Jump to content

Vasant Honavar

From Wikipedia, the free encyclopedia

This is an old revision of this page, as edited by FreeToDisagree (talk | contribs) at 22:13, 20 July 2020 (Added a wikilink.). The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.

Vasant Honavar
Nationality USA
Alma materUniversity of Wisconsin, Madison (Ph.D., M.S.),
Drexel University (M.S.),
B.M.S. College of Engineering, Bangalore University (B.E).
Scientific career
FieldsComputer science, Artificial intelligence, Machine learning, Data mining, Bioinformatics, Big data, Causal Inference, Data science, Informatics, Knowledge Representation, Computational biology, Cognitive science, Health informatics, Neuroinformatics, Network Science
InstitutionsIowa State University
National Science Foundation
Pennsylvania State University
Doctoral advisorLeonard Uhr

Vasant G. Honavar is an Indian born American computer scientist, and artificial intelligence, machine learning, big data, data science, causality, knowledge representation, bioinformatics and health informatics researcher and educator.

Biography

Vasant Honavar was born at Poona, India in 1960 to Bhavani G. and Gajanan N. Honavar. He received his early education at the Vidya Vardhaka Sangha High School and M.E.S. College in Bangalore, India. He received a B.E. in electronics engineering from B.M.S. College of Engineering in Bangalore, India in 1982, when it was affiliated with Bangalore University, an M.S. in electrical and computer engineering in 1984 from Drexel University, and an M.S. in computer science in 1989, and a Ph.D. in 1990, respectively, from the University of Wisconsin–Madison, where he studied Artificial Intelligence and worked with Leonard Uhr.

In 2013, Honavar joined the faculty of Penn State College of Information Sciences and Technology[1] at Pennsylvania State University where he holds the Edward Frymoyer endowed professorship and serves on the faculties of the graduate programs in Computer Science, Informatics, Bioinformatics and Genomics, Neuroscience, and of Operations Research, and of an undergraduate program in Data Science. Honavar serves as the Director of the Artificial Intelligence Research Laboratory [2], Associate Director of the Institute for Cyberscience[3] and the Director of the Center for Big Data Analytics and Discovery Informatics[4] at Pennsylvania State University. Honavar serves on the Executive Board of the Northeast Big Data Innovation Hub.[5] Honavar served on the Computing Research Association's Computing Community Consortium Council during 2014-2017,[6][7] where he chaired the task force on Convergence of Data and Computing, and was a member of the task force on Artificial Intelligence. In 2015, Honavar was elected to the Electorate Nominating Committee of the Information, Computing, and Communication Section of the American Association for the Advancement of Science.[8] In 2016, Honavar was selected as the first Sudha Murty Distinguished Visiting Chair of Neurocomputing and Data Science by the Indian Institute of Science, Bangalore, India. In 2018, Honavar was named a Distinguished Member of the Association for Computing Machinery for his outstanding scientific contributions to computing; and elected a Fellow of the American Association for the Advancement of Science for his distinguished research contributions and leadership in data science.

Honavar is known for his research contributions in artificial intelligence, machine learning, data mining, knowledge representation, neural networks, semantic web, big data analytics, and bioinformatics and computational biology. He has published over 300 research articles, including many highly cited ones,[9][10] as well as several books on these topics.[11] His recent work has focused on scalable algorithms for constructing predictive models from large, semantically disparate distributed data, learning predictive models from linked open data, big data analytics, analysis and prediction of protein-protein, protein-RNA, and protein-DNA interfaces and interactions, social network analytics, health informatics, secrecy-preserving query answering, representing and reasoning about preferences, and causal inference and meta analysis.

Honavar has directly supervised the dissertation research of 34 Ph.D. students,[12] all of whom have gone onto pursue successful research careers in academia, industry, or government.

During 1990–2013, Honavar was a professor of computer science at Iowa State University where he led the Artificial Intelligence Research Laboratory which he founded in 1990. From 2006 to 2013, he served as the director of the Iowa State University Center for Computational Intelligence, Learning and Discovery which he founded in 2006. He was instrumental in establishing the Iowa State University interdepartmental graduate program in Bioinformatics and Computational Biology (and served as its Chair during 2003–2005).

During 2010–2013, Honavar served as a Program Director in the Information Integration and Informatics program in the Information and Intelligent Systems Division of the Computer and Information Science and Engineering Directorate of the US National Science Foundation where he led the Big Data Program[13] and contributed to several core and cross-cutting programs.

Honavar has held visiting professorships at Carnegie Mellon University, the University of Wisconsin–Madison, and at the Indian Institute of Science.

Honavar has been quite actively engaged in fostering national and international scientific collaborations in Artificial Intelligence, Data Sciences, and their applications in addressing national, international, and societal priorities, e.g., in accelerating science, improving health, transforming agriculture, advancing education, etc. through partnerships that bring together academia, non-profits, and industry [14] [15] [16] [17] [18] [19].

