Tech_Reports:
[TR] Shai Shalev-Shwartz and Tong Zhang. Proximal Stochastic Dual Coordinate Ascent, Tech Report arXiv:1211.2717, Nov 2012. [Software: C++ code for solving L1-L2 Regularization] [TR] Shai Shalev-Shwartz and Tong Zhang. Stochastic Dual Coordinate Ascent Methods for Regularized Loss Minimization, Tech Report arXiv:1209.1873, Sep 2012. [TR] Lin Xiao and Tong Zhang. A Proximal-Gradient Homotopy Method for the Sparse Least-Squares Problem, Tech Report arXiv:1203.3002, March 2012. [TR] Cun-hui Zhang and Tong Zhang. A General Framework of Dual Certificate Analysis for Structured Sparse Recovery Problems, Tech Report arXiv:1201.3302, Jan 2012. [TR] Xiaotong Yuan and Tong Zhang. Truncated Power Method for Sparse Eigenvalue Problems, Tech Report arXiv:1112.2679, Dec 2011. [TR] Rie Johnson and Tong Zhang. Learning Nonlinear Functions Using Regularized Greedy Forest, Tech Report arXiv:1109.0887, Sept 2011. [TR] Animashree Anandkumar and Kamalika Chaudhuri and Daniel Hsu and Sham M. Kakade and Le Song and Tong Zhang. Spectral Methods for Learning Multivariate Latent Tree Structure, Tech Report arXiv:1107.1283, July 2011. [TR] Daniel Hsu and Sham M. Kakade and Tong Zhang. An Analysis of Random Design Linear Regression, Tech Report arXiv:1106.2363, June 2011. [TR] Alina Beygelzimer and Daniel Hsu and John Langford and Tong Zhang. Agnostic Active Learning without Constraints, Tech Report arXiv:1006.2588, June 2010. [TR] Dean P. Foster, Rie Johnson, Sham M. Kakade and Tong Zhang. Multi-View Dimensionality Reduction via Canonical Correlation Analysis, May Tech Report, 2009. |
2012:
[114] Dong Dai and Philippe Rigollet and Tong Zhang. Deviation Optimal Learning using Greedy Q-aggregation, Annals of Statistics, to appear. [113] Zhipeng Cai, Mariette F Ducatez, Jialiang Yang, Tong Zhang, Li-Ping Long, Adrianus C. Boon, Richard J. Webby and Xiu-Feng Wan. Identifying antigenicity associated sites in highly pathogenic H5N1 influenza virus hemagglutinin by using sparse learning. Journal of Molecular Biology, 2012. [112] Tong Zhang. Multistage Convex Relaxation for Feature Selection, Bernoulli, 2012. [111] Daniel Hsu and Sham M. Kakade and Tong Zhang. A Spectral Algorithm for Learning Hidden Markov Models, Journal of Computer and System Sciences, 2012. [110] Cun-hui Zhang and Tong Zhang. A General Theory of Concave Regularization for High Dimensional Sparse Estimation Problems, Statistical Science, 2012. [109] Daniel Hsu and Sham M. Kakade and Tong Zhang. A tail inequality for quadratic forms of sub-Gaussian random vectors, Electronic Communications in Probability, 52, article 14, 2012. [108] Daniel Hsu and Sham M. Kakade and Tong Zhang. Tail inequalities for sums of random matrices that depend on the intrinsic dimension, Electronic Communications in Probability, 17, article 14, 2012. [107] Quanquan Gu and Tong Zhang and Chris Ding and Jiawei Han. Selective Labeling via Error Bound Minimization. NIPS 12, 2012. [106] Daniel Hsu and Sham M. Kakade and Tong Zhang . Random Design Analysis of Ridge Regression, COLT 12, 2012. [full version] [105] Lin Xiao and Tong Zhang. A Proximal-Gradient Homotopy Method for the L1-Regularized Least-Squares Problem, ICML 12, 2012. [full version] |
2011:
[104] Junzhou Huang, Tong Zhang and Dimitris Metaxas. Learning with Structured Sparsity,JMLR, 12:3371-3412, 2011. [103] Wenyuan Li and Chun-Chi Liu and Tong Zhang and Haifeng Li and Michael S. Waterman and Xianghong Jasmine Zhou. Integrative Analysis of Many Weighted Co-expression Networks Using Tensor Computation, PLoS Comput. Biol 7(6) e1001106, (url) 2011. [102] Daniel Hsu and Sham Kakade and Tong Zhang. Robust Matrix Decomposition with Sparse Corruptions, IEEE Trans. Info. Th, 57:7221-7234, 2011. [101] Tong Zhang. Sparse Recovery with Orthogonal Matching Pursuit under RIP, IEEE Trans. Info. Th, 57:5215-6221, 