A fast mean-field method for large-scale high-dimensional data and its application in colonic polyp detection at CT colonography

Author(s):  
Shijun Wang ◽  
Ronald M. Summers ◽  
Changshui Zhang
2009 ◽  
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pp. 486-494 ◽  
Author(s):  
Masahiro Oda ◽  
Takayuki Kitasaka ◽  
Kensaku Mori ◽  
Yasuhito Suenaga ◽  
Tetsuji Takayama ◽  
...  

2006 ◽  
Author(s):  
David Pilkinton ◽  
Ingmar Bitter ◽  
Ronald M. Summers ◽  
Shannon Campbell ◽  
J. R. Choi ◽  
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2008 ◽  
Vol 36 (1) ◽  
pp. 201-212 ◽  
Author(s):  
Jiang Li ◽  
Adam Huang ◽  
Jack Yao ◽  
Jiamin Liu ◽  
Robert L. Van Uitert ◽  
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1997 ◽  
Author(s):  
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John Loh ◽  
James A. Brink ◽  
Dennis M. Balfe ◽  
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2009 ◽  
Vol 35 (7) ◽  
pp. 859-866
Author(s):  
Ming LIU ◽  
Xiao-Long WANG ◽  
Yuan-Chao LIU

2021 ◽  
Vol 11 (2) ◽  
pp. 472
Author(s):  
Hyeongmin Cho ◽  
Sangkyun Lee

Machine learning has been proven to be effective in various application areas, such as object and speech recognition on mobile systems. Since a critical key to machine learning success is the availability of large training data, many datasets are being disclosed and published online. From a data consumer or manager point of view, measuring data quality is an important first step in the learning process. We need to determine which datasets to use, update, and maintain. However, not many practical ways to measure data quality are available today, especially when it comes to large-scale high-dimensional data, such as images and videos. This paper proposes two data quality measures that can compute class separability and in-class variability, the two important aspects of data quality, for a given dataset. Classical data quality measures tend to focus only on class separability; however, we suggest that in-class variability is another important data quality factor. We provide efficient algorithms to compute our quality measures based on random projections and bootstrapping with statistical benefits on large-scale high-dimensional data. In experiments, we show that our measures are compatible with classical measures on small-scale data and can be computed much more efficiently on large-scale high-dimensional datasets.


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