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2010
G. Cannarozzi, N. N. Schraudolph, M. Faty (joint first authors),
P. v. Rohr, M. T. Friberg, A. C. Roth, G. H. Gonnet, and Y. Barral. A Role for Codon Order in Translation
Dynamics. Cell, 141(2):355–367, 16 Apr 2010.
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N. N. Schraudolph. Polynomial-Time Exact Inference in NP-Hard
Binary MRFs via Reweighted Perfect Matching. In 13th Intl. Conf. Artificial Intelligence and
Statistics (AIstats), pp. 717–724, Journal of Machine Learning Research,
Chia Laguna, Italy, to appear May 2010.
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S. Vishwanathan, N. N. Schraudolph,
R. Kondor, and K. Borgwardt. Graph Kernels. Journal of Machine
Learning Research, 11:1201–1242, 2010.
Short version
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J. Yu, S. Vishwanathan, S. Günter, and N.
N. Schraudolph. A Quasi-Newton Approach to Nonsmooth Convex Optimization Problems in Machine
Learning. Journal of Machine Learning Research, 11:1145–1200, 2010.
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2009
N. N. Schraudolph and D. Kamenetsky. Efficient Exact Inference
in Planar Ising Models. In Advances in Neural Information Processing Systems
(NIPS), pp. 1417–1424, Curran Associates, Inc., 2009.
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P. Sunehag, J. Trumpf, S. Vishwanathan, and N.
N. Schraudolph. Variable Metric Stochastic Approximation Theory. In Proc. 12th Intl.
Conf. Artificial Intelligence and Statistics (AIstats), pp. 560–566,
Journal of Machine Learning Research, Clearwater Beach, Florida, 2009.
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2008
D. Chik, J. Trumpf, and N. N. Schraudolph. Using an Adaptive VAR
Model for Motion Prediction in 3D Hand Tracking. In 8th Intl. Conf. Automatic
Face & Gesture Recognition (FG), IEEE, Amsterdam, Netherlands, 2008.
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Z. Li, J. Chen, and N. N. Schraudolph. An Improved Mean-Shift
Tracker with Kernel Prediction and Scale Optimisation Targeting for Low-Frame-Rate Video Tracking.
In 19th Intl. Conf. Pattern Recognition (ICPR), Tampa, Florida, 2008.
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Z. Li, J. Chen, A. Chong, Z. Yu, and N. N. Schraudolph. Using
Stochastic Gradient-Descent Scheme in Appearance Model Based Face Tracking. In Proc. Intl. Workshop Multimedia
Signal Processing (MMSP), IEEE, Cairns, Australia, 2008.
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N. N. Schraudolph and D. Kamenetsky. Efficient Exact Inference
in Planar Ising Models. Technical Report 0810.4401, arXiv,
2008.
Short version
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J. Yu, S. Vishwanathan, S. Günter, and N.
N. Schraudolph. A Quasi-Newton Approach to Nonsmooth Convex Optimization. In Proc. 25th
Intl. Conf. Machine Learning (ICML), pp. 1216–1223, Omnipress, Helsinki, Finland, 2008.
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2007
K. M. Borgwardt, H. Kriegel, S. Vishwanathan, and N.
N. Schraudolph. Graph Kernels for Disease Outcome Prediction from Protein-Protein Interaction
Networks. In Proc. Pacific Symposium on Biocomputing (PSB), pp. 4–15, World Scientific, Maui, Hawaii, 2007.
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M. Bray, E. Koller-Meier, N. N. Schraudolph, and L. Van Gool. Fast
Stochastic Optimization for Articulated Structure Tracking. Image and Vision Computing, 25(3):352–364, 2007.
Earlier version
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D. Chik, J. Trumpf, and N. N. Schraudolph. 3D Hand Tracking in
a Stochastic Approximation Setting. In 2nd Workshop on Human Motion: Understanding, Modeling,
Capture and Animation, 11th IEEE Intl. Conf. Computer Vision (ICCV), pp. 136–151, Springer
Verlag, Berlin, Rio de Janeiro, Brazil, 2007.
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S. Günter, N. N. Schraudolph, and S.
Vishwanathan. Fast Iterative Kernel Principal Component Analysis.
Journal of Machine Learning Research, 8:1893–1918, 2007.
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N. N. Schraudolph, S. Günter, and S.
Vishwanathan. Fast Iterative Kernel PCA. In Advances in Neural
Information Processing Systems (NIPS), pp. 1225–1232, MIT Press, Cambridge, MA, 2007.
