以实现集体目标,进一步促进和增强了这种合作。随着人工智能(AI)的不断发展,人与机器之间的协同作用变得越来越重要。本文深入探讨了人类与人工智能协作的发展前景,特别关注交互式机器学习(iML)接口。在一个人工智能系统渗透到社会各个方面的世界里,理解人类如何通过直观的界面有效地与人工智能合作是至关重要的。本研究全面探讨了用户界面在促进协同机器学习中的关键作用。它包括对现有iML界面的分析,用户体验评估,以及提出创新设计原则,以提高人工智能作为协作工具的有效性。这项研究有助于提高我们对利用人工智能潜力赋予各个领域用户权力的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human-AI Collaboration: Exploring interfaces for interactive Machine Learning
Human-AI collaboration embodies the idea that AI systems and humans work together synergistically, leveraging each other's strengths to achieve more than what either can do in isolation. It's a shift from the traditional notion of AI as a replacement for human labour to a partnership where AI augments human capabilities. This collaboration is founded on trust, where humans rely on AI for data-driven insights, and AI relies on human expertise for nuanced decision-making. In the ever-evolving landscape of technology, one of the most profound transformations is the collaboration between humans and artificial intelligence (AI). This collaboration is further facilitated and enhanced through the interfaces of machine learning (ML), where humans interact with AI algorithms to achieve collective goals. As artificial intelligence (AI) continues to advance, the synergy between humans and machines becomes increasingly significant. This paper delves into the evolving landscape of Human-AI Collaboration, with a particular focus on interactive Machine Learning (iML) interfaces. In a world where AI systems permeate numerous facets of society, understanding how humans can effectively collaborate with AI through intuitive interfaces is paramount. This research comprehensively explores the pivotal role of user interfaces in facilitating collaborative machine learning. It encompasses an analysis of existing iML interfaces, user experience evaluations, and the proposition of innovative design principles to enhance the effectiveness of AI as a collaborative tool. This study contributes to advancing our understanding of harnessing AI's potential to empower users in various domains.
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来源期刊
推进技术
推进技术 Engineering-Aerospace Engineering
CiteScore
1.40
自引率
0.00%
发文量
6610
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