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Result 21 to 40 of 65 total

Bayesian linear combination of neural networks (English)
Innovations in Neural Information Paradigms and Applications, 201-230 (2009).
WorldCat.org
21
Multiple classifier systems for adversarial classification tasks (English)
MCS, 132-141 (2009).
WorldCat.org
22
Adversarial pattern classification using multiple classifiers and randomisation. (English)
da Vitoria Lobo, Niels (ed.) et al., Structural, syntactic, and statistical pattern recognition. Joint IAPR international workshop, SSPR \& SPR 2008, Orlando, USA, December 4‒6, 2008. Proceedings. Berlin: Springer (ISBN 978-3-540-89688-3/pbk). Lecture Notes in Computer Science 5342, 500-509 (2008).
WorldCat.org
23
A theoretical analysis of bagging as a linear combination of classifiers. (English)
IEEE Trans. Pattern Anal. Mach. Intell. 30, No. 07, 1293-1299 (2008).
WorldCat.org
24
A theoretical analysis of bagging as a linear combination of classifiers (English)
IEEE Trans. Pattern Anal. Mach. Intell. 30, No. 7, 1293-1299 (2008).
WorldCat.org
25
Adversarial pattern classification using multiple classifiers and randomisation (English)
SSPR/SPR, 500-509 (2008).
WorldCat.org
26
Improving image spam filtering using image text features (English)
CEAS (2008).
WorldCat.org
27
Ensemble learning in linearly combined classifiers via negative correlation. (English)
Haindl, Michal (ed.) et al., Multiple classifier systems. 7th international workshop, MCS 2007, Prague, Czech Republic, May 23‒25, 2007. Proceedings. Berlin: Springer (ISBN 978-3-540-72481-0/pbk). Lecture Notes in Computer Science 4472, 440-449 (2007).
WorldCat.org
28
Bayesian analysis of linear combiners. (English)
Haindl, Michal (ed.) et al., Multiple classifier systems. 7th international workshop, MCS 2007, Prague, Czech Republic, May 23‒25, 2007. Proceedings. Berlin: Springer (ISBN 978-3-540-72481-0/pbk). Lecture Notes in Computer Science 4472, 292-301 (2007).
WorldCat.org
29
Ensemble learning in linearly combined classifiers via negative correlation (English)
MCS, 440-449 (2007).
WorldCat.org
30
Bayesian analysis of linear combiners (English)
MCS, 292-301 (2007).
WorldCat.org
31
Image spam filtering using visual information (English)
ICIAP, 105-110 (2007).
WorldCat.org
32
Image spam filtering by content obscuring detection (English)
CEAS (2007).
WorldCat.org
33
Spam filtering based on the analysis of text information embedded into images. (English)
J. Mach. Learn. Res. 7, 2699-2720 (2006).
WorldCat.org
34
Dynamics of variance reduction in bagging and other techniques based on randomisation. (English)
Oza, Nikunj C. (ed.) et al., Multiple classifier systems. 6th international workshop, MCS 2005, Seaside, CA, USA, June 13‒15, 2005. Proceedings. Berlin: Springer (ISBN 978-3-540-26306-7/pbk). Lecture Notes in Computer Science 3541, 316-325 (2005).
WorldCat.org
35
A Theoretical and Experimental Analysis of Linear Combiners for Multiple Classifier Systems. (English)
IEEE Transactions on Pattern Analysis and Machine Intelligence 27, No.06, 942-956 (2005).
WorldCat.org
36
A theoretical and experimental analysis of linear combiners for multiple classifier systems (English)
IEEE Trans. Pattern Anal. Mach. Intell. 27, No. 6, 942-956 (2005).
WorldCat.org
37
Dynamics of variance reduction in bagging and other techniques based on randomisation (English)
Multiple Classifier Systems, 316-325 (2005).
WorldCat.org
38
A two-stage classifier with reject option for text categorisation. (English)
Fred, Ana (ed.) et al., Structural, syntactic, and statistical pattern recognition. Joint IAPR international workshops SSPR 2004 and SPR 2004, Lisbon, Portugal, August 18‒20, 2004. Proceedings. Berlin: Springer (ISBN 3-540-22570-6/pbk). Lecture Notes in Computer Science 3138, 771-779 (2004).
WorldCat.org
39
Analysis of error-reject trade-off in linearly combined multiple classifiers. (English)
Pattern Recognition 37, No. 6, 1245-1265 (2004).
WorldCat.org
40

Result 21 to 40 of 65 total

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