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N. N. Schraudolph, J. Yu, and S. Günter. A Stochastic Quasi-Newton
Method for Online Convex Optimization. In Proc. 11th Intl. Conf. Artificial
Intelligence and Statistics (AIstats), pp. 436–443, Journal of Machine Learning
Research, San Juan, Puerto Rico, 2007.
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S. Vishwanathan, K. Borgwardt, and N.
N. Schraudolph. Fast Computation of Graph Kernels. In Advances
in Neural Information Processing Systems (NIPS), pp. 1449–1456, MIT Press, Cambridge, MA, 2007.
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version
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2006
M. T. Friberg, P. Gonnet, Y. Barral, N. N. Schraudolph, and G. H. Gonnet.
Measures of Codon Bias in Yeast, the tRNA Pairing Index and Possible DNA Repair Mechanisms. In Algorithms
in Bioinformatics: 6th Intl. Workshop (WABI), pp. 1–11, Springer
Verlag, Berlin, Zurich, Switzerland, 2006.
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N. N. Schraudolph, J. Yu, and D. Aberdeen. Fast Online Policy
Gradient Learning with SMD Gain Vector Adaptation. In Advances in Neural
Information Processing Systems (NIPS), pp. 1185–1192, MIT Press, Cambridge, MA, 2006.
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S. Vishwanathan, N. N. Schraudolph,
M. W. Schmidt, and K. Murphy. Accelerated Training of Conditional Random Fields with Stochastic
Gradient Methods. In Proc. 23rd Intl. Conf. Machine Learning (ICML), pp. 969–976, ACM Press, 2006.
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S. Vishwanathan, N. N. Schraudolph,
and A. J. Smola. Step Size Adaptation in Reproducing Kernel Hilbert
Space. Journal of Machine Learning Research, 7:1107–1133, 2006.
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2005
D. Büche, N. N. Schraudolph, and P. Koumoutsakos. Accelerating
Evolutionary Algorithms with Gaussian Process Fitness Function Models. IEEE Transactions on Systems,
Man, and Cybernetics, C35(2):183–194, 2005.
Earlier version
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M. Bray, E. Koller-Meier, P. Müller, N. N. Schraudolph, and L. Van Gool.
Stochastic Optimization for High-Dimensional Tracking in Dense Range Maps. IEE Proceedings
Vision, Image & Signal Processing, 152(4):501–512, 2005.
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version
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A. Karatzoglou, S. Vishwanathan, N.
N. Schraudolph, and A. J. Smola. Step Size-Adapted Online Support
Vector Learning. In Proc. 8th Intl. Symp. Signal Processing & Applications, IEEE, 2005.
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N. N. Schraudolph. Facial Attraction: Symmetry Considered Harmful.
Journal of Machine Learning Gossip, 2:1–2, 2005.
To be
taken with a grain of salt.
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2004
M. Bray, E. Koller-Meier, N. N. Schraudolph, and L. Van Gool.
Stochastic Meta-Descent for Tracking Articulated Structures. In IEEE Workshop on Articulated and Nonrigid Motion,
Conference on Computer Vision and Pattern Recognition (CVPR), Washington, D.C., 2004.
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M. Bray, E. Koller-Meier, P. Müller, L. Van Gool, and N. N. Schraudolph.
3D Hand Tracking by Rapid Stochastic Gradient Descent Using a Skinning Model. In First
European Conference on Visual Media Production (CVMP), pp. 59–68, London, 2004.
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N. N. Schraudolph. Gradient-Based Manipulation of
Nonparametric Entropy Estimates. IEEE Transactions on Neural Networks, 15(4):828–837, 2004.
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2003
D. Büche, N. N. Schraudolph, and P. Koumoutsakos. Accelerating
Evolutionary Algorithms Using Fitness Function Models. In Genetic and Evolutionary Computation Conference
Workshop Program, pp. 166–169, AAAI, Chicago, 2003.
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S. Müller, N. N. Schraudolph, and P. Koumoutsakos. Evolutionary
and Gradient-Based Algorithms for Lennard-Jones Cluster Optimization. In Genetic and Evolutionary Computation
Conference Workshop Program, pp. 160–165, AAAI, Chicago, 2003.
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N. N. Schraudolph and T. Graepel. Combining Conjugate Direction
Methods with Stochastic Approximation of Gradients. In Proc. 9th Intl. Workshop
Artificial Intelligence and Statistics (AIstats), pp. 7–13, Society for Artificial Intelligence and Statistics,
Key West, Florida, 2003.
