| 2009 | ||
|---|---|---|
| 80 | Jacob Abernethy, Alekh Agarwal, Peter L. Bartlett, Alexander Rakhlin: A Stochastic View of Optimal Regret through Minimax Duality CoRR abs/0903.5328: (2009) | |
| 79 | Benjamin I. P. Rubinstein, Peter L. Bartlett, J. Hyam Rubinstein: Shifting: One-inclusion mistake bounds and sample compression. J. Comput. Syst. Sci. 75(1): 37-59 (2009) | |
| 2008 | ||
| 78 | Marco Barreno, Peter L. Bartlett, Fuching Jack Chi, Anthony D. Joseph, Blaine Nelson, Benjamin I. P. Rubinstein, Udam Saini, J. Doug Tygar: Open problems in the security of learning. AISec 2008: 19-26 | |
| 77 | Peter L. Bartlett, Varsha Dani, Thomas P. Hayes, Sham Kakade, Alexander Rakhlin, Ambuj Tewari: High-Probability Regret Bounds for Bandit Online Linear Optimization. COLT 2008: 335-342 | |
| 76 | Jacob Abernethy, Peter L. Bartlett, Alexander Rakhlin, Ambuj Tewari: Optimal Stragies and Minimax Lower Bounds for Online Convex Games. COLT 2008: 415-424 | |
| 75 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: Correction to "The Importance of Convexity in Learning With Squared Loss". IEEE Transactions on Information Theory 54(9): 4395 (2008) | |
| 2007 | ||
| 74 | Ambuj Tewari, Peter L. Bartlett: Bounded Parameter Markov Decision Processes with Average Reward Criterion. COLT 2007: 263-277 | |
| 73 | Jacob Abernethy, Peter L. Bartlett, Alexander Rakhlin: Multitask Learning with Expert Advice. COLT 2007: 484-498 | |
| 72 | Alexander Rakhlin, Jacob Abernethy, Peter L. Bartlett: Online discovery of similarity mappings. ICML 2007: 767-774 | |
| 71 | Peter L. Bartlett, Elad Hazan, Alexander Rakhlin: Adaptive Online Gradient Descent. NIPS 2007 | |
| 70 | Ambuj Tewari, Peter L. Bartlett: Optimistic Linear Programming gives Logarithmic Regret for Irreducible MDPs. NIPS 2007 | |
| 2006 | ||
| 69 | Peter L. Bartlett, Mikhail Traskin: AdaBoost is Consistent. NIPS 2006: 105-112 | |
| 68 | Benjamin I. P. Rubinstein, Peter L. Bartlett, J. Hyam Rubinstein: Shifting, One-Inclusion Mistake Bounds and Tight Multiclass Expected Risk Bounds. NIPS 2006: 1193-1200 | |
| 67 | Peter L. Bartlett, Ambuj Tewari: Sample Complexity of Policy Search with Known Dynamics. NIPS 2006: 97-104 | |
| 2005 | ||
| 66 | Ambuj Tewari, Peter L. Bartlett: On the Consistency of Multiclass Classification Methods. COLT 2005: 143-157 | |
| 2004 | ||
| 65 | Peter L. Bartlett, Shahar Mendelson, Petra Philips: Local Complexities for Empirical Risk Minimization. COLT 2004: 270-284 | |
| 64 | Peter L. Bartlett, Ambuj Tewari: Sparseness Versus Estimating Conditional Probabilities: Some Asymptotic Results. COLT 2004: 564-578 | |
| 63 | Peter L. Bartlett, Michael Collins, Benjamin Taskar, David A. McAllester: Exponentiated Gradient Algorithms for Large-margin Structured Classification. NIPS 2004 | |
| 62 | Evan Greensmith, Peter L. Bartlett, Jonathan Baxter: Variance Reduction Techniques for Gradient Estimates in Reinforcement Learning. Journal of Machine Learning Research 5: 1471-1530 (2004) | |
| 61 | Gert R. G. Lanckriet, Nello Cristianini, Peter L. Bartlett, Laurent El Ghaoui, Michael I. Jordan: Learning the Kernel Matrix with Semidefinite Programming. Journal of Machine Learning Research 5: 27-72 (2004) | |