2011. [100] Tong Zhang. Adaptive Forward-Backward Greedy Algorithm for Learning Sparse Representations, IEEE Trans. Info. Th, 57:4689-4708, 2011. (software: R source package) [99] Zhen Li, Huazhong Ning, Liangliang Cao, Tong Zhang, Yihong Gong. Learning to Search Efficiently in High Dimensions, NIPS 11, 2011. [98] Animashree Anandkumar, Kamalika Chaudhuri, Daniel Hsu, Sham M. Kakade, Le Song, and Tong Zhang. Spectral methods for learning multivariate latent tree structure, NIPS 11, 2011. [97] Dong Dai and Tong Zhang. Greedy Model Averaging, NIPS�€™11, 2010. [improved version] [96] Miroslav Dudik and Daniel Hsu and Satyen Kale and Nikos Karampatziakis and John Langford and Lev Reyzin and Tong Zhang. Efficient Optimal Learning for Contextual Bandits, UAI 2011. (arxiv 1106.2369) |
2010:
[95] Zhipeng Cai and Tong Zhang and Xiu-Feng Wan. A Computational Framework for Influenza Antigenic Cartography. PLoS Comput Biol, 6(10) e1000949 (url), 2010. [94] Shai Shalev-Shwartz and Nathan Srebro and Tong Zhang. Trading Accuracy for Sparsity in Optimization Problems with Sparsity Constraints, Siam Journal on Optimization, 20:2807-2832, 2010. [93] Junzhou Huang and Tong Zhang. The Benefit of Group Sparsity. Annals of Statistics, 38:1978-2004, 2010. [92] Tong Zhang. Analysis of Multi-stage Convex Relaxation for Sparse Regularization, Journal of Machine Learning Research, 11:1081-1107, 2010. [91] Tong Zhang. Fundamental Statistical Techniques, Chapter in Handbook of Natural Language Processing, Chapman & Hall/CRC, 2010. [90] Alina Beygelzimer and Daniel Hsu and John Langford and Tong Zhang. Agnostic Active Learning Without Constraints, NIPS 10, 2010. [89] Yuanqing Lin and Tong Zhang and Shenghuo Zhu and Kai Yu. Deep Coding Networks. NIPS 10, 2010. [88] Xi Zhou and Kai Yu and Tong Zhang and Thomas Huang. Image Classification using Super-Vector Coding of Local Image Descriptors, ECCV 10, 2010. [87] Kai Yu and Tong Zhang. Improved Local Coordinate Coding using Local Tangents, In ICML 10, 2010. |
2009:
[86] Tong Zhang. Some Sharp Performance Bounds for Least Squares Regression with L1 Regularization. Annals of Statistics, 37:2109-2114, 2009. [85] Andrei Broder, Marcus Fontoura, Evgeniy Gabrilovich, Amruta Joshi, Vanja Josifovski, Lance Riedel and Tong Zhang. Classifying Search Quries Using the Web as a Source of Knowledge. ACM Transactions on the Web, 3:1-28, 2009. [84] John Langford, Lihong Li and Tong Zhang. Sparse Online Learning via Truncated Gradient. Journal of Machine Learning Research, 10:777-801, 2009. [83] Tong Zhang. On the Consistency of Feature Selection using Greedy Least Squares Regression. Journal of Machine Learning Research, 10:555-568, 2009. [82] Junzhou Huang, Tong Zhang and Dimitris Metaxas. Learning with Structured Sparsity. In ICML 09, 2009. [81] John Langford, Ruslan Salakhutdinov and Tong Zhang. Learning Nonlinear Dynamic Models. In ICML 09, 2009. [80] Daniel Hsu and Sham M. Kakade and Tong Zhang. A Spectral Algorithm for Learning Hidden Markov Models, In COLT 09, 2009. [79] Kai Yu and Tong Zhang and Yihong Gong. Nonlinear Learning using Local Coordinate Coding, In NIPS 09, 2009. (full version) [78] Daniel Hsu and Sham M. Kakade and John Langford and Tong Zhang. Multi-label Prediction via Compressed Sensing, In NIPS 09, 2009. |
2008:
[77] David Cossock and Tong Zhang. Statistical Analysis of Bayes Optimal Subset Ranking. IEEE Trans. Info. Theory, 54:4140-5154, 2008. [76] Christoph Tillmann and Tong Zhang. An Online Relevant Set Algorithm for Statistical Machine Translation. IEEE Transactions on Audio, Speech, and Language processing, 16: 1274-1286, 2008. [75] Rie Johnson and Tong Zhang. Graph-based semi-supervised learning and spectral kernel design. IEEE Trans. Info. Theory, 54:275-288, 2008. [74] Tong Zhang. Adaptive Forward-Backward Greedy Algorithm for Sparse Learning with Linear Models. In NIPS 08, 2008. (full version) [73] Tong Zhang. Multi-stage Convex Relaxation for Learning with Sparse Regularization. In NIPS 08, 2008. (software: R source package) [72] John Langford, Lihong Li and Tong Zhang. Sparse Online Learning via Truncated Gradient. In NIPS'08, 2008. |
