
Volker
Tresp
Professor
Ludwig Maximilian University of Munich
Principal Research Scientist
Siemens
Research
Interests
- Machine Learning
- Semantic Web, Linked Data
- Statistical Relational Learning
- Gaussian Processes, Dirichlet Processes
- Neural Networks, Pattern Recognition
- Graphical Models, Bayesian Networks
- Stochastical Systems and Time Series
- Computational Cognitive Science
- User Modelling
- Bioinformatics
- Information Extraction, Information Retrieval
- Medical Decision Support Systems
- Reinforcement Learning and Multi-Agent Systems
Biography
I received a Diploma degree in physics from the University of
Göttingen, Germany, in 1984 and M.Sc., M.Phil.
and Ph.D. degrees from Yale University, New Haven, CT, in 1986 and
1989, respectively. Since 1989 I am the head of a research
team in machine learning at Siemens Corporate Research &
Technologies. In 1994 I was a visiting scientist at the
Massachusetts Institute of Technology's Center for Biological and
Computational Learning. Each summer I give a lecture
on machine
learning and data mining (since 2003). In my projects I
collaborate with both the Ludwig Maximilian University of Munich
(Ludwig-Maximilians-Universität München, LMU) and the
Technical University Munich (Technische Universität
München, TUM). Since 2011 I am a Professor at the
LMU. I am the first honorary professor in the Department for
Informatics at the LMU.
E-mail: volker.tresp at s i e m e n s.com
Mobil: +49 173 5293072
Students
- Xueyan Jiang, Ludwig Maximilian University of Munich
- Maximilian
Nickel, Ludwig Maximilian University of Munich
- Yi Huang,
Ludwig Maximilian University of Munich
Past
students
Awards and Honors:
- Winner of the ISWC 2011 Semantic Web Challenge (with Irene
Celino, Daniele Dell'Aglio, Emanuele Della Valle, Marco
Balduini, Yi Huang, Tony Lee, Seon-Ho Kim)
- Winner of the ESWC 2011 AI Mashup Challenge (with
Daniele Dell´Aglio, Irene Celino, Emanuele Della Valle,
Ralph Grothmann, Florian Steinke)
- Best Paper Runner-up PKDD 2005 (with Shipeng Yu,
Kai Yu, Hans-Peter Kriegel)
- Siemens Inventor of the Year for 1996
Tutorials
Papers
2011
- Emanuele Della Valle, Irene
Celino, Daniele
Dell'Aglio, Ralph Grothmann, Florian Steinke, and
Volker Tresp. Semantic
Traffic-AwareRouting Using the LarKC Platform. IEEE
Internet Computing, 2011.
- Volker Tresp, Yi Huang, Xueyan Jiang, and Achim Rettinger. Graphical Models for Relations -
Modeling Relational Context. International Conference on Knowledge Discovery and
Information Retrieval, 2011.
- Irene Celino, Daniele Dell'Aglio,
Emanuele Della Valle, Yi Huang, Tony Lee, Seon-Ho Kim, and
Volker Tresp. Towards
BOTTARI: Using Stream Reasoning to Make Sense of
Location-Based Micro-Posts. In: R. Garcia-Castro
et al. (Eds.): ESWC 2011
Workshops, LNCS 7117, Springer, 2011.
- Hendrik Wermser, Achim Rettinger, and Volker Tresp. Modeling and Learning
Context-Aware Recommendation Scenarios using Tensor
Decomposition 2011. International
Conference on Advances in Social Networks Analysis and Mining,
2011.
- Joshua L. Moore, Florian Steinke, and Volker Tresp. A Novel Metric for Information
Retrieval in Semantic Networks. ESWC 2011 Workshops, LNCS 7117, Springer,
2011.