| 2003 | ||
| 60 | Peter L. Bartlett, Michael I. Jordan, Jon D. McAuliffe: Large Margin Classifiers: Convex Loss, Low Noise, and Convergence Rates. NIPS 2003 | |
| 2002 | ||
| 59 | Peter L. Bartlett, Olivier Bousquet, Shahar Mendelson: Localized Rademacher Complexities. COLT 2002: 44-58 | |
| 58 | Gert R. G. Lanckriet, Nello Cristianini, Peter L. Bartlett, Laurent El Ghaoui, Michael I. Jordan: Learning the Kernel Matrix with Semi-Definite Programming. ICML 2002: 323-330 | |
| 57 | Peter L. Bartlett: An Introduction to Reinforcement Learning Theory: Value Function Methods. Machine Learning Summer School 2002: 184-202 | |
| 56 | Ying Guo, Peter L. Bartlett, John Shawe-Taylor, Robert C. Williamson: Covering numbers for support vector machines. IEEE Transactions on Information Theory 48(1): 239-250 (2002) | |
| 55 | Peter L. Bartlett, Paul Fischer, Klaus-Uwe Höffgen: Exploiting Random Walks for Learning. Inf. Comput. 176(2): 121-135 (2002) | |
| 54 | Peter L. Bartlett, Jonathan Baxter: Estimation and Approximation Bounds for Gradient-Based Reinforcement Learning. J. Comput. Syst. Sci. 64(1): 133-150 (2002) | |
| 53 | Llew Mason, Peter L. Bartlett, Mostefa Golea: Generalization Error of Combined Classifiers. J. Comput. Syst. Sci. 65(2): 415-438 (2002) | |
| 52 | Peter L. Bartlett, Shahar Mendelson: Rademacher and Gaussian Complexities: Risk Bounds and Structural Results. Journal of Machine Learning Research 3: 463-482 (2002) | |
| 51 | Peter L. Bartlett, Stéphane Boucheron, Gábor Lugosi: Model Selection and Error Estimation. Machine Learning 48(1-3): 85-113 (2002) | |
| 50 | Peter L. Bartlett, Shai Ben-David: Hardness results for neural network approximation problems. Theor. Comput. Sci. 284(1): 53-66 (2002) | |
| 2001 | ||
| 49 | Peter L. Bartlett, Shahar Mendelson: Rademacher and Gaussian Complexities: Risk Bounds and Structural Results. COLT/EuroCOLT 2001: 224-240 | |
| 48 | Evan Greensmith, Peter L. Bartlett, Jonathan Baxter: Variance Reduction Techniques for Gradient Estimates in Reinforcement Learning. NIPS 2001: 1507-1514 | |
| 47 | Jonathan Baxter, Peter L. Bartlett: Infinite-Horizon Policy-Gradient Estimation. J. Artif. Intell. Res. (JAIR) 15: 319-350 (2001) | |
| 46 | Jonathan Baxter, Peter L. Bartlett, Lex Weaver: Experiments with Infinite-Horizon, Policy-Gradient Estimation. J. Artif. Intell. Res. (JAIR) 15: 351-381 (2001) | |
| 2000 | ||
| 45 | Peter L. Bartlett, Jonathan Baxter: Estimation and Approximation Bounds for Gradient-Based Reinforcement Learning. COLT 2000: 133-141 | |
| 44 | Peter L. Bartlett, Stéphane Boucheron, Gábor Lugosi: Model Selection and Error Estimation. COLT 2000: 286-297 | |
| 43 | Jonathan Baxter, Peter L. Bartlett: Reinforcement Learning in POMDP's via Direct Gradient Ascent. ICML 2000: 41-48 | |
| 42 | Alex J. Smola, Peter L. Bartlett: Sparse Greedy Gaussian Process Regression. NIPS 2000: 619-625 | |
| 41 | Martin Anthony, Peter L. Bartlett: Function Learning From Interpolation. Combinatorics, Probability & Computing 9(3): (2000) | |