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paper
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2002
F. A. Gers, N. N. Schraudolph, and J. Schmidhuber. Learning Precise
Timing with LSTM Recurrent Networks. Journal of Machine Learning Research,
3:115–143, 2002.
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T. Graepel and N. N. Schraudolph. Stable Adaptive Momentum for
Rapid Online Learning in Nonlinear Systems. In Proc. Intl. Conf. Artificial Neural Networks (ICANN),
pp. 450–455, Springer Verlag, Berlin, Madrid, Spain, 2002.
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S. Müller, N. N. Schraudolph, P. Koumoutsakos, and N. Hansen.
Step Size Adaptation in Evolution Strategies---Two Approaches. In Genetic and Evolutionary Computation Conference
Workshop Program, pp. 161–164, AAAI, New York, 2002.
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S. Müller, N. N. Schraudolph, and P. D. Koumoutsakos. Step
Size Adaptation in Evolution Strategies using Reinforcement Learning. In Proc. Congress on Evolutionary
Computation, pp. 151–156, IEEE, 2002.
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N. N. Schraudolph and T. Graepel. Towards Stochastic Conjugate
Gradient Methods. In Proc. 9th Intl. Conf. Neural Information Processing (ICONIP), pp.
853–856, IEEE, 2002.
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N. N. Schraudolph and T. Graepel. Conjugate Directions for Stochastic
Gradient Descent. In Proc. Intl. Conf. Artificial Neural Networks (ICANN), pp. 1351–1356, Springer
Verlag, Berlin, Madrid, Spain, 2002.
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N. N. Schraudolph. Fast Curvature Matrix-Vector Products
for Second-Order Gradient Descent. Neural Computation, 14(7):1723–1738,
2002.
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2001
M. Klapper-Rybicka, N. N. Schraudolph, and J. Schmidhuber. Unsupervised
Learning in Recurrent Neural Networks. In Proc. Intl. Conf. Artificial Neural Networks (ICANN), pp. 674–681,
Springer Verlag, Berlin, Vienna, Austria, 2001.
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N. N. Schraudolph. Fast Curvature Matrix-Vector Products.
In Proc. Intl. Conf. Artificial Neural Networks (ICANN), pp. 19–26, Springer
Verlag, Berlin, Vienna, Austria, 2001.
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N. N. Schraudolph, P. Dayan, and T.
J. Sejnowski. Learning to Evaluate Go Positions via Temporal Difference Methods. In
N. Baba and L. C. Jain, editors, Computational Intelligence in Games, Studies in Fuzziness and Soft Computing, pp.
77–98, Springer Verlag, Berlin, 2001.
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2000
N. N. Schraudolph. A Generic Dataflow Programming Environment for
Neural Networks. Technical Report IDSIA-15-00, Istituto Dalle Molle di Studi sull'Intelligenza Artificiale, 2000.
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N. N. Schraudolph and X. Giannakopoulos. Online Independent Component
Analysis With Local Learning Rate Adaptation. In Advances in Neural
Information Processing Systems (NIPS), pp. 789–795, The MIT Press, Cambridge, MA, 2000.
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1999
N. N. Schraudolph. A Fast, Compact Approximation of the Exponential
Function. Neural Computation, 11(4):853–862, 1999.
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N. N. Schraudolph, M. Eldracher, and J. Schmidhuber. Processing
Images by Semi-Linear Predictability Minimization. Network: Computation in Neural Systems, 10(2):133–169,
1999.
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N. N. Schraudolph. Online Learning with Adaptive Local Step Sizes.
In Neural Nets---WIRN Vietri-99: Proc. 11th Italian Workshop on Neural Networks, pp. 151–156,
Springer Verlag, Berlin, Vietri sul Mare, Salerno, Italy, 1999.
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N. N. Schraudolph. Local Gain Adaptation in Stochastic Gradient
Descent. In Proc. Intl. Conf. Artificial Neural Networks (ICANN), pp. 569–574, IEE, London, Edinburgh, Scotland,
1999.
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1998
J. Schmidhuber, J. Zhao, and N. N. Schraudolph. Reinforcement
Learning with Self-Modifying Policies. In S. Thrun and L. Pratt, editors, Learning to Learn, pp. 293–309,
Kluwer Academic Publishers, Norwell, MA, 1998.
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N. N. Schraudolph. Online Local Gain Adaptation for Multi-Layer
Perceptrons. Technical Report IDSIA-09-98, Istituto Dalle Molle di Studi sull'Intelligenza Artificiale, 1998.
