A brief introduction to weakly supervised learning(简要介绍弱监督学习) (7)

Miller DJ and Uyar HS. A mixture of experts classi er with learning based on both labelled and unlabelled data. In Advances in Neural Information Processing Systems 9, Cam- bridge, MA: MIT Press, 1997; 571–7.   

Nigam K, McCallum AK and Thrun S et al. Text classi cation from labeled and unlabeled documents using EM. Mach Learn 2000; 39: 103–34.   

Dempster AP, Laird NM and Rubin DB. Maximum likelihood from incomplete data via the EM algorithm. J Roy Stat Soc B Stat Meth 1977; 39: 1–38.  

Fujino A, Ueda N and Saito K. A hybrid genera- tive/discriminative approach to semi-supervised classier design. In 20th National Conference on Articial Intelligence, Pittsburgh, PA, 2005; 764–9. 

Blum A and Chawla S. Learning from labeled and unlabeled data using graph mincuts. In ICML, 2001; 19–26. 

Zhu X, Ghahramani Z and Lafferty J. Semi-supervised learn- ing using Gaussian elds and harmonic functions. In 20th International Conference on Machine Learning, Washington, DC, 2003; 912–9. 

Zhou D, Bousquet O and Lal TN et al. Learning with local and global consistency. In Advances in Neural Information Processing Systems 16, Cambridge, MA: MIT Press, 2004; 321–8. 

Carreira-Perpinan MA and Zemel RS. Proximity graphs for clustering and manifold learning. In Advances in Neural Information Processing Systems 17, Cambridge, MA: MIT Press, 2005; 225–32. 

Wang F and Zhang C. Label propagation through linear neighborhoods. In 23rd International Conference on Machine Learning, Pittsburgh, PA, 2006; 985–92. 

Hein M and Maier M. Manifold denoising. In Advances in Neural Information Processing Systems 19, Cambridge, MA: MIT Press, 2007; pp. 561–8. 

Joachims T. Transductive inference for text classi cation using support vector machines. In 16th International Conference on Machine Learning, Bled, Slovenia, 1999; 200–9. 

Chapelle O and Zien A. Semi-supervised learning by low density separation. In 10th International Workshop on Articial Intelligence and Statistics, Barbados, 2005; 57–64.

Li YF, Tsang IW and Kwok JT et al. Convex and scalable weakly labeled SVMs. J Mach Learn Res 2013; 14: 2151–88.

Blum A and Mitchell T. Combining labeled and unlabeled data with co- training. In 11th Conference on Computational Learning Theory, Madison, WI, 1998; 92–100. 

Zhou Z-H and Li M. Tri-training: exploiting unlabeled data using three classiers. IEEE Trans Knowl Data Eng 2005; 17: 1529–41. 

Zhou Z-H. When semi-supervised learning meets ensemble learning. In 8th International Workshop on Multiple Classi er Systems, Reykjavik, Iceland, 2009; 529–38. 

Zhou Z-H. Ensemble Methods: Foundations and Algorithms. Boca Raton: CRC Press, 2012. 

Cozman FG and Cohen I. Unlabeled data can degrade classi cation performance of generative classi ers. In 15th International Conference of the Florida Arti cial Intelligence Research Society, Pensacola, FL, 2002; 327–31. 

Li YF and Zhou ZH. Towards making unlabeled data never hurt. IEEE Trans Pattern Anal Mach Intell 2015; 37: 175–88. 

Castelli V and Cover TM. On the exponential value of labeled samples. Pattern Recogn Lett 1995; 16: 105–11. 

Wang W and Zhou ZH. Theoretical foundation of co-training and disagreement-based algorithms. arXiv:1708.04403, 2017. 

Dietterich TG, Lathrop RH and Lozano-Pe ́rez T. Solving the multiple-instance problem with axis-parallel rectangles. Artif Intell 1997; 89: 31–71. 

Foulds J and Frank E. A review of multi-instance learning assumptions. Knowl Eng Rev 2010; 25: 1–25. 

Zhou Z-H. Multi-instance learning from supervised view. J Comput Sci Technol 2006; 21: 800–9. 

Zhou Z-H and Zhang M-L. Solving multi-instance problems with classi er ensemble based on constructive clustering. Knowl Inform Syst 2007; 11: 155–70. 

Wei X-S, Wu J and Zhou Z-H Scalable algorithms for multi-instance learning. IEEE Trans Neural Network Learn Syst 2017; 28:975–87. 

Amores J. Multiple instance classi cation: review, taxonomy and comparative study. Artif Intell 2013; 201: 81–105. 

Zhou Z-H and Xu J-M. On the relation between multi-instance learning and semi-supervised learning. In 24th International Conference on Machine Learning, Corvallis, OR, 2007; 1167–74. 

Zhou Z-H, Sun Y-Y and Li Y-F. Multi-instance learning by treating instances as non-i.i.d. samples. In 26th International Conference on Machine Learning, Montreal, Canada, 2009; 1249–56. 

Chen Y and Wang JZ. Image categorization by learning and reasoning with regions. J Mach Learn Res 2004; 5: 913–39. 

Zhang Q, Yu W and Goldman SA et al. Content-based image retrieval using multiple-instance learning. In 19th International Conference on Machine Learning, Sydney, Australia, 2002; 682–9. 

Tang JH, Li HJ and Qi GJ et al. Image annotation by graph-based inference with integrated multiple/single instance representations. IEEE Trans Multimed 2010; 12: 131–41. 

内容版权声明:除非注明,否则皆为本站原创文章。

转载注明出处:https://www.heiqu.com/wpgwyz.html