| 40 | Llew Mason, Peter L. Bartlett, Jonathan Baxter: Improved Generalization Through Explicit Optimization of Margins. Machine Learning 38(3): 243-255 (2000) | |
| 39 | Peter L. Bartlett, Shai Ben-David, Sanjeev R. Kulkarni: Learning Changing Concepts by Exploiting the Structure of Change. Machine Learning 41(2): 153-174 (2000) | |
| 38 | Bernhard Schölkopf, Alex J. Smola, Robert C. Williamson, Peter L. Bartlett: New Support Vector Algorithms. Neural Computation 12(5): 1207-1245 (2000) | |
| 1999 | ||
| 37 | Ying Guo, Peter L. Bartlett, John Shawe-Taylor, Robert C. Williamson: Covering Numbers for Support Vector Machines. COLT 1999: 267-277 | |
| 36 | Peter L. Bartlett, Shai Ben-David: Hardness Results for Neural Network Approximation Problems. EuroCOLT 1999: 50-62 | |
| 35 | Llew Mason, Jonathan Baxter, Peter L. Bartlett, Marcus R. Frean: Boosting Algorithms as Gradient Descent. NIPS 1999: 512-518 | |
| 1998 | ||
| 34 | Peter L. Bartlett, Vitaly Maiorov, Ron Meir: Almost Linear VC Dimension Bounds for Piecewise Polynomial Networks. NIPS 1998: 190-196 | |
| 33 | Llew Mason, Peter L. Bartlett, Jonathan Baxter: Direct Optimization of Margins Improves Generalization in Combined Classifiers. NIPS 1998: 288-294 | |
| 32 | Bernhard Schölkopf, Peter L. Bartlett, Alex J. Smola, Robert C. Williamson: Shrinking the Tube: A New Support Vector Regression Algorithm. NIPS 1998: 330-336 | |
| 31 | Peter L. Bartlett: The Sample Complexity of Pattern Classification with Neural Networks: The Size of the Weights is More Important than the Size of the Network. IEEE Transactions on Information Theory 44(2): 525-536 (1998) | |
| 30 | Peter L. Bartlett, Tamás Linder, Gábor Lugosi: The Minimax Distortion Redundancy in Empirical Quantizer Design. IEEE Transactions on Information Theory 44(5): 1802-1813 (1998) | |
| 29 | John Shawe-Taylor, Peter L. Bartlett, Robert C. Williamson, Martin Anthony: Structural Risk Minimization Over Data-Dependent Hierarchies. IEEE Transactions on Information Theory 44(5): 1926-1940 (1998) | |
| 28 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: The Importance of Convexity in Learning with Squared Loss. IEEE Transactions on Information Theory 44(5): 1974-1980 (1998) | |
| 27 | Peter L. Bartlett, Philip M. Long: Prediction, Learning, Uniform Convergence, and Scale-Sensitive Dimensions. J. Comput. Syst. Sci. 56(2): 174-190 (1998) | |
| 26 | Peter L. Bartlett, Vitaly Maiorov, Ron Meir: Almost Linear VC-Dimension Bounds for Piecewise Polynomial Networks. Neural Computation 10(8): 2159-2173 (1998) | |
| 1997 | ||
| 25 | Peter L. Bartlett, Tamás Linder, Gábor Lugosi: A Minimax Lower Bound for Empirical Quantizer Design. EuroCOLT 1997: 210-222 | |
| 24 | Jonathan Baxter, Peter L. Bartlett: A Result Relating Convex n-Widths to Covering Numbers with some Applications to Neural Networks. EuroCOLT 1997: 251-259 | |
| 23 | Mostefa Golea, Peter L. Bartlett, Wee Sun Lee, Llew Mason: Generalization in Decision Trees and DNF: Does Size Matter? NIPS 1997 | |
| 22 | Jonathan Baxter, Peter L. Bartlett: The Canonical Distortion Measure in Feature Space and 1-NN Classification. NIPS 1997 | |