Selected books and articles

Books

  • Vasant Honavar and Leonard Uhr. (Ed.) Artificial Intelligence and Neural Networks: Steps Toward Principled Integration. New York: Academic Press. 1994. ISBN 0-12-355055-6
  • Vasant Honavar and Giora Slutzki (Ed). Grammatical Inference. Berlin: Springer-Verlag. 1998. ISBN 3-540-64776-7
  • Mukesh Patel, Vasant Honavar and Karthik Balakrishnan (Ed). Advances in the Evolutionary Synthesis of Intelligent Agents. Cambridge, MA: MIT Press. 2001. ISBN 0-262-16201-6
  • Ganesh Ram Santhanam, Samik Basu, and Vasant Honavar. Representing and Reasoning with Qualitative Preferences: Tools and Applications. Lecture #31, Synthesis Lectures on Artificial Intelligence and Machine Learning. Morgan & Claypool Publishers. 2016. doi:10.2200/S00689ED1V01Y201512AIM031, ISBN 978-1-62705-839-1

Articles

  • Barocas, S., Bradley, E., Honavar, V. and Provost, F. (2017). Big Data, Data Science, and Civil Rights. Computing Community Consortium. arXiv preprint arxiv:1706.03102.
  • Hager, G., Bryant, R., Horvitz, E., Mataric, M., and Honavar, V. (2017). Advances in Artificial Intelligence Require Progress Across all of Computer Science. Computing Community Consortium. arXiv preprint arXiv:1707.04352
  • Honavar, V., Yelick, K., Nahrstedt, K., Rushmeier, H., Rexford, J., Hill, Mark., Bradley, E., and Mynatt, E. (2017). Advanced Cyberinfrastructure for Science, Engineering, and Public Policy. Computing Community Consortium. arXiv preprint arXiv:1707.00599.
  • Honavar, V., Hill, M. Yelick, K. (2016). Accelerating Science: A Computing Research Agenda, Computing Community Consortium.
  • Honavar, V. (2014). Honavar, V. (2014). The Promise and Potential of Big Data: A Case for Discovery Informatics Review of Policy Research 31:4 10.1111/ropr.12080.

Causal Inference

  • Kandasamy, S., Bhattacharyya, A., and Honavar, V. (2019). Minimum Intervention Cover of a Causal Graph. In: Proceedings of the 33rd AAAI Conference on Artificial Intelligence (AAAI-19).
  • Khademi, A., Lee, S., Foley, D., and Honavar, V. (2019). Fairness in Algorithmic Decision Making: A Preliminary Excursion Through the Lens of Causality. In: Proceedings of the Web Conference.
  • Lee, S. and Honavar, V. (2019). Towards Robust Relational Causal Discovery. In: Proceedings of the Thirty-Fifth Conference on Uncertainty in Artificial Intelligence (UAI-19).
  • Lee, S. and Honavar, V. (2017). Self-Discrepancy Conditional Independence Test. In: Conference on Uncertainty in Artificial Intelligence (UAI-17).
  • Lee, S. and Honavar, V. (2017). A Kernel Independence Test for Relational Data. In: Conference on Uncertainty in Artificial Intelligence (UAI-17).
  • Bui, N., Yen, J., and Honavar, V. (2016). Temporal Causality Analysis of Sentiment Change in a Cancer Survivor Network. IEEE Transactions on Computational Social Systems. doi:10.1109/TCSS.2016.2591880
  • Lee, S. and Honavar, V. (2016). A Characterization of Markov Equivalence Classes of Relational Causal Models Under Path Semantics. In: Proceedings of the Conference on Uncertainty in Artificial Intelligence (UAI-16).
  • Lee, S. and Honavar, V. (2016). On learning causal models from relational data. In: Proceedings of the Thirtieth AAAI Conference on Artificial Intelligence (AAAI-16).
  • Bui, N., Yen, J. and Honavar, V. (2015). Temporal Causality of Social Support in an Online Community for Cancer Survivors In: International Conference on Social Computing, Behavioral-Cultural Modeling, and Prediction (SBP15). Springer-Verlag Lecture Notes in Computer Science, Vol. 9021, pp. 13–23.
  • Lee, S., and Honavar, V. (2015). Lifted Representation of Relational Causal Models Revisited: Implications for Reasoning and Structure Learning In: Workshop on Advances in Causal Inference, Conference on Uncertainty in Artificial Intelligence, 2015.
  • Bareinboim, E., Lee, S., Honavar, V. and Pearl, J. (2013). Transportability from Multiple Environments with Limited Experiments. In: Advances in Neural Information Systems (NIPS) 2013. pp. 136–144.
  • Lee, S. and Honavar, V. (2013). Transportability of a Causal Effect from Multiple Environments. In: Proceedings of the 27th Conference on Artificial Intelligence (AAAI 2013).
  • Lee, S. and Honavar, V. (2013). Causal Transportability of Experiments on Controllable Subsets of Variables: z-Transportability. In: Proceedings of the 29th Conference on Uncertainty in Artificial Intelligence (UAI 2013).

