DocumentCode :
2220620
Title :
An extended kernel for generalized multiple-instance learning
Author :
Tao, Qingping ; Scott, Stephen ; Vinodchandran, N.V. ; Osugi, Thomas Takeo ; Mueller, Brandon
Author_Institution :
Dept. of Comput. Sci. & Eng., Nebraska Univ., Lincoln, NE, USA
fYear :
2004
fDate :
15-17 Nov. 2004
Firstpage :
272
Lastpage :
277
Abstract :
The multiple-instance learning (MIL) model has been successful in areas such as drug discovery and content-based image-retrieval. Recently, this model was generalized and a corresponding kernel was introduced to learn generalized MIL concepts with a support vector machine. While this kernel enjoyed empirical success, it has limitations in its representation. We extend this kernel by enriching its representation and empirically evaluate our new kernel on data from content-based image retrieval, biological sequence analysis, and drug discovery. We found that our new kernel generalized noticeably better than the old one in content-based image retrieval and biological sequence analysis and was slightly better or even with the old kernel in the other applications, showing that an SVM using this kernel does not overfit despite its richer representation.
Keywords :
biocomputing; computational complexity; content-based retrieval; data structures; generalisation (artificial intelligence); image retrieval; learning (artificial intelligence); support vector machines; SVM; biological sequence analysis; content-based image-retrieval; drug discovery; extended kernel; generalized multiple-instance learning model; support vector machine; Computer science; Content based retrieval; Drugs; Image analysis; Image retrieval; Image sequence analysis; Information retrieval; Kernel; Shape; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Tools with Artificial Intelligence, 2004. ICTAI 2004. 16th IEEE International Conference on
ISSN :
1082-3409
Print_ISBN :
0-7695-2236-X
Type :
conf
DOI :
10.1109/ICTAI.2004.29
Filename :
1374198
Link To Document :
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