2007:
[71] Rie Johnson and Tong Zhang. On the effectiveness of Laplacian normalization for graph semi-supervised learning. JMLR, 8:1489-1517, 2007. [70] Christoph Tillmann and Tong Zhang. A block bigram prediction model for statistical machine translation. ACM Transactions on Speech and Language Processing , 4, 2007. [69] Maria-Florina Balcan, Andrei Broder, and Tong Zhang. Margin based active learning. In COLT'07, 2007. [68] Rie K. Ando and Tong Zhang. Two-view feature generation model for semi-supervised learning. In ICML'07, 2007. [67] John Langford and Tong Zhang. The Epoch-Greedy algorithm for multiarmed bandits with side information. In NIPS'07, 2007. [66] Zhaohui Zheng, Hongyuan Zha, Tong Zhang, Olivier Chapelle Keke Chen, Gordon Sun. A general boosting method and its application to learning ranking functions for web search. In NIPS'07, 2007. [65] Andrei Broder, Marcus Fontoura, Evgeniy Gabrilovich, Amruta Joshi,Vanja Josifovski, and Tong Zhang. Robust classification of rare queries using web knowledge. In SIGIR'07, 2007. |
[64] Tong Zhang. Information Theoretical Upper and Lower Bounds for Statistical Estimation. IEEE Transaction on Information Theory, 52:1307-1321, 2006. [63] Tong Zhang. From epsilon-entropy to KL-entropy: analysis of minimum information complexity density estimation. The Annals of Statistics, 34:2180-2210, 2006. [62] Christoph Tillmann and Tong Zhang. A discriminative global training algorithm for statistical MT. In ACL'06, 2006 (full version is [76]). [61] Tong Zhang, Alexandrin Popescul, and Byron Dom. Linear prediction models with graph regularization for web-page categorization. In KDD'06, 2006. [60] Rie K. Ando and Tong Zhang. Learning on graph with Laplacian regularization. In NIPS, 2006 (full paper). [59] David Cossock and Tong Zhang. Subset ranking using regression. In Proc. COLT'06, 2006 (long version is [77] ). [58] Rie K. Ando, Mark Dredze and Tong Zhang. TREC 2005 Genomics Track Experiments at IBM Watson. Proceedings of TREC 05, 2006. |
[57] Rie K. Ando and Tong Zhang. A Framework for Learning Predictive Structures from Multiple Tasks and Unlabeled Data. JMLR, 6:1817-1853, 2005. [56] Tong Zhang and Bin Yu. Boosting with early stopping: Convergence and Consistency. The Annals of Statistics,33:1538-1579, 2005. [54] Tong Zhang and Rie K. Ando. Analysis of Spectral Kernel Design based Semi-supervised Learning. NIPS, 2005 (long version is [75]). |
[49] Sholom M. Weiss, Nitin Indurkhya, Tong Zhang, and Fred Damerau. Text Mining: Predictive Methods for Analyzing Unstructured Information, Springer-Verlag, New York, 2004. [48] Tong Zhang. Statistical Analysis of Some Multi-Category Large Margin Classification Methods. JMLR, 5:1225-1251, 2004. |
[39] Ron Meir and Tong Zhang. Generalization error bounds for Bayesian mixture algorithms. Journal of Machine Learning Research, 4:839-860, 2003. |
[27] David E. Johnson, Frank J. Oles, Tong Zhang, and Thilo Goetz. A decision-tree-based symbolic rule induction system for text categorization. IBM Systems Journal, 41:428-437, 2002. |
[14] Tong Zhang and Frank J. Oles. Text categorization based on regularized linear classification methods. Information Retrieval, 4:5-31, 2001. |
[5] Jane Cullum, Albert Ruehli, and Tong Zhang. A method for reduced-order modeling and simulation of large interconnect circuits and its application to PEEC models including retardation. IEEE Trans. Circ. Sys., 47:261-273, 2000. |
T. Zhang, G. Golub, and K.H. Law. Subspace iterative methods for eigenvalue problems. Lin. Alg. and Appl., 294:239-258, 1999. |