Record Details

Power to the People: The Role of Humans in Interactive Machine Learning

ScholarsArchive at Oregon State University

Field Value
Title Power to the People: The Role of Humans in Interactive Machine Learning
Names Amershi, Saleema (creator)
Cakmak, Maya (creator)
Knox, W. Bradley (creator)
Kulesza, Todd (creator)
Date Issued 2014 (iso8601)
Note This is an author's peer-reviewed final manuscript, as accepted by the publisher. The published article is copyrighted by the American Association for Artificial Intelligence and can be found at: http://www.aaai.org/Magazine/magazine.php.
Abstract Systems that can learn interactively from their end-users are quickly becoming widespread.
Until recently, this progress has been fueled mostly by advances in machine learning; however,
more and more researchers are realizing the importance of studying users of these systems. In
this article we promote this approach and demonstrate how it can result in better user
experiences and more effective learning systems. We present a number of case studies that
demonstrate how interactivity results in a tight coupling between the system and the user,
exemplify ways in which some existing systems fail to account for the user, and explore new
ways for learning systems to interact with their users. After giving a glimpse of the progress that
has been made thus far, we discuss some of the challenges we face in moving the field forward.
Genre Article
Identifier Amershi, S., Cakmak, M., Knox, W. B., & Kulesza, T. (2014). Power to the people: The role of humans in interactive machine learning. AI Magazine, 35(4), 105-120.

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