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N. N. Schraudolph. Combining Confidence-Tagged Expert Opinions
by Alternate Maximization of Likelihood. Technical Report IDSIA-25-98, Istituto Dalle Molle di Studi sull'Intelligenza
Artificiale, 1998.
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N. N. Schraudolph. Accelerated Gradient Descent by
Factor-Centering Decomposition. Technical Report IDSIA-33-98, Istituto Dalle Molle di Studi sull'Intelligenza Artificiale,
1998.
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N. N. Schraudolph. Slope Centering: Making Shortcut Weights Effective.
In Proc. Intl. Conf. Artificial Neural Networks (ICANN), pp. 523–528, Springer
Verlag, Berlin, Skövde, Sweden, 1998.
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N. N. Schraudolph. Centering Neural Network Gradient Factors.
In G. B. Orr and K. Müller, editors, Neural Networks: Tricks of the Trade,
Lecture Notes in Computer Science, pp. 207–226, Springer Verlag, Berlin, 1998.
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1997
N. N. Schraudolph. BibTeX Bibliography. For Neural
Computation, vol. 1--7, 1997.
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1996
N. N. Schraudolph and T. J.
Sejnowski. Tempering Backpropagation Networks: Not All Weights Are Created Equal.
In Advances in Neural Information Processing Systems (NIPS), pp. 563–569,
The MIT Press, Cambridge, MA, 1996.
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P. A. Viola, N. N. Schraudolph, and T.
J. Sejnowski. Empirical Entropy Manipulation for Real-World Problems. In
Advances in Neural Information Processing Systems (NIPS), pp. 851–857, The MIT Press, Cambridge, MA, 1996.
In Ph.D. thesis Latest version
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1995
N. N. Schraudolph. Introduction to Optimization of Entropy with
Neural Networks. Ph.D. Thesis, University of California, San Diego, 1995.
Full
Ph.D. thesis
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N. N. Schraudolph. Optimization of Entropy with Neural Networks. Ph.D.
Thesis, University of California, San Diego, 1995.
Introduction only Related
papers: Chapter 2 Chapter 3 Chapter
3 Chapter 4
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N. N. Schraudolph and T. J.
Sejnowski. Plasticity-Mediated Competitive Learning. In Advances
in Neural Information Processing Systems (NIPS), pp. 475–480, The MIT Press, Cambridge, MA, 1995.
In Ph.D. thesis
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1994
N. N. Schraudolph, P. Dayan, and T.
J. Sejnowski. Temporal Difference Learning of Position Evaluation in the Game of Go.
In Advances in Neural Information Processing Systems (NIPS), pp. 817–824,
Morgan Kaufmann, San Francisco, CA, 1994.
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1993
N. N. Schraudolph and T. J.
Sejnowski. Unsupervised Discrimination of Clustered Data via Optimization of Binary Information
Gain. In Advances in Neural Information Processing Systems (NIPS), pp. 499–506,
Morgan Kaufmann, San Mateo, CA, 1993.
In Ph.D. thesis
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N. N. Schraudolph. Genetic Algorithm Software Survey. Incorporated
as part 5 into the comp.ai.genetic FAQ,
The Hitch-Hiker's Guide to Evolutionary Computation, 1993.
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1992
R. K. Belew, J. McInerney, and N. N. Schraudolph. Evolving Networks:
Using the Genetic Algorithm with Connectionist Learning. In C. G. Langton, C. Taylor, J. D. Farmer, and
S. Rasmussen, editors, Artificial Life II, SFI Studies in the Sciences of Complexity: Proceedings, pp. 511–547,
Addison-Wesley, Redwood City, CA, 1992.
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N. N. Schraudolph and T. J.
Sejnowski. Competitive Anti-Hebbian Learning of Invariants. In
Advances in Neural Information Processing Systems (NIPS), pp. 1017–1024, Morgan Kaufmann, San Mateo, CA, 1992.
In Ph.D. thesis
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N. N. Schraudolph and R. K. Belew. Dynamic Parameter Encoding
for Genetic Algorithms. Machine Learning, 9:9–21, 1992.
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N. N. Schraudolph and J. J. Grefenstette. A User's Guide to GAucsd
1.4. Technical Report CS92-249, University of California, San Diego, 1992.
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1991
N. N. Schraudolph. BibTeX Bibliography. For John Hertz,
Anders Krogh, and Richard Palmer, Introduction to the Theory of Neural Computation, Addison-Wesley,
1991.
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