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Case studies in the use of ROC curve analysis for sensor-based estimates in human computer interaction
Full text PdfPdf (367 KB)
Source GI; Vol. 112 archive
Proceedings of Graphics Interface 2005 table of contents
Victoria, British Columbia
SESSION: Sensing interaction table of contents
Pages: 129 - 136  
Year of Publication: 2005
ISBN ~ ISSN:0713-5424 , 1-56881-265-5
Authors
James Fogarty  Carnegie Mellon University
Ryan S. Baker  Carnegie Mellon University
Scott E. Hudson  Carnegie Mellon University
Sponsor
CHCCS : The Canadian Human-Computer Communications Society
Publisher
Canadian Human-Computer Communications Society  School of Computer Science, University of Waterloo, Waterloo, Ontario, Canada
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Downloads (6 Weeks): 45,   Downloads (12 Months): 210,   Citation Count: 5
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ABSTRACT

Applications that use sensor-based estimates face a fundamental tradeoff between true positives and false positives when examining the reliability of these estimates, one that is inadequately described by the straightforward notion of accuracy. To address this tradeoff, this paper examines the use of Receiver Operating Characteristic (ROC) curve analysis, a method that has a long history but is under-appreciated in the human computer interaction research community. We present the fundamentals of ROC analysis, the use of the A' statistic to compute the area under an ROC curve, and the equivalence of A' to the Wilcoxon statistic. We then present several case studies, framed in the context of our work on human interruptibility, demonstrating how ROC analysis can yield better results than analyses based on accuracy. These case studies compare sensor-based estimates with human performance, optimize a feature selection process for the area under the ROC curve, and examine end-user selection of a desirable tradeoff.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
1
Bradley, A. P. (1997) The Use of the Area Under the ROC Curve in the Evaluation of Machine Learning Algorithms. Pattern Recognition, 30. 1145--1159.
 
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Collaborative Colleagues:
James Fogarty: colleagues
Ryan S. Baker: colleagues
Scott E. Hudson: colleagues