Ronny Meir
List of publications from the DBLP Bibliography Server - FAQ
| 2009 | ||
|---|---|---|
| 53 | Dotan Di Castro, Ronny Meir: A Convergent Online Single Time Scale Actor Critic Algorithm CoRR abs/0909.2934: (2009) | |
| 52 | Dotan Di Castro, Ron Meir, Irad Yavneh: Delays and Oscillations in Networks of Spiking Neurons: A Two-Timescale Analysis. Neural Computation 21(4): 1100-1124 (2009) | |
| 51 | Omer Bobrowski, Ron Meir, Yonina C. Eldar: Bayesian Filtering in Spiking Neural Networks: Noise, Adaptation, and Multisensory Integration. Neural Computation 21(5): 1277-1320 (2009) | |
| 50 | Dori Peleg, Ron Meir: A sparsity driven kernel machine based on minimizing a generalization error bound. Pattern Recognition 42(11): 2607-2614 (2009) | |
| 2008 | ||
| 49 | Dotan Di Castro, Dmitry Volkinshtein, Ron Meir: Temporal Difference Based Actor Critic Learning - Convergence and Neural Implementation. NIPS 2008: 385-392 | |
| 48 | Dori Peleg, Ron Meir: A bilinear formulation for vector sparsity optimization. Signal Processing 88(2): 375-389 (2008) | |
| 2007 | ||
| 47 | Omer Bobrowski, Ron Meir, Shy Shoham, Yonina C. Eldar: A neural network implementing optimal state estimation based on dynamic spike train decoding. NIPS 2007 | |
| 46 | Dorit Baras, Ron Meir: Reinforcement Learning, Spike-Time-Dependent Plasticity, and the BCM Rule. Neural Computation 19(8): 2245-2279 (2007) | |
| 45 | Igor Zingman, Ron Meir, Ran El-Yaniv: Size-density spectra and their application to image classification. Pattern Recognition 40(12): 3336-3348 (2007) | |
| 2005 | ||
| 44 | Peter Auer, Ron Meir: Learning Theory, 18th Annual Conference on Learning Theory, COLT 2005, Bertinoro, Italy, June 27-30, 2005, Proceedings Springer 2005 | |
| 43 | Yaakov Engel, Shie Mannor, Ron Meir: Reinforcement learning with Gaussian processes. ICML 2005: 201-208 | |
| 42 | George Leifman, Ron Meir, Ayellet Tal: Semantic-oriented 3d shape retrieval using relevance feedback. The Visual Computer 21(8-10): 865-875 (2005) | |
| 2004 | ||
| 41 | Arik Azran, Ron Meir: Data Dependent Risk Bounds for Hierarchical Mixture of Experts Classifiers. COLT 2004: 427-441 | |
| 40 | Dori Peleg, Ron Meir: A Feature Selection Algorithm Based on the Global Minimization of a Generalization Error Bound. NIPS 2004 | |
| 39 | Philip Derbeko, Ran El-Yaniv, Ron Meir: Explicit Learning Curves for Transduction and Application to Clustering and Compression Algorithms. J. Artif. Intell. Res. (JAIR) 22: 117-142 (2004) | |
| 2003 | ||
| 38 | Ilya Desyatnikov, Ron Meir: Data-Dependent Bounds for Multi-category Classification Based on Convex Losses. COLT 2003: 159-172 | |
| 37 | Yaakov Engel, Shie Mannor, Ron Meir: Bayes Meets Bellman: The Gaussian Process Approach to Temporal Difference Learning. ICML 2003: 154-161 | |
| 36 | Philip Derbeko, Ran El-Yaniv, Ron Meir: Error Bounds for Transductive Learning via Compression and Clustering. NIPS 2003 | |
| 35 | Mordechai Nisenson, Ido Yariv, Ran El-Yaniv, Ron Meir: Towards Behaviometric Security Systems: Learning to Identify a Typist. PKDD 2003: 363-374 | |
| 34 | Shie Mannor, Ron Meir, Tong Zhang: Greedy Algorithms for Classification -- Consistency, Convergence Rates, and Adaptivity. Journal of Machine Learning Research 4: 713-741 (2003) | |
| 33 | Ron Meir, Tong Zhang: Generalization Error Bounds for Bayesian Mixture Algorithms. Journal of Machine Learning Research 4: 839-860 (2003) | |
| 2002 | ||
| 32 | Shie Mannor, Ron Meir, Tong Zhang: The Consistency of Greedy Algorithms for Classification. COLT 2002: 319-333 | |
| 31 | Philip Derbeko, Ran El-Yaniv, Ron Meir: Variance Optimized Bagging. ECML 2002: 60-71 | |
| 30 | Yaakov Engel, Shie Mannor, Ron Meir: Sparse Online Greedy Support Vector Regression. ECML 2002: 84-96 | |
| 29 | Ron Meir, Gunnar Rätsch: An Introduction to Boosting and Leveraging. Machine Learning Summer School 2002: 118-183 | |
| 28 | Ron Meir, Tong Zhang: Data-Dependent Bounds for Bayesian Mixture Methods. NIPS 2002: 319-326 | |
