


Остановите войну!
for scientists:


default search action
8. AISTATS 2001: Key West, Florida, USA
- Thomas S. Richardson, Tommi S. Jaakkola:
Proceedings of the Eighth International Workshop on Artificial Intelligence and Statistics, AISTATS 2001, Key West, Florida, USA, January 4-7, 2001. Society for Artificial Intelligence and Statistics 2001 - Russell G. Almond, Lou DiBello, Frank Jenkins, Deniz Senturk, Robert J. Mislevy, Linda S. Steinberg, Duanli Yan:
Models for Conditional Probability Tables in Educational Assessment. - Hagai Attias:
Learning in high dimensions: modular mixture models. - Susanne Bottcher:
Learning Bayesian networks with mixed variables. - Andrew D. Brown, Geoffrey E. Hinton:
Products of Hidden Markov Models. - Ariel E. Bud, David W. Albrecht, Ann E. Nicholson, Ingrid Zukerman:
Information-Theoretic Advisors in Invisible Chess. - Rich Caruana:
A Non-Parametric EM-Style Algorithm for Imputing Missing Values. - Hugh A. Chipman, Edward I. George, Robert E. McCulloch:
Managing Multiple Models. - Samuel Ping-Man Choi, Nevin Lianwen Zhang, Dit-Yan Yeung:
Solving Hidden-Mode Markov Decision Problems. - Merlise Clyde, Herbert Lee:
Bagging and the Bayesian Bootstrap. - Adrian Corduneanu, Christopher M. Bishop:
Hyperparameters for Soft Bayesian Model Selection. - Robert G. Cowell:
On searching for optimal classifiers among Bayesian networks. - James Cussens:
Statistical Aspects of Stochastic Logic Programs. - A. Philip Dawid:
Some variations on variation independence.. - Eric de Bodt, Marie Cottrell, Michel Verleysen:
Are they really neighbors? A statistical analysis of the SOM algorithm output. - Michael O. Duff:
Monte-Carlo Algorithms for the Improvement of Finite-State Stochastic Controllers: Application to Bayes-Adaptive Markov Decision Processes. - Yoav Freund, Yishay Mansour, Robert E. Schapire:
Why averaging classifiers can protect against overfitting. - Pierre Geurts:
Dual perturb and combine algorithm. - Phil D. Green, Jon Barker, Martin Cooke, Ljubomir Josifovski:
Handling Missing and Unreliable Information in Speech Recognition. - Anne Guérin-Dugué, Gilles Celeux:
Discriminant Analysis on Dissimilarity Data : a New Fast Gaussian like Algorithm. - Malene Højbjerre:
Profile Likelihood in Directed Graphical Models from BUGS Output. - Wenxin Jiang:
Is regularization unnecessary for boosting?. - Nebojsa Jojic, Patrice Y. Simard, Brendan J. Frey, David Heckerman:
Learning mixtures of smooth, nonuniform deformation models for probabilistic image matching. - Mehmet Kayaalp, Gregory F. Cooper, Gilles Clermont:
Predicting with Variables Constructed from Temporal Sequences. - Oscar Kipersztok, Haiqin Wang:
Another look at sensitivity of Bayesian networks to imprecise probabilities. - Petri Kontkanen, Petri Myllymäki, Henry Tirri:
Comparing Prequential Model Selection Criteria in Supervised Learning of Mixture Models. - Martin H. C. Law, James Tin-Yau Kwok:
Bayesian Support Vector Regression. - Neil D. Lawrence:
Variational Learning for Multi-Layer Networks of Linear Threshold Units. - Lillian Lee
:
On the effectiveness of the skew divergence for statistical language analysis. - Subramani Mani, Gregory F. Cooper:
A Simulation Study of Three Related Causal Data Mining Algorithms. - Christopher Meek:
Finding a path is harder than finding a tree. - Christopher Meek, Bo Thiesson, David Heckerman:
The Learning Curve Method Applied to Clustering. - Marina Meila, Jianbo Shi:
A Random Walks View of Spectral Segmentation. - Sebastian Mika, Alexander J. Smola, Bernhard Schölkopf:
An improved training algorithm for kernel Fisher discriminants. - Scott Needham, David L. Dowe:
Message Length as an Effective Ockham's Razor in Decision Tree Induction. - Adam Nickerson, Nathalie Japkowicz, Evangelos E. Milios:
Using Unsupervised Learning to Guide Resampling in Imbalanced Data Sets. - Nikunj C. Oza, Stuart Russell:
Online Bagging and Boosting. - José M. Peña, I. Izarzugaza, José Antonio Lozano, E. Aldasoro, Pedro Larrañaga:
Geographical clustering of cancer incidence by means of Bayesian networks and conditional Gaussian networks. - Gregory M. Provan:
Stochastic System Monitoring and Control. - Christopher Raphael:
Can the Computer Learn to Play Music Expressively?. - Dmitry Rusakov, Dan Geiger:
On Parameter Priors for Discrete DAG Models. - Richard Scheines, Gregory F. Cooper, Changwon Yoo, Tianjiao Chu:
Piecewise Linear Instrumental Variable Estimation of Causal Influence. - Duncan Smith:
The Efficient Propagation of Arbitrary Subsets of Beliefs in Discrete-Valued Bayesian Networks. - Peter Spirtes:
An Anytime Algorithm for Causal Inference. - Amos J. Storkey, Christopher K. I. Williams:
Dynamic Positional Trees for Structural Image Analysis. - Ahmed Y. Tawfik, Greg Scott:
Temporal Matching under Uncertainty. - Michael E. Tipping, Bernhard Schölkopf:
A Kernel Approach for Vector Quantization with Guaranteed Distortion Bounds.

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.