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Book Sections Year : 2018

Evaluation of Interactive Machine Learning Systems

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Abstract

The evaluation of interactive machine learning systems remains a difficult task. These systems learn from and adapt to the human, but at the same time, the human receives feedback and adapts to the system. Getting a clear understanding of these subtle mechanisms of cooperation and co-adaptation is challenging. In this chapter, we report on our experience in designing and evaluating various interactive machine learning applications from different domains. We argue for coupling two types of validation: algorithm-centered analysis, to study the computational behaviour of the system; and human-centered evaluation, to observe the utility and effectiveness of the application for end-users. We use a visual analytics application for guided search, built using an interactive evolutionary approach, as an exemplar of our work. We argue that human-centered design and evaluation complement al-gorithmic analysis, and can play an important role in addressing the " black-box " effect of machine learning. Finally, we discuss research opportunities that require human-computer interaction methodologies, in order to support both the visible and hidden roles that humans play in interactive machine learning.
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Dates and versions

hal-01845018 , version 1 (20-07-2018)

Identifiers

  • HAL Id : hal-01845018 , version 1

Cite

Nadia Boukhelifa, Anastasia Bezerianos, Evelyne Lutton. Evaluation of Interactive Machine Learning Systems. J. Zhou; F. Chen. Human and Machine Learning Visible, Explainable, Trustworthy and Transparent, Springer, pp.341-360, 2018, 978-3-319-90403-0. ⟨hal-01845018⟩
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