- Irene Celino, Daniele Dell'Aglio, Emanuele Della Valle, Ralph
Grothmann, Florian Steinke, and Volker Tresp. Integrating Machine
Learning in a Semantic Web Platform for Traffic Forecasting
and Routing. In Proceedings
of the 3rd International Workshop on Inductive Reasoning and
Machine Learning for the Semantic Web (IRMLES),
2011.
- Irene Celino, Daniele Dell'Aglio, Emanuele Della Valle, Yi
Huang, Tony Lee, Stanley Park and Volker Tresp. Making Sense of Location-based
Micro-posts Using Stream Reasoning. In Proceedings of the Making Sense of
Microposts Workshop (#MSM), 2011.
- Maximilian Nickel, Volker Tresp and Hans-Peter Kriegel. A
Three-Way Model for Collective Learning on Multi-Relational
Data. In Proceedings of
the 28th International Conference on Machine Learning,
2011.
2010
- Davide Barbieri, Daniele Braga, Stefano
Ceri, Emanuele Della Valle, Yi Huang, Volker
Tresp, Achim Rettinger and Hendrik Wermser. Deductive
and Inductive Stream Reasoning for Semantic Social Media
Analytics.
IEEE Intelligent Systems, 99, 2010.
- Yi Huang, Maximilian
Nickel, Volker Tresp and Hans-Peter Kriegel. A Scalable Kernel
Approach to Learning in Semantic Graphs with
Applications to Linked Data. In Proc. of the 1st Workshop
on Mining the Future Internet, 2010.
- Markus Bundschus,
Anna Bauer-Mehren, Volker Tresp, Laura Furlong and Hans-Peter
Kriegel. Digging for knowledge with information
extraction: A case study on human gene-disease associations.
In Proc. of the 19th ACM
International Conference on Information and Knowledge
Management (CIKM), 2010.
- Achim Rettinger, Matthias Nickles and Volker Tresp. Statistical relational learning of trust. Machine Learning Journal, 81,
2010.
- Yi Huang, Volker Tresp, Markus
Bundschus, Achim Rettinger and Hans-Peter Kriegel. Multivariate structured
prediction for learning on the semantic web. In
Proceedings of the 20th International Conference on
Inductive Logic Programming (ILP), 2010.
- Davide Magatti, Florian Steinke, Markus Bundschus, and Volker
Tresp. Combined structured and
keyword-based search in textually enriched entity-relationship
graphs. First workshop
on automated knowledge base construction (AKBC), 2010.
2009
- Markus Bundschus, Volker Tresp, and Hans-Peter Kriegel. Topic models for semantically
annotated document collections. In NIPS 2009
Workshop: Applications for Topic Models: Text and Beyond,
2009.
- Yi Huang, Volker Tresp, and Hans-Peter Kriegel. Multivariate prediction for
learning in relational graphs. In NIPS 2009
Workshop: Analyzing Networks and
Learning With Graphs , 2009.
- Markus Bundschus, Shipeng Yu, Volker Tresp, Achim Rettinger,
Matthaeus Dejori, and Hans-Peter Kriegel. Hierarchical
bayesian models for collaborative tagging systems. In Proceedings
of the IEEE International Conference on Data Mining (ICDM),
2009.
- Achim Rettinger, Matthias Nickles, and Volker Tresp. Statistical
relational learning with formal ontologies. In Proceedings
of The European Conference on Machine Learning and Principles
and Practice of Knowledge Discovery in Databases (ECML PKDD),
2009.
- Volker Tresp, Yi Huang, Markus Bundschus, and Achim
Rettinger. Materializing
and querying learned knowledge. In Proceedings of
the First ESWC Workshop on Inductive Reasoning and Machine
Learning on the Semantic Web (IRMLeS 2009), 2009.
- Zhao Xu, Kristian Kersting, and Volker Tresp. Multi-relational learning with
gaussian processes. In Proceedings of the 21st
International Joint Conference on Artificial Intelligence
(IJCAI-09), July 2009.
- Zhao Xu, Volker Tresp, Achim Rettinger, and Kristian Kersting.
