HCGLLGApr 20, 2022

A Brief Guide to Designing and Evaluating Human-Centered Interactive Machine Learning

arXiv:2204.09622v15 citationsh-index: 29
Originality Synthesis-oriented
AI Analysis

This provides a practical framework for machine learning practitioners to enhance human-AI collaboration, though it is incremental as it synthesizes existing principles into a guide.

The paper tackles the problem of designing and evaluating interactive machine learning (IML) systems by presenting a human-centered guide to mitigate risks like fairness and transparency issues, aiming to support practitioners in responsible decision-making.

Interactive machine learning (IML) is a field of research that explores how to leverage both human and computational abilities in decision making systems. IML represents a collaboration between multiple complementary human and machine intelligent systems working as a team, each with their own unique abilities and limitations. This teamwork might mean that both systems take actions at the same time, or in sequence. Two major open research questions in the field of IML are: "How should we design systems that can learn to make better decisions over time with human interaction?" and "How should we evaluate the design and deployment of such systems?" A lack of appropriate consideration for the humans involved can lead to problematic system behaviour, and issues of fairness, accountability, and transparency. Thus, our goal with this work is to present a human-centred guide to designing and evaluating IML systems while mitigating risks. This guide is intended to be used by machine learning practitioners who are responsible for the health, safety, and well-being of interacting humans. An obligation of responsibility for public interaction means acting with integrity, honesty, fairness, and abiding by applicable legal statutes. With these values and principles in mind, we as a machine learning research community can better achieve goals of augmenting human skills and abilities. This practical guide therefore aims to support many of the responsible decisions necessary throughout the iterative design, development, and dissemination of IML systems.

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