Title
Human-Centred Machine Learning.
Abstract
Machine learning is one of the most important and successful techniques in contemporary computer science. It involves the statistical inference of models (such as classifiers) from data. It is often conceived in a very impersonal way, with algorithms working autonomously on passively collected data. However, this viewpoint hides considerable human work of tuning the algorithms, gathering the data, and even deciding what should be modeled in the first place. Examining machine learning from a human-centered perspective includes explicitly recognising this human work, as well as reframing machine learning workflows based on situated human working practices, and exploring the co-adaptation of humans and systems. A human-centered understanding of machine learning in human context can lead not only to more usable machine learning tools, but to new ways of framing learning computationally. This workshop will bring together researchers to discuss these issues and suggest future research questions aimed at creating a human-centered approach to machine learning.
Year
DOI
Venue
2016
10.1145/2851581.2856492
CHI Extended Abstracts
DocType
ISBN
Citations 
Conference
978-1-4503-4082-3
13
PageRank 
References 
Authors
0.88
6
14
Name
Order
Citations
PageRank
Marco Gillies116920.71
Rebecca Fiebrink228136.77
Atau Tanaka342260.36
Jérémie Garcia4518.09
Frédéric Bevilacqua553971.54
Alexis Heloir618018.54
Fabrizio Nunnari78814.54
Wendy E. Mackay82927526.64
Saleema Amershi977545.16
Bongshin Lee102738143.95
Nicolas D'Alessandro11161.31
Joëlle Tilmanne1210712.24
Todd Kulesza1336215.67
Baptiste Caramiaux1418619.29