Social network mining with
nonparametric relational models. In H. Zhang,
M. Smith, L. Giles, and J. Yen, editors, Advances
in Social Network Mining and Analysis, LNCS. Springer,
2009.
2008
- Markus Bundschus, Matthaeus Dejori, Martin Stetter, Volker
Tresp, and Hans-Peter Kriegel. Extraction of semantic
biomedical relations from text using conditional random fields.
BMC Bioinformatics, 9:207, 2008.
- Markus Bundschus, Matthaeus Dejori, Shipeng Yu, Volker Tresp,
and Hans-Peter Kriegel. Statistical
modeling
of medical indexing processes for biomedical knowledge
information discovery from text. In Proceedings of
the 8th International Workshop on Data Mining in
Bioinformatics (BIOKDD '08), 2008.
- Dieter Fensel, Frank van Harmelen, Bo Andersson, Paul
Brennan, Hamish Cunningham, Emanuele Della Valle, Florian
Fischer, Zhisheng Huang, Atanas Kiryakov, Tony Kyung
il Lee, Lael Schooler, Volker Tresp, Stefan Wesner, Michael
Witbrock, and Ning Zhong. Towards
larkc: A platform for web-scale reasoning. In Proceedings
of the 2th IEEE International Conference on Semantic Computing
(ICSC 2008),, 2008.
- Christoph Lippert, Stefan-Hagen Weber, Yi Huang, Volker
Tresp, Matthias Schubert, and Hans-Peter Kriegel. Relation-prediction in
multi-relational domains using matrix-factorization. In NIPS
2008 Workshop: Structured Input - Structured Output,
2008.
- Stefan Reckow and Volker Tresp. Integrating ontological prior
knowledge into relational learning. In NIPS 2008
Workshop: Structured Input - Structured Output, 2008.
- Achim Rettinger, Matthias Nickles, and Volker Tresp. A statistical
relational model for trust learning. In Proceeding
of 7th International Conference on Autonomous Agents and
Multiagent Systems (AAMAS 2008), 2008.
- Volker Tresp, Markus Bundschus, Achim Rettinger, and
Yi Huang. Towards
machine learning on the semantic web. Technical report,
2008. Extended Version of a paper to appear in: Costa, Paulo C.
G.; D'Amato, Claudia; Fanizzi, Nicola; Laskey, Kathryn B.;
Laskey, Kenneth J.; Lukasiewicz, Thomas; Nickles, Matthias; and
Pool, Michael (Eds.): Uncertainty Reasoning for the Semantic Web
I Lecture Notes in AI, Springer, 2008.
- Zhao Xu, Volker Tresp, Shipeng Yu, and Kai Yu. Nonparametric relational
learning for social network analysis. In 2nd ACM
Workshop on Social Network Mining and Analysis (SNA-KDD 2008),
2008.
2007
- Achim Rettinger, Matthias Nickles, and Volker Tresp. Learning initial trust among
interacting agents. In Eleventh International
Workshop CIA 2007 on Cooperative Information Agents.
Springer 2007, September 2007.
- Anton Schwaighofer, Mathaeus Dejori, Volker Tresp, and Martin
Stetter. Structure
learning with nonparametric decomposable models. In Proceedings
of ICANN 2007. Springer Verlag, 2007.
- Zhao Xu, Volker Tresp, Shipeng Yu, Kai Yu, and Hans-Peter
Kriegel. Fast inference in
infinite hidden relational models. In 5th
International Workshop on Mining and Learning with Graphs (MLG
2007), 2007. .
- Shipeng Yu, Volker Tresp, and Kai Yu. Robust multi-task learning with
t-processes. In 24th International Conference on
Machine Learning (ICML'2007), 2007.
- Yi Huang, Volker Tresp, and Stefan Hagen Weber. Predictive Modeling using
Features derived from Paths in Relational Graphs.
Technical report, 2007.