Machine learning, neural networks, and deep learning

  • Liang, J., Xu, D., Sun, Y., and Honavar, V. (2020). LMLFM: Longitudinal Multi-Level Factorization Machines. In: Proceedings of the 34th AAAI Conference on Artficial Intelligence (AAAI-2020).
  • Sun, Y., Wang, S., Tang, X., Hsieh, T-Y., and Honavar, V. (2020). Non-target-specific Node Injection Attacks on Graph Neural Networks: A Hierarchical Reinforcement Learning Approach. Proceedings of The Web Conference 2020 (WWW ’20) https://doi.org/10.1145/3366423.3380149
  • Sun, Y., Tang, X., Hsieh, T-Y., Wang, S., and Honavar, V. (2019). MEGAN: A Generative Adversarial Network Algorithm for Multi-View Network Embedding. In: Proceedings of the 28th International Joint Conference on Artificial Intelligence (IJCAI-2019).
  • Hsieh, T-Y, Sun, Y., Wang, S., and Honavar, V. (2019). Adaptive Structural Co-regularization for Unsupervised Multi-view Feature Selection. In: Proceedings of the IEEE International Conference on Big Knowledge (ICBK-2019).
  • Zhou, Y., Sun, Y., and Honavar, V. (2019). Improving Image Captioning by Leveraging Knowledge Graphs. IEEE Winter Conference on Applications of Computer Vision.
  • Hsieh, T-Y., El-Manzalawy, Y., Sun, Y., and Honavar, V (2018). Compositional Stochastic Average Gradient for Machine Learning and Related Applications. In: Proceedings of the 19th International Conference on Intelligent Data Engineering and Automated Learning.
  • Sun, Y., Bui, N., Hsieh, T-Y., and Honavar, V. (2018). Multi-View Network Embedding Via Graph Factorization Clustering and Co-Regularized Multi-View Agreement. IEEE ICDM International workshop on Graph Analytics.
  • Liang, J., Hu, J., Dong, S., and Honavar, V. (2018). Top-N-Rank: A Truncated List-wise Ranking Approach for Large-scale Top-N Recommendation. In: Proceedings of the IEEE International Conference on Big Data.
  • Hu, J., Liang, J., Kuang, Y. and Honavar, V. (2018). A user similarity-based Top-N recommendation approach for mobile in-application advertising. Expert Systems With Applications. Vol. 111. pp. 51–60.
  • Bui, N., Le, T., and Honavar, V. (2016). Labeling Actors in Multi-view Social Networks by Integrating Information From Within and Across Multiple Views. In: Proceedings of the IEEE Conference on Big Data.
  • Lin, H., Bui, N., and Honavar, V. (2015). Learning Classifiers from Remote RDF Data Stores Augmented with RDFS Subclass Hierarchies. In: 2nd International Workshop on High Performance Big Graph Data Management, Analysis, and Mining (BigGraph 2015), The IEEE International Conference on Big Data.
  • Bui, N. and Honavar, V. (2014). Labeling Actors in Social Networks Using a Heterogeneous Graph Kernel. In: International Conference on Social Computing, Behavioral-Cultural Modeling, and Prediction (SBP14). pp. 27–34.
  • Lin, H. and Honavar, V. (2013). Learning Classifiers from Chains of Multiple Interlinked RDF Data Stores. In: IEEE Big Data Congress. Best Student Paper Award.
  • Lin, H., Lee, S., Bui, N. and Honavar, V. (2013). Learning Classifiers from Distributional Data. In: IEEE Big Data Congress.
  • Bui, N. and Honavar, V. (2013). On the Utility of Abstraction in Labeling Actors in Social Networks. In: The 2013 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining.
  • Silvescu, A. and Honavar, V. (2013). Abstraction Super-structuring Normal Forms: Towards a Theory of Structural Induction. In: Algorithmic Probability and Friends. Bayesian Prediction and Artificial Intelligence (pp. 339–350). Springer Berlin Heidelberg.
  • Tu, K. and Honavar, V. (2012). Unambiguity Regularization for Unsupervised Learning of Probabilistic Grammars. In: Proceedings of EMNLP-CoNLL 2012 : Conference on Empirical Methods in Natural Language Processing and Computational Natural Language Learning. pp. 1324–1334.
  • Lin, H., Koul, N., and Honavar, V. (2011). Learning Relational Bayesian Classifiers from RDF Data. In: Proceedings of the International Semantic Web Conference (ISWC 2011). Springer-Verlag Lecture Notes in Computer Science Vol. 7031 pp. 389–404.
  • Tu, K. and Honavar, V. (2011). On the Utility of Curricula in Unsupervised Learning of Grammars. In: Proceedings of the Twenty-Second International Joint Conference on Artificial Intelligence (IJCAI 2011) pp. 1523–1528.
  • Tu, K., Ouyang, X., Han, D., Yu, Y., and Honavar, V. (2011). Exemplar-based Robust Coherent Biclustering. In: Proceedings of the SIAM Conference on Data Mining (SDM 2011). pp. 884–895.
  • Yakhnenko, O., and Honavar, V. (2011). Multi-Instance Multi-Label Learning for Image Classification with Large Vocabularies. In: Proceedings of the British Machine Vision Conference.
