SHREC'10 Track: Protein Model Classification
نویسندگان
چکیده
This paper presents the results of the 3D Shape Retrieval Contest 2010 (SHREC’10) track Protein Models Classification. The aim of this track is to evaluate how well 3D shape recognition algorithms can classify protein structures according to the CATH [CSL∗08] superfamily classification. Five groups participated in this track, using a total of six methods, and for each method a set of ranked predictions was submitted for each classification task. The evaluation of each method is based on the nearest neighbour and area under the curve(AUC) metrics.
منابع مشابه
SHREC’10 Track: Protein Models
This paper presents the results of the SHREC’10 Protein Models Classification Track. The aim of this track is to evaluate how well 3D shape recognition algorithms can classify protein structures according to the CATH [CSL08] superfamily classification. Five groups participated in this track, using a total of six methods, and for each method a set of ranked predictions was submitted for each cla...
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