Title
Who Said What: Modeling Individual Labelers Improves Classification
Abstract
Data are often labeled by many different experts with each expert only labeling a small fraction of the data and each data point being labeled by several experts. This reduces the workload on individual experts and also gives a better estimate of the unobserved ground truth. When experts disagree, the standard approaches are to treat the majority opinion as the correct label and to model the correct label as a distribution. These approaches, however, do not make any use of potentially valuable information about which expert produced which label. To make use of this extra information, we propose modeling the experts individually and then learning averaging weights for combining them, possibly in sample-specific ways. This allows us to give more weight to more reliable experts and take advantage of the unique strengths of individual experts at classifying certain types of data. Here we show that our approach leads to improvements in computer-aided diagnosis of diabetic retinopathy. We also show that our method performs better than competing algorithms by Welinder and Perona (2010); Mnih and Hinton (2012). Our work offers an innovative approach for dealing with the myriad real-world settings that use expert opinions to define labels for training.
Year
Venue
DocType
2018
national conference on artificial intelligence
Conference
Volume
Citations 
PageRank 
abs/1703.08774
12
0.65
References 
Authors
21
4
Name
Order
Citations
PageRank
Melody Y. Guan1120.65
Varun Gulshan2241.54
Andrew M. Dai353424.53
geoffrey e hinton4404354751.69