  • Caragea, C., Silvescu, A., Caragea, D. and Honavar, V. (2010). Abstraction-Augmented Markov Models. In: Proceedings of the IEEE Conference on Data Mining (ICDM 2010). IEEE Press. pp. 68–77.
  • Koul, N. and Honavar, V. (2010). Learning in the Presence of Ontology Mapping Errors. In: Proceedings of the IEEE/WIC/ACM International Conference on Web Intelligence and Intelligent Agent Technology. pp. 291–296. ACM Press.
  • Bromberg, F., Margaritis, D., and Honavar, V. (2009). Efficient Markov Network Structure Discovery from Independence Tests. Journal of Artificial Intelligence Research. Vol. 35. pp. 449–485.
  • El-Manzalawi, Y. and Honavar, V. (2009). MICCLLR: Multiple-Instance Learning using Class Conditional Log Likelihood Ratio. In: Proceedings of the 12th International Conference on Discovery Science (DS 2009). Springer-Verlag Lecture Notes in Computer Science Vol. 5808, pp. 80–91, Berlin: Springer.
  • Silvescu, A., Caragea, C. and Honavar, V. (2009). Combining Super-structuring and Abstraction on Sequence Classification. IEEE Conference on Data Mining (ICDM 2009).
  • Yakhnenko, O., and Honavar, V. (2009). Multi-Modal Hierarchical Dirichlet Process Model for Predicting Image Annotation and Image-Object Label Correspondence. In: Proceedings of the SIAM Conference on Data Mining, SIAM. pp. 281–294
  • Tu, K., and Honavar, V. (2008). Unsupervised Learning of Probabilistic Context-Free Grammar using Iterative Biclustering. . In: International Colloquium on Grammatical Inference (ICGI-2008). Springer-Verlag Lecture Notes in Computer Science vol. 5278 pp. 224–237.
  • Yakhnenko, O. and Honavar, V. (2008). Annotating Images and Image Objects using a Hierarchical Dirichlet Process Model. 9th International Workshop on Multimedia Data Mining (SIGKDD MDM 2008), Las Vegas, ACM.
  • Zhang, J.; Kang, D.K.; Silvescu, A.; Honavar, V. (2006). "Learning accurate and concise naïve Bayes classifiers from attribute value taxonomies and data". Knowledge and Information Systems. 9 (2): 157–179. doi:10.1007/s10115-005-0211-z. PMC 2846370. PMID 20351793.
  • Caragea, D., Zhang, J., Bao, J., Pathak, J., and Honavar, V. (2005). Algorithms and Software for Collaborative Discovery from Autonomous, Semantically Heterogeneous Information Sources (Invited paper). Proceedings of the 16th International Conference on Algorithmic Learning Theory. Lecture Notes in Computer Science, Singapore, Berlin: Springer-Verlag. Vol. 3734. pp. 13–44
  • Zhang, J., Caragea, D. and Honavar, V. Learning Ontology-Aware Classifiers. Proceedings of the 8th International Conference on Discovery Science. Springer-Verlag Lecture Notes in Computer Science, Singapore, Berlin: Springer-Verlag. Vol. 3735. pp. 308–321, 2005.
  • Yakhnenko, O., Silvescu, A., and Honavar, V. (2005) Discriminatively Trained Markov Model for Sequence Classification. IEEE Conference on Data Mining (ICDM 2005), Houston, Texas, IEEE Press
  • Kang, D-K., Zhang, J., Silvescu, A., and Honavar, V. (2005) Multinomial Event Model Based Abstraction for Sequence and Text Classification. Proceedings of the Symposium on Abstraction, Reformulation, and Approximation (SARA 2005), Edinburgh, UK, Berlin: Springer-Verlag. Vol. 3607. pp. 134–148.
  • Wu. F., Zhang, J., and Honavar, V. (2005) Learning Classifiers Using Hierarchically Structured Class Taxonomies. Proceedings of the Symposium on Abstraction, Reformulation, and Approximation (SARA 2005), Edinburgh, Berlin, Springer-Verlag. Vol. 3607. pp. 313–320.
  • Caragea, D.; Silvescu, A.; Honavar, V. (2004). "A Framework for Learning from Distributed Data Using Sufficient Statistics and its Application to Learning Decision Trees". International Journal of Hybrid Intelligent Systems. 1 (2): 80–89. doi:10.3233/HIS-2004-11-210. PMC 2846376. PMID 20351798.
  • Kang, D-K., Silvescu, A., Zhang, J. and Honavar, V. Generation of Attribute Value Taxonomies from Data for Accurate and Compact Classifier Construction. IEEE International Conference on Data Mining, IEEE Press. pp. 130–137, 2004.
  • R. Polikar, L. Udpa, S. Udpa, and V. Honavar (2004). An Incremental Learning Algorithm with Confidence Estimation for Automated Identification of NDE Signals. IEEE Transactions of Ultrasonics, Ferroelectrics, and Frequency Control. Vol. 51. pp. 990–1001, 2004.
  • Atramentov, A., Leiva, H., and Honavar, V. (2003). A Multi-Relational Decision Tree Learning Algorithm – Implementation and Experiments.. In: Proceedings of the Thirteenth International Conference on Inductive Logic Programming. Berlin: Springer-Verlag.
  • Zhang, J. and Honavar, V. (2003). Learning Decision Tree Classifiers from Attribute Value Taxonomies and Partially Specified Data. In: Proceedings of the International Conference on Machine Learning (ICML-03).