- Ruxandra Lupas Scheiterer, Dragan Obradovic and Volker Tresp.
Tailored-to-Fit Bayesian Network Modeling of Expert Diagnostic
Knowledge. The Journal
of VLSI Signal Processing, Volume 49, Number 2, 2007.
2006
- Zhao Xu, Volker Tresp, Kai Yu, and Hans-Peter Kriegel. Infinite hidden relational
models. In Proceedings of the 22nd International
Conference on Uncertainty in Artificial Intelligence (UAI
2006), 2006.
- Kai Yu, Jinbo Bi, and Volker Tresp. Active learning via
transductive experimental design. In The 23nd
International Conference on Machine Learning (ICML 2006),
2006.
- Kai Yu, Wei Chu, Shipeng Yu, Volker Tresp, and Zhao Xu. Stochastic relational models
for discriminative link prediction. In Advances in
Neural Information Processing Systems (NIPS*2006). MIT
Press, 2006.
- Shipeng Yu, Kai Yu, and Volker Tresp. Collaborative ordinal regression.
In The 23nd International Conference on Machine Learning
(ICML 2006), 2006.
- Shipeng Yu, Kai Yu, Volker Tresp, and Hans-Peter Kriegel. Multi-output
regularized feature projection. IEEE Transactions
on Knowledge and Data Engineering, 18 (22), 2006.
- Shipeng Yu, Kai Yu, Volker Tresp, and Hans-Peter Kriegel. Variational bayesian
dirichlet-multinomial allocation for exponential family
mixtures. In 17th European Conference on Machine
Learning (ECML 2006), 2006.
- Shipeng Yu, Kai Yu, Volker Tresp, Hans-Peter Kriegel, and
Mingrui Wu. Supervised
probabilistic principal component analysis. In 12th
ACM International Conference on Knowledge Discovery and Data
Mining (KDD 2006), 2006.
2005
- Zhao Xu, Volker Tresp, Kai Yu, Shipeng Yu, and Hans-Peter
Kriegel. Dirichlet enhanced
relational learning. In The 22nd International
Conference on Machine Learning (ICML 2005), 2005.
- Kai Yu and Volker Tresp. Learning
to learn and collaborative filtering. In Workshop
on Inductive Transfer: 10 Years Later (NIPS*2005 Workshop),
2005.
- Kai Yu and Volker Tresp. Soft
clustering on graphs. In Advances in Neural
Information Processing Systems (NIPS*2005). MIT Press,
2005.
- Kai Yu, Volker Tresp, and Anton Schwaighofer. Learning gaussian
processes from multiple tasks. In The 22nd
International Conference on Machine Learning (ICML 2005),
2005.
- Kai Yu, Shipeng Yu, and Volker Tresp. Blockwise supervised
inference on large graphs. In Proceedings of
Workshop on Learning with Partially Classified Training Data
at the 22nd International Conference on Machine Learning (ICML
2005), 2005.
- Kai Yu, Shipeng Yu, and Volker Tresp. Dirichlet enhanced latent
semantic analysis. In Worksjop on Artificial
Intelligence and Statistics AISTAT 2005, 2005.
- Kai Yu, Shipeng Yu, and Volker Tresp. Multi-label informed latent semantic
indexing. In Proceedings of the 28th Annual
International ACM SIGIR Conference, 2005.
- Kai Yu, Shipeng Yu, and Volker Tresp. Multi-output regularized
projection. In IEEE Computer Society International
Conference on Computer Vision and Pattern Recognition (CVPR
2005), 2005.
- Shipeng Yu, Kai Yu, Volker Tresp, and Hans-Peter Kriegel. A probabilistic
clustering-projection model for discrete data. In Proceedings
of the 9th European Conference on Principles and Practice of
Knowledge Discovery in Databases (PKDD 2005),
2005.