| 27 | Shie Mannor, Ron Meir: On the Existence of Linear Weak Learners and Applications to Boosting. Machine Learning 48(1-3): 219-251 (2002) | |
| 2001 | ||
| 26 | Shie Mannor, Ron Meir: Geometric Bounds for Generalization in Boosting. COLT/EuroCOLT 2001: 461-472 | |
| 25 | Vitaly Maiorov, Ron Meir: Lower bounds for multivariate approximation by affine-invariant dictionaries. IEEE Transactions on Information Theory 47(4): 1569-1575 (2001) | |
| 24 | Amir Karniel, Ron Meir, Gideon F. Inbar: Best estimated inverse versus inverse of the best estimator. Neural Networks 14(9): 1153-1159 (2001) | |
| 23 | Amir Karniel, Ron Meir, Gideon F. Inbar: Polyhedral mixture of linear experts for many-to-one mapping inversion and multiple controllers. Neurocomputing 37(1-4): 31-49 (2001) | |
| 2000 | ||
| 22 | Ron Meir, Ran El-Yaniv, Shai Ben-David: Localized Boosting. COLT 2000: 190-199 | |
| 21 | Shie Mannor, Ron Meir: Weak Learners and Improved Rates of Convergence in Boosting. NIPS 2000: 280-286 | |
| 20 | Vitaly Maiorov, Ron Meir: On the near optimality of the stochastic approximation of smooth functions by neural networks. Adv. Comput. Math. 13(1): 79-103 (2000) | |
| 19 | Ron Meir: Nonparametric Time Series Prediction Through Adaptive Model Selection. Machine Learning 39(1): 5-34 (2000) | |
| 1999 | ||
| 18 | Ron Meir, Vitaly Maiorov: Distortion bounds for vector quantizers with finite codebook size. IEEE Transactions on Information Theory 45(5): 1621-1631 (1999) | |
| 1998 | ||
| 17 | Amir Karniel, Ron Meir, Gideon F. Inbar: Polyhedral mixture of linear experts for many-to-one mapping inversion. ESANN 1998: 155-160 | |
| 16 | Peter L. Bartlett, Vitaly Maiorov, Ron Meir: Almost Linear VC Dimension Bounds for Piecewise Polynomial Networks. NIPS 1998: 190-196 | |
| 15 | Ron Meir, Vitaly Maiorov: On the Optimality of Incremental Neural Network Algorithms. NIPS 1998: 295-301 | |
| 14 | Assaf J. Zeevi, Ron Meir, Vitaly Maiorov: Error Bounds for Functional Approximation and Estimation Using Mixtures of Experts. IEEE Transactions on Information Theory 44(3): 1010-1025 (1998) | |
| 13 | Peter L. Bartlett, Vitaly Maiorov, Ron Meir: Almost Linear VC-Dimension Bounds for Piecewise Polynomial Networks. Neural Computation 10(8): 2159-2173 (1998) | |
| 1997 | ||
| 12 | Ron Meir: Performance Bounds for Nonlinear Time Series Prediction. COLT 1997: 122-129 | |
| 11 | Ron Meir: Structural Risk Minimization for Nonparametric Time Series Prediction. NIPS 1997 | |
| 10 | Assaf J. Zeevi, Ronny Meir: Density Estimation Through Convex Combinations of Densities: Approximation and Estimation Bounds. Neural Networks 10(1): 99-109 (1997) | |
| 1996 | ||
| 9 | Joel Ratsaby, Ron Meir, Vitaly Maiorov: Towards Robust Model Selection Using Estimation and Approximation Error Bounds. COLT 1996: 57-67 | |
| 8 | Assaf J. Zeevi, Ron Meir, Robert J. Adler: Time Series Prediction using Mixtures of Experts. NIPS 1996: 309-318 | |
| 1995 | ||
| 7 | Ronny Meir, Neri Merhav: On the Stochastic Complexity of Learning Realizable and Unrealizable Rules. Machine Learning 19(3): 241-261 (1995) | |
| 1994 | ||
| 6 | Ronny Meir: Bias, Variance and the Combination of Least Squares Estimators. NIPS 1994: 295-302 | |
| 1992 | ||
| 5 | Ronny Meir, José F. Fontanari: On Learning Noisy Threshold Functions with Finite Precision Weights. COLT 1992: 280-286 | |
| 4 | Joshua Alspector, Ronny Meir, Ben P. Yuhas, Anthony Jayakumar, D. Lippe: A Parallel Gradient Descent Method for Learning in Analog VLSI Neural Networks. NIPS 1992: 836-844 | |
| 1991 | ||
| 3 | Ronny Meir: On Deriving Deterministic Learning Rules from Stochastic Systems. Int. J. Neural Syst. 2(4): 283-289 (1991) | |
| 1990 | ||
| 2 | Joshua Alspector, Robert B. Allen, Anthony Jayakumar, Torsten Zeppenfeld, Ronny Meir: Relaxation Networks for Large Supervised Learning Problems. NIPS 1990: 1015-1021 | |
| 1988 | ||
| 1 | Tal Grossman, Ronny Meir, Eytan Domany: Learning by Choice of Internal Representations. NIPS 1988: 73-80 | |