  • Zhang, J., Silvescu, A., and Honavar, V. (2002). Ontology-Driven Induction of Decision Trees at Multiple Levels of Abstraction. In: Proceedings of Symposium on Abstraction, Reformulation, and Approximation. Berlin: Springer-Verlag.
  • Polikar, R., Udpa, L., Udpa, S., and Honavar, V. (2001). Learn++: An Incremental Learning Algorithm for Multi-Layer Perceptron Networks. IEEE Transactions on Systems, Man, and Cybernetics. Vol. 31, No. 4. pp. 497–508.
  • Parekh, R. and Honavar, V. (2001). DFA Learning from Simple Examples. Machine Learning. Vol. 44. pp. 9–35.
  • Silvescu, A., and Honavar, V. (2001). Temporal Boolean Network Models of Genetic Networks and Their Inference from Gene Expression Time Series. Complex Systems.. Vol. 13. No. 1. pp. 54-.
  • Balakrishnan, K., Bousquet, O. and Honavar, V. (2000). Spatial Learning and Localization in Animals: A Computational Model and Its Implications for Mobile Robots, Adaptive Behavior. Vol. 7. no. 2. pp. 173–216.
  • Caragea, D., Silvescu, A., and Honavar, V. (2000). Agents That Learn from Distributed Dynamic Data Sources. In: Proceedings of the ECML 2000/Agents 2000 Workshop on Learning Agents. Barcelona, Spain.
  • Parekh, R. and Honavar, V. (2000). On the Relationships between Models of Learning in Helpful Environments. In: Proceedings of the Fifth International Conference on Grammatical Inference. Lisbon, Portugal.
  • Parekh, R., Yang, J., and Honavar, V. (2000). Constructive Neural Network Learning Algorithms for Multi-Category Pattern Classification. IEEE Transactions on Neural Networks. Vol. 11. No. 2. pp. 436–451.
  • Polikar, R., Udpa, L., Udpa, S., and Honavar, V. (2000). Learn++: An Incremental Learning Algorithm for Multilayer Perceptron Networks. In: Proceedings of the IEEE Conference on Acoustics, Speech, and Signal Processing (ICASSP) 2000. Istanbul, Turkey.
  • Yang, J., Parekh, R. & Honavar, V. (2000). Comparison of Performance of Variants of Single-Layer Perceptron Algorithms on Non-Separable Data. Neural, Parallel, and Scientific Computation. Vol. 8. pp. 415–438.
  • Yang, J. and Honavar, V. (1999). DistAl: An Inter-Pattern Distance Based Constructive Neural Network Learning Algorithm.. Intelligent Data Analysis. Vol. 3. pp. 55–73.
  • Parekh, R. and Honavar, V. (1999). Simple DFA are Polynomially Probably Exactly Learnable from Simple Examples. In: Proceedings of the International Conference on Machine Learning. Bled, Slovenia.
  • Bousquet, O., Balakrishnan, K. and Honavar, V. (1998). Is the Hippocampus a Kalman Filter?. In: Proceedings of the Pacific Symposium on Biocomputing. Singapore: World Scientific. pp. 655–666.
  • Parekh, R., Nichitiu, C., and Honavar, V. (1998). A Polynomial Time Incremental Algorithm for Learning DFA. In: Proceedings of the Fourth International Colloquium on Grammatical Inference (ICGI'98), Ames, IA. Lecture Notes in Computer Science vol. 1433 pp. 37–49. Berlin: Springer-Verlag.
  • Yang, J. and Honavar, V. (1998). Feature Subset Selection Using a Genetic Algorithm. IEEE Intelligent Systems (Special Issue on Feature Transformation and Subset Selection). vol. 13. pp. 44–49.
  • Parekh, R.G., Yang, J., and Honavar, V. (1997). MUPStart – A Constructive Neural Network Learning Algorithm for Multi-Category Pattern Classification. In: Proceedings of the IEEE International Conference on Neural Networks (ICNN'97). Houston, TX. pp. 1924–1929.
  • Parekh, R.G., Yang, J., and Honavar, V. (1997). Pruning Strategies for Constructive Neural Network Learning Algorithms. In: Proceedings of the IEEE International Conference on Neural Networks (ICNN'97). Houston, TX. pp. 1960–1965. June 9–12, 1997.
  • Parekh, R.G. and Honavar, V. (1997) Learning DFA from Simple Examples. In: Proceedings of the International Workshop on Algorithmic Learning Theory. (ALT 97). Sendai, Japan. Lecture notes in Computer Science. Vol. 1316 pp. 116–131.
  • Chen, C-H., Parekh, R., Yang, J., Balakrishnan, K. and Honavar, V. (1995). Analysis of Decision Boundaries Generated by Constructive Neural Network Learning Algorithms. In: Proceedings of the World Congress on Neural Networks (WCNN'95). Washington, D.C. July 17–21, 1995. pp. 628–635.
  • Honavar, V.; Uhr, L. (1993). "Generative Learning structures for Generalized Connectionist Networks". Information Sciences. 70 (1–2): 75–108. doi:10.1016/0020-0255(93)90049-r.
  • Honavar, V. (1992). Some Biases for Efficient Learning of Spatial, Temporal, and Spatio-Temporal Patterns. In: Proceedings of International Joint Conference on Neural Networks. Beijing, China.