| 21 | Peter L. Bartlett, Sanjeev R. Kulkarni, S. E. Posner: Covering numbers for real-valued function classes. IEEE Transactions on Information Theory 43(5): 1721-1724 (1997) | |
| 20 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: Correction to 'Lower Bounds on the VC-Dimension of Smoothly Parametrized Function Classes'. Neural Computation 9(4): 765-769 (1997) | |
| 1996 | ||
| 19 | Peter L. Bartlett, Shai Ben-David, Sanjeev R. Kulkarni: Learning Changing Concepts by Exploiting the Structure of Change. COLT 1996: 131-139 | |
| 18 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: The Importance of Convexity in Learning with Squared Loss. COLT 1996: 140-146 | |
| 17 | John Shawe-Taylor, Peter L. Bartlett, Robert C. Williamson, Martin Anthony: A Framework for Structural Risk Minimisation. COLT 1996: 68-76 | |
| 16 | Peter L. Bartlett: For Valid Generalization the Size of the Weights is More Important than the Size of the Network. NIPS 1996: 134-140 | |
| 15 | Martin Anthony, Peter L. Bartlett, Yuval Ishai, John Shawe-Taylor: Valid Generalisation from Approximate Interpolation. Combinatorics, Probability & Computing 5: 191-214 (1996) | |
| 14 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: Efficient agnostic learning of neural networks with bounded fan-in. IEEE Transactions on Information Theory 42(6): 2118-2132 (1996) | |
| 13 | Peter L. Bartlett, Philip M. Long, Robert C. Williamson: Fat-Shattering and the Learnability of Real-Valued Functions. J. Comput. Syst. Sci. 52(3): 434-452 (1996) | |
| 1995 | ||
| 12 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: On Efficient Agnostic Learning of Linear Combinations of Basis Functions. COLT 1995: 369-376 | |
| 11 | Peter L. Bartlett, Philip M. Long: More Theorems about Scale-sensitive Dimensions and Learning. COLT 1995: 392-401 | |
| 10 | Martin Anthony, Peter L. Bartlett: Function learning from interpolation. EuroCOLT 1995: 211-221 | |
| 9 | Adam Kowalczyk, Jacek Szymanski, Peter L. Bartlett, Robert C. Williamson: Examples of learning curves from a modified VC-formalism. NIPS 1995: 344-350 | |
| 1994 | ||
| 8 | Peter L. Bartlett, Philip M. Long, Robert C. Williamson: Fat-Shattering and the Learnability of Real-Valued Functions. COLT 1994: 299-310 | |
| 7 | Peter L. Bartlett, Paul Fischer, Klaus-Uwe Höffgen: Exploiting Random Walks for Learning. COLT 1994: 318-327 | |
| 6 | Wee Sun Lee, Peter L. Bartlett, Robert C. Williamson: Lower Bounds on the VC-Dimension of Smoothly Parametrized Function Classes. COLT 1994: 362-367 | |
| 1993 | ||
| 5 | Peter L. Bartlett: Lower Bounds on the Vapnik-Chervonenkis Dimension of Multi-Layer Threshold Networks. COLT 1993: 144-150 | |
| 4 | Peter L. Bartlett: Vapnik-Chervonenkis Dimension Bounds for Two- and Three-Layer Networks. Neural Computation 5(3): 371-373 (1993) | |
| 1992 | ||
| 3 | Peter L. Bartlett: Learning With a Slowly Changing Distribution. COLT 1992: 243-252 | |
| 1991 | ||
| 2 | Peter L. Bartlett, Robert C. Williamson: Investigating the Distribution Assumptions in the Pac Learning Model. COLT 1991: 24-32 | |
| 1 | Robert C. Williamson, Peter L. Bartlett: Splines, Rational Functions and Neural Networks. NIPS 1991: 1040-1047 | |