2004
- Mathäus Dejori, Anton Schwaighofer, Volker Tresp, and
Martin Stetter. Mining
functional modules in genetic networks with decomposable
graphical models. OMICS A Journal of Integrative
Biology, 8(2):176-188, 2004.
- Anton Schwaighofer, Volker Tresp, and Kai Yu. Learning
gaussian process kernels via hierarchical bayes. In Advances
in Neural Information Processing Systems (NIPS*2004).
MIT Press, 2004.
- Volker Tresp and Kai Yu. An
introduction
to nonparametric hierarchical bayesian modelling with a focus
on multi-agent learning. In Proceedings of the
Hamilton Summer School on Switching and Learning in Feedback
Systems. Lecture Notes in Computing Science,
2004.
- Kai Yu, Anton Schwaighofer, Volker Tresp, Xiaowei Xu, and
Hans-Peter Kriegel. Probabilistic
memory-based collaborative filtering. IEEE
Transactions on Knowledge and Data Engineering (TKDE),
10, 2004.
- Kai Yu, Volker Tresp, and Shipeng Yu. A nonparametric hierarchical
bayesian framework for information filtering. In Proceedings
of the 27th Annual International ACM SIGIR Conference.
ACM, 2004.
2003
- Kai Yu Kai, Anton Schwaighofer, Volker Tresp, Wei-Ying
Ma, and HongJiang Zhang. Collaborative
ensemble learning: Combining collaborative and content-based
information filtering via hierarchical bayes. In Proceedings
of 19th International Conference on Uncertainty in Artificial
Intelligence (UAI'03)), 2003.
- Anton Schwaighofer, Marian Grigoras, Volker Tresp, and Clemens
Hoffmann. Gpps: A
gaussian process positioning system for cellular networks. In Advances
in
Neural Information Processing Systems (NIPS*2003). MIT
Press, 2003.
- Zhao Xu, Kai Yu, Volker Tresp, Xiaowei Xu, and Jizhi Wang. Representative sampling for text
classification using support vector machines. In 25th
European
Conference on Information Retrieval Research, ECIR'2003,
2003.
- Kai Yu, Wei-Ying Ma, Volker Tresp, Zhao Xu, Xiaofei He,
HongJiang Zhang, and Hans-Peter Kriegel. Knowing a tree from the forest: Art
image retrieval using a society of profiles. In Proceedings
of 11th Annual ACM International Conference on Multimedia (ACM
Multimedia'03), 2003.
2002
- Thomas Briegel and Volker Tresp. A nonlinear state space model for
the blood glucose metabolism of a diabetic. at-Automatisierungstechnik,
50, 2002.
- Alexander K. Scheel, Andreas Krause, Ingolf Mesecke
von Rheinbaben, Georg Metzger, Helmut Rost, Volker Tresp, Peter
Mayer, Monika Reuss-Borst, and Gerhard A. Müller. Assessment of
Proximal Finger Joint Inflammation in Patients With Rheumatoid
Arthritis, Using a Novel Laser-Based Imaging Technique.
Arthritis and Rheumatism, 46(5), 2002.
- Anton Schwaighofer and Volker Tresp. Transductive and inductive
methods for approximate gaussian process regression. In Advances
in Neural Information Processing Systems (NIPS*2002).
MIT Press, 2002.
- Anton Schwaighofer, Volker Tresp, Peter Mayer,
Alexander K. Scheel, and Gerhard A. Müller. The RA scanner: prediction of
rheumatoid joint inflammation based on laser imaging. In Advances
in Neural Information Processing Systems (NIPS*2002).
MIT Press, 2002.
- Volker Tresp. The
equivalence between row and column linear regression.
Technical report, 2002.
- Christopher K. I. Williams, Carl Edward Rasmussen,
Anton Schwaighofer, and Volker Tresp. Observations of the nyström
method for gaussian process prediction. Technical report,
University of Edinburgh, 2002.