Knowledge representation and semantic web

  • Tao, J.; Slutzki, G.; Honavar, V. (2015). "A Conceptual Framework for Secrecy-preserving Reasoning in Knowledge Bases". ACM Transactions on Computational Logic. 16: 1–32. doi:10.1145/2637477.
  • Santhanam, G.R., Basu, S. and Honavar, V. (2013) Verifying preferential equivalence and subsumption via model checking. In International Conference on Algorithmic DecisionTheory (pp. 324–335). Springer Berlin Heidelberg.
  • Tao, J., Slutzki, G., and Honavar, V. (2012). PSpace Tableau Algorithms for Acyclic Modalized ALC. Journal of Automated Reasoning. Vol. 49. pp. 551–582
  • Santhanam, G.; Basu, S.; Honavar, V. (2011). "Representing and Reasoning with Qualitative Preferences for Compositional Systems". Journal of Artificial Intelligence Research. 42: 211–274.
  • Santhanam, G., Suvorov, Y., Basu, S., and Honavar, V. (2011). Verifying Intervention Policies for Countering Infection Propagation over Networks: A Model Checking Approach. In: Proceedings of the Twenty-Fifth Conference on Artificial Intelligence (AAAI-2011). pp. 1408–1414.
  • Sanghvi, B., Koul, N., and Honavar, V. (2010). Identifying and Eliminating Inconsistencies in Mappings across Hierarchical Ontologies. In: Springer-Verlag Lecture Notes in Computer Science Vol. 6427, pp. 999–1008. Berlin: Springer.
  • Santhanam, G., Basu, S., and Honavar, V. (2010). Efficient Dominance Testing for Unconditional Preferences. In: Proceedings of the Twelfth International Conference on the Principles of Knowledge Representation and Reasoning (KR 2010). pp. 590–592. AAAI Press.
  • Santhanam, G., Basu, S., and Honavar, V. (2010). Dominance Testing Via Model Checking. In: Proceedings of the 24th AAAI Conference on Artificial Intelligence (AAAI-10). pp. 357–362. AAAI Press.
  • Bao, J., Voutsadakis G., Slutzki, G. Honavar:, V. (2009). Package-Based Description Logics. In: Modular Ontologies: Concepts, Theories and Techniques for Knowledge Modularization. Lecture Notes in Computer Science Vol. 5445, pp. 349–371
  • Bao, J., Voutsadakis, G., Slutzki, G., and Honavar, V. (2008). On the Decidability of Role Mappings between Modular Ontologies. In: Proceedings of the 23nd Conference on Artificial Intelligence (AAAI-2008), Menlo Park, CA: AAAI Press, pp. 400–405
  • Bao, J., Slutzki, G., and Honavar, V. (2007). A Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies.. In: Proceedings of the 22nd Conference on Artificial Intelligence (AAAI-2007). Vancouver, Canada. Semantic Importing Approach to Knowledge Reuse from Multiple Ontologies. pp. 1304–1309. AAAI Press.
  • Bao, J., Slutzki, G., and Honavar, V. (2007). Privacy-Preserving Reasoning on the Semantic Web. IEEE/WIC/ACM Conference on Web Intelligence. IEEE. pp. 791–797
  • Bao, J., Caragea, D., and Honavar, V. (2006). On the Semantics of Linking and Importing in Modular Ontologies.In: Proceedings of the International Semantic Web Conference (ISWC 2006), Lecture Notes in Computer Science, Berlin: Springer. Lecture Notes in Computer Science Vol. 4273, pp. 72–86.
  • Bao, J., Caragea, D., and Honavar, V. (2006). A Tableau Based Federated Reasoning Algorithm for Modular Ontologies. In: Proceedings of the ACM/IEEE/WIC Conference on Web Intelligence. IEEE Press. pp. 404–410.
  • Bao, J., Caragea, D., and Honavar, V. A Distributed Tableau Algorithm for Package-based Description Logics. Proceedings of the Second International Workshop on Context Representation and Reasoning (CRR 2006), Riva del Garda, Italy, CEUR. 2006.
  • Bao, J., Caragea, D., and Honavar, V. Modular Ontologies – A Formal Investigation of Semantics and Expressivity. In Proceedings of the First Asian Semantic Web Conference, Beijing, China, Springer-Verlag. Vol. Vol. 4185, pp. 616–631, 2006. Best Paper Award
  • Silvescu, A. and Honavar, V. Independence, Decomposability and functions which take values into an Abelian Group. Proceedings of the Ninth International Symposium on Artificial Intelligence and Mathematics, http://anytime.cs.umass.edu/aimath06/proceedings.html, 2006.

