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Preprints
- M. Sun, G. Lebanon, and K. Collins-Thompson. Visualizing Differences in Web Search Algorithms using the Expected Weighted Hoeffding Distance. Technical Report FODAVA-09-22, Georgia Institute of Technology, 2009.
- P. Donmez, G. Lebanon, and K. Balasubramanian.
Unsupervised Estimation of Classification and Regression Error Rates.
Technical Report CMU-LTI-09-015, Carnegie Mellon University.
-
Y. Zhao, G. Lebanon, and Y. Zhao. Local Likelihood Modeling of the Concept Drift Phenomenon. Technical Report FODAVA-09-21, Georgia Institute of Technology 2009.
2010
- P. Kidwell and G. Lebanon. Kernel smoothing for preference data using generating functions. In M. Viana and H. P. Wynn (eds), Algebraic Methods in Statistics and Probability II. Contemporary Mathematics Series, American Mathematical Society, 2010.
2009
- Y.
Mao and G. Lebanon.
Generalized Isotonic Conditional Random Fields.
Machine Learning 77(2-3):225-248, 2009.
- G. Lebanon,
M.
Scannapieco,
M. R.
Fouad, and
E. Bertino.
Beyond k-Anonymity: A Decision Theoretic
Framework for Assessing Privacy Risk.
Transactions on Data Privacy 2(3):153-183
2009.
- E. Greenshtein,
J. Park,
and G. Lebanon.
Regularization through Variable Selection and
Conditional MLE with Application to Classification
in High Dimensions. Journal of Statistical
Planning and Inference 139(2):385-395,
2009.
- D. J. Kasik,
D.
Ebert, G. Lebanon,
H. Park,
and W. M.
Pottenger. Data Transformations and Representations for Computation and Visualization.
Information Visualization 8(4):275-285, 2009.
- G. Lebanon. Axiomatic Geometries for Text
Documents. In P. Gibilisco, E. Riccomagno, M.-P.
Rogantin, and H. P. Wynn (eds).
Algebraic and Geometric Methods in Statistics.
Cambridge University Press, 2009.
- Y.
Mao and G. Lebanon.
Domain Knowledge Uncertainty and Probabilistic
Parameter Constraints. Proc. of the 25th
Conference on Uncertainty in Artificial Intelligence
(UAI), 2009.
-
P. Kidwell, G. Lebanon, and
K. Collins-Thompson.
Statistical Estimation of Word Acquisition with
Application to Readability Prediction. Proc.
of the Conference on Empirical Methods in Natural
Language Processing (EMNLP), 2009.
- J. V.
Dillon and G. Lebanon.
Statistical and Computational Tradeoffs in
Stochastic Composite Likelihood. Proc. of
the 12th International Conference on Artificial
Intelligence and Statistics (AISTAT) JMLR W&CP
5:129-136, 2009.
- M. Sun, G. Lebanon, and K. Collins-Thompson. Visualizing Spatial Proximity of Search Algorithms. NIPS Workhop on Learning with Ordering (non-refereed poster abstract), 2009.
2008
- G. Lebanon and
Y. Mao.
Non-parametric Modeling of Partially Ranked Data.
Journal of Machine Learning Research 9(Oct):2401-2429, 2008.
-
P. Kidwell, G. Lebanon, and
W. S.
Cleveland.
Visualizing Incomplete and Partially Ranked Data.
IEEE Transactions on Visualization and Computer
Graphics 14(6):1356-1363,
2008.
- G. Lebanon and
Y. Mao.
Non-Parametric Modeling of Partially Ranked Data.
Advances in Neural Information Processing Systems
20, 2008.
- G. Lebanon and
Y.
Zhao.
Local Likelihood Modeling of the Concept Drift
Phenomenon. Proc. of the 25th International
Conference on Machine Learning, 2008.
- M.
R. Fouad, G. Lebanon, and
E. Bertino.
ARUBA: A Risk-Utility-Based Algorithm for Data
Disclosure. 5th VLDB Workshop on Secure Data
Management. Lecture Notes in Computer Science,
volume 5159, pages 32-49. Springer, 2008.
- G.
M. Howard,
S.
Bagchi, and G. Lebanon.
Determining placement of intrusion detectors for a
distributed application through Bayesian network
modeling. 11th International Symposium on
Recent Advances in Intrusion Detection (RAID).
Lecture Notes in Computer Science, volume 5230,
pages 271-290. Springer, 2008.
- Z. Zhang, M. Gupta, S. Yang, G. Lebanon,
Y. C. Hu,
and
S. Midkiff.
Extracting Source Level Program Similarities from
Dynamic Behavior. Technical Report
TR-ECE-08-08, Purdue University, 2008.
2007
- G. Lebanon,
Y. Mao,
and J. V.
Dillon.
The Locally Weighted Bag of Words Framework for
Document Representation. Journal of Machine
Learning Research 8(Oct):2405-2441, 2007.
- Y.
Mao, J. V.
Dillon, and G. Lebanon.
Sequential Document Visualization. IEEE
Transactions on Visualization and Computer Graphics,
13(6):1208-1215, 2007.
- J. V.
Dillon,
Y. Mao,
G. Lebanon, and
J.
Zhang.
Statistical Translation, Heat Kernels, and Expected
Distances. Proc. of the 23rd
Conference on Uncertainty in Artificial Intelligence,
pages 93-100, 2007.
- Y.
Mao and G. Lebanon.
Isotonic Conditional Random Fields and Local
Sentiment Flow. Advances in Neural
Information Processing Systems 19, pages
961-968, 2007.
2006
- G. Lebanon.
Metric Learning for Text Documents. IEEE
Transactions on Pattern Analysis and Machine
Intelligence 28(4):497-508, 2006.
- G. Lebanon.
Sequential Document Representations and Simplicial
Curves. Proc. of the 22nd
Conference on Uncertainty in Artificial Intelligence,
pages 273-280, 2006.
- G. Lebanon,
M.
Scannapieco,
M. R.
Fouad, and
E. Bertino.
Beyond k-Anonymity: A Decision Theoretic Framework
for Assessing Privacy Risk. Privacy in
Statistical Databases. Lecture Notes in Computer
Science, volume 4302, pages 217-232. Springer, 2006.
- Y.
Mao and G. Lebanon.
Sequential Models for Sentiment Prediction.
ICML workshop on Learning in Structured Output
Spaces, 2006.
- J. V.
Dillon,
Y. Mao,
G. Lebanon, and
J.
Zhang.
Statistical Translation, Heat Kernels, and Expected
Distances. NIPS workshop on Learning to
Compare Examples, 2006.
2005
2004
2003
2002
2001
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