2001
- Anton Schwaighofer and Volker Tresp. The Bayesian committee
support vector machine. In International Conference
on Artificial Neural Networks - ICANN 2001, 2001.
- Volker Tresp. Committee
machines. In Yu Hen Hu and Jenq-Nen Hwang, editors, Handbook
for Neural Network Signal Processing. CRC Press,
2001.
- Volker Tresp. Scaling
kernel-based systems to large data sets. Data
Mining and Knowledge Discovery, 5, 2001.
- Volker Tresp and Anton Schwaighofer. Local factorization of functions.
Technical report, 2001.
- Volker Tresp and Anton Schwaighofer. Scalable kernel systems.
In International Conference on Artificial Neural Networks
- ICANN 2001, 2001.
- Joachim Horn, Thomas Birkhölzer, Oliver Hogl, Marco
Pellegrino, Ruxandra Lupas Scheiterer, Kai-Uwe Schmidt and
Volker Tresp. Knowledge
Acquisition and Automated Generation of Bayesian Networks for a
Medical Dialogue and Advisory System. In Artificial intelligence in
medicine, Lecture Notes in Computer Science,
Springer, 2001.
2000
- Thomas Briegel and Volker Tresp. Dynamic neural regression models.
Technical report, Instituts für Statistik der
Ludwig-Maximilians-Universität München, 2000.
Discussion Paper 181.
- Volker Tresp. A bayesian committee
machine. Neural Computation, 12, 2000.
- Volker Tresp. The generalized
bayesian committee machine. In Proceedings of the
Sixth ACM SIGKDD International Conference on Knowledge
Discovery and Data Mining, KDD-2000.
- Volker Tresp. Mixtures of
gaussian processes. In Advances in Neural
Information Processing Systems (NIPS*2000). MIT Press,
2000.
- Volker Tresp, Thomas Briegel, and John Moody. Neural-network models for the blood
glucose metabolism of a diabetic. IEEE Transactions
on Neural Networks, 10, 2000.
1999
- Thomas Briegel and Volker Tresp. Robust
neural network regression for offline and online learning.
In Advances in Neural Information Processing Systems
(NIPS*1999). MIT Press, 1999.
- Michael Haft, Reimar Hofmann, and Volker Tresp. Model-independent mean field
theory as a local method for approximate propagation of
information. Network: Computation in Neural Systems,
10, 1999.
- Volker Tresp, Michael Haft, and Reimar Hofmann. Mixture approximations to
bayesian networks. In K. B. Laskey and H. Prade,
editors, Uncertainty in Artificial Intelligence,
Proceedings of the Fifteenth Conference. Morgan
Kaufmann Publishers, 1999.
- Harald Steck and Volker Tresp. Bayesian Belief Networks for Data
Mining, Proceedings of the 2nd Workshop on Data Mining und
Data Warehousing, DWDW99, 1999.
- Thomas Birkhölzer, Michael Haft, Reimar Hofmann,
Joachim Horn, Marko Pellegrino, and Volker Tresp. Intelligent
Communication in Medical Care. Joint European Conference on Artificial Intelligence
in Medicine and MedicDecision Making (AIMDM 99), 1999.
1998
- Thomas Briegel and Volker Tresp. Fisher scoring and a
mixture of modes approach for approximate inference and
learning in nonlinear state space models. In M. S.
Kearns, S. A. Solla, and D. A. Cohn, editors, Advances
in Neural Information Processing Systems (NIPS*1998).
MIT Press, 1998.
- Jaakko Hollmén and Volker Tresp. Call-based fraud detection in
mobile communication networks using a hierarchical
regime-switching model. In M. S. Kearns, S. A.
Solla, and D. A. Cohn, editors, Advances in Neural
Information Processing Systems (NIPS*1998). MIT Press,
1998.
- Dirk Ormoneit and Volker Tresp. Averaging,
maximum penalized likelihood and bayesian estimation for
improving gaussian mixture probability density estimates.