Data and Computational Infrastructure for Collaborative Science

  • Parashar, M., Honavar, V., Simonet, A., Rodero, I., Ghahramani, F., Agnew, G., and Jantz, R. (2019). The Virtual Data Collaboratory: A Regional Cyberinfrastructure for Collaborative Data-Driven Research. Computing in Science and Engineering. In press.
  • Santhanam, G.R., Basu, S. and Honavar, V. (2013). Preference based service adaptation using service substitution. In Proceedings of the 2013 IEEE/WIC/ACM International Joint Conferences on Web Intelligence (WI) and Intelligent Agent Technologies (IAT)-Volume 01 (pp. 487–493). IEEE Computer Society.
  • Sun, H., Basu, S., Honavar, V., and Lutz, R. (2010). Automata-Based Verification of Security Requirements of Composite Web Services. In: Proceedings of the IEEE International Symposium on Software Reliability Engineering (ISSRE-2010). pp. 348–357, IEEE Press.
  • Santhanam, G.R., Basu, S., and Honavar, V. (2009). Web Service Substitution Based on Preferences Over Non-functional Attributes. In: Proceedings of the IEEE International Conference on Services Computing (SCC 2009).
  • Pathak, J., Basu, S., and Honavar, V. (2008). Composing Web Services through Automatic Reformulation of Service Specifications. Proceedings of the IEEE International Conference on Services Computing, IEEE, pp. 361–369.
  • Pathak, J.; Basu, S.; Lutz, R.; Honavar, V. (2008). "MoSCoE: An Approach for Composing Web Services through Iterative Reformulation of Functional Specifications". International Journal on Artificial Intelligence Tools. 17 (1): 109–138. CiteSeerX 10.1.1.301.6753. doi:10.1142/s0218213008003807.
  • Santhanam, G., Basu, S., and Honavar, V. (2008). TCP-Compose* - A TCP-net based Algorithm for Efficient Composition of Web Services Based on Qualitative Preferences. Proceedings of the 6th International Conference on Service Oriented Computing, Springer-Verlag Lecture Notes in Computer Science, Vol. 5254. pp. 453–467
  • Pathak, J., Basu, S., and Honavar, V. (2007). On Context-Specific Substitutability of Web Services. In: Proceedings of the IEEE International Conference on Web Services. pp. 192–199. IEEE Press.
  • Pathak, J., Li, Y., Honavar, V., McCalley, J. (2007). A Service-Oriented Architecture for Electric Power Transmission System Asset Management. Second International Workshop on Engineering Service-Oriented Applications: Design and Composition, Lecture Notes in Computer Science, Berlin: Springer-Verlag, 2007.
  • Pathak, J., Basu, S., Lutz, R., and Honavar, V. (2006). Selecting and Composing Web Services through Iterative Reformulation of Functional Specifications. Proceedings of the IEEE International Conference on Tools With Artificial Intelligence (ICTAI 2006), Washington, DC, IEEE Press. Best Paper Award. pp. 445–454.
  • Pathak, J., Basu, S., and Honavar, V. (2006). Modeling Web Services by Iterative Reformulation of Functional and Non-Functional Requirements. Proceedings of the International Conference on Service Oriented Computing. Lecture Notes in Computer Science, Berlin: Springer, Vol. 4294, pp. 314–326.
  • Pathak, J., Yuan, L., Honavar, V., and McCalley, J. (2006). A Service-Oriented Architecture for Electric Power Transmission System Asset Management, In: Proceedings of the Second International Workshop on Engineering Service-Oriented Applications: Design and Composition (WESOA-2006), Lecture Notes in Computer Science, Berlin: Springer-Verlag.
  • Pathak, J., Basu, S., Lutz, R., and Honavar, V. (2006). Parallel Web Service Composition in MoSCoE: A Choreography Based Approach. Proceedings of the IEEE European Conference on Web Services (ECOWS 2006), Zurich, Switzerland, IEEE. In press.
  • Pathak, J., Basu, S., and Honavar, V. Modeling Web Service Composition Using Symbolic Transition Systems. AAAI '06 Workshop on AI-Driven Technologies for Services-Oriented Computing (AI-SOC), Boston, MA, AAAI Press, 2006.
  • Pathak, J., Koul, N., Caragea, D., and Honavar, V. A Framework for Semantic Web Services Discovery. Proceedings of the 7th ACM International Workshop on Web Information and Data Management (WIDM 2005)., ACM Press. pp. 45–50, 2005.
  • Pathak, J., Caragea, D., and Honavar, V. Ontology-Extended Component-Based Workflows: A Framework for Constructing Complex Workflows from Semantically Heterogeneous Software Components. VLDB-04 Workshop on Semantic Web and Databases. Springer-Verlag Lecture Notes in Computer Science., Toronto, Springer-Verlag. Vol. 3372. pp. 41–56, 2004.

Bioinformatics, computational biology, and health informatics

Computer and information security

  • Oster, Z., Santhanam, G., Basu, S. and Honavar, V. (2013). Model Checking of Qualitative Sensitivity Preferences to Minimize Credential Disclosure. International Symposium on Formal Aspects of Component Software. Springer-Verlag Lecture Notes in Computer Science Vol. 7684, pp. 205–223, 2013.
  • Helmer, G.; Wong, J.; Slagell, M.; Honavar, V.; Miller, L.; Wang, Y.; Wang, X.; Stakhanova, N. (2007). "Software Fault Tree and Colored Petri Net Based Specification, Design, and Implementation of Agent-Based Intrusion Detection Systems". International Journal of Information and Computer Security. 1 (1/2): 109–142. doi:10.1504/ijics.2007.012246.
  • Wang, Y.; Behera, S.; Wong, J.; Helmer, G.; Honavar, V.; Miller, L.; Lutz, R. (2006). "Towards Automatic Generation of Mobile Agents for Distributed Intrusion Detection Systems". Journal of Systems and Software. 79: 1–14. doi:10.1016/j.jss.2004.08.017.
  • Kang, D-K., Fuller, D., and Honavar, V. Learning Misuse and Anomaly Detectors from System Call Frequency Vector Representation. IEEE International Conference on Intelligence and Security Informatics. Springer-Verlag Lecture Notes in Computer Science, Springer-Verlag. Vol. 3495. pp. 511–516, 2005.
  • Helmer, G.; Wong, J.; Honavar, V.; Miller, L. (2003). "Lightweight Agents for Intrusion Detection". Journal of Systems and Software. 67 (2): 109–122. CiteSeerX 10.1.1.308.7424. doi:10.1016/s0164-1212(02)00092-4.
  • Helmer, G.; Wong, J.; Slagell, M.; Honavar, V.; Miller, L.; Lutz, R. (2002). "A Software Fault Tree Approach to Requirements Specification of an Intrusion Detection System". Requirements Engineering. 7 (4): 207–220. CiteSeerX 10.1.1.101.853. doi:10.1007/s007660200016.

Honors

References

  1. ^ "Vasant Honavar's Official Web Page at Pennsylvania State University"
  2. ^ "Artificial Intelligence Research Laboratory". Retrieved 29 May 2015.
  3. ^ "Penn State Institute for Cyberscience". Retrieved 29 May 2015.
  4. ^ "Interdisciplinary Center Seeks to Leverage the Power of Big Data Analytics
  5. ^ "Exploring Big Data's Potential for the Northeast". Retrieved 3 Nov 2015.
  6. ^ "Computing Community Consortium Members". Retrieved 29 May 2015.
  7. ^ "CCC Announces new members". Retrieved 31 May 2015.
  8. ^ "Susan Hockfield Chosen to Serve as AAAS President-Elect". Retrieved 21 December 2015.
  9. ^ "ORCID Record for Vasant Honavar".
  10. ^ "Vasant Honavar's Google Scholar Page". Retrieved 29 May 2015.
  11. ^ "Library of Congress Catalog Search". Retrieved 29 May 2015.
  12. ^ Vasant Honavar at the Mathematics Genealogy Project
  13. ^ "NSF 12-499 Core Techniques and Technologies for Big Data". Retrieved 29 May 2015.
  14. ^ "Northeast Big Data Innovation Hub". Retrieved 20 October 2019.
  15. ^ "Eastern Regional Network". Retrieved 20 October 2019.{{cite web}}: CS1 maint: url-status (link)
  16. ^ "Workshop on Brain, Computation, and Learning". Retrieved 20 October 2019.
  17. ^ "Global Innovation Forum: Transforming Intelligence". Retrieved 20 October 2019.
  18. ^ "US-Serbia and West Balkan Data Science Workshop". Retrieved 20 October 2019.
  19. ^ "International Summer School on Deep Learning". Retrieved 20 October 2019.
  20. ^ "Honavar honored for his leadership of the NSF Big Data Program". Retrieved 29 May 2015.
  21. ^ "Inside Iowa State" (PDF). Retrieved 31 May 2015.
  22. ^ "Teaching, service and research awards to LAS faculty, staff". Retrieved 31 May 2015.
  23. ^ "2007 Fall University Convocation & Awards Ceremony". Retrieved 31 May 2015.
  24. ^ "125 People of Impact". Retrieved 25 August 2016.
  25. ^ "Sudha Murty' chair launched at IISc". Retrieved October 14, 2016.
  26. ^ "2018 ACM Distinguished Members Recognized for Contributions that Have Revolutionized How We Live, Work and Play". Retrieved November 8, 2018.
  27. ^ "AAAS Honors Accomplished Scientists as 2018 Elected Fellows". Retrieved November 29, 2018.