IEEE Transactions on Neural Networks, 9, 1998.
- Volker Tresp and Reimar Hofmann. Nonlinear time-series prediction
with missing and noisy data. Neural Computation,
1998.
-
1997
- Thomas Briegel and Volker Tresp. A
solution for missing data in recurrent neural networks with an
application to blood glucose prediction. In M. I.
Jordan, M. S. Kearns, and S. A. Solla, editors, Advances
in Neural Information Processing Systems (NIPS*1997),
1997.
- Reimar Hofmann and Volker Tresp. Nonlinear
markov networks for continuous variables. In M. I.
Jordan, M. S. Kearns, and S. A. Solla, editors, Advances
in Neural Information Processing Systems (NIPS*1997).
MIT Press, 1997.
- Michiaki Taniguchi and Volker Tresp. Averaging regularized estimator.
Neural Computation, 1997.
- Volker Tresp, Jürgen Hollatz, and Subutai Ahmad. Representing probabilistic rules
with networks of gaussian basis functions. Machine
Learning, 1997.
1996
- Volker Tresp, Ralph Neuneier, and Hans-Georg Zimmermann. Early brain damage. In
M. Mozer, M. I. Jordan, and T. Petsche, editors,
Advances in Neural Information Processing Systems
(NIPS*1996). MIT Press, 1996.
1995
- Reimar Hofmann and Volker Tresp. Discovering
structure in continuous variables using bayesian networks.
In D. S. Touretzky, M. C. Mozer, and M. E.
Hasselmo, editors, Advances in Neural Information
Processing Systems (NIPS*1995). MIT Press, 1995.
- Dirk Ormoneit and Volker Tresp. Improved gaussian mixture
density estimates using bayesian penalty terms und network
averaging. In D. S. Touretzky, M. C. Mozer, and
M. E. Hasselmo, editors, Advances in Neural
Information Processing Systems (NIPS*1995). MIT Press,
1995.
- Volker Tresp and Reimar Hofmann. Missing and noisy
data in nonlinear time-series prediction. In Neural
Networks for Signal Processing 5. IEEE Signal
Processing Society, 1995.
1994
- Volker Tresp and Michiaki Taniguchi. Combining estimators using
non-constant weighting functions. In G. Tesauro,
D. S. Touretzky, and Leen T. K., editors, Advances
in Neural Information Processing Systems (NIPS*1994).
MIT press, 1994.
- Volker Tresp, Ralph Neuneier, and Subutai Ahmad. Efficient methods for
dealing with missing data in supervised learning. In
G. Tesauro, D. S. Touretzky, and Leen T. K.,
editors, Advances in Neural Information Processing
Systems (NIPS*1994). MIT Press, 1994.
1993
- Volker Tresp, Subutai Ahmad, and Ralph Neuneier. Training neural networks with
deficient data. In J. D. Cowan, G. Tesauro, and
J. Alspector, editors, Advances in Neural
Information Processing Systems (NIPS*1993). Morgan
Kaufmann, 1993.
1992
- Subutai Ahmad and Volker Tresp. Some solutions to the missing
feature problem in vision. In C. L. Giles,
Hanson S. J., and Cowan J. D., editors, Advances
in Neural Information Processing Systems (NIPS*1992).
Morgan Kaufman, 1992.
- Volker Tresp, Jürgen Hollatz, and Subutai Ahmad. Network structuring and
training using rule-based knowledge. In C. L. Giles,
Hanson S. J., and Cowan J. D., editors, Advances
in Neural Information Processing Systems (NIPS*1992).
Morgan Kaufman, 1992.
- Volker Tresp, Ira Leuthäusser, Martin Schlang, Ralph
Neuneier, Klaus Abraham-Fuchs, and Wolfgang Härer. The neural impulse
response filter. In International Conference on
Artificial Neural Networks II. North Holland,
1992.
1991
1990
"No man is an island" (J. Donne
commenting on the Social Network; more)