Lorenzo Andrea Rosasco - Università degli studi dell'Insubria

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Lorenzo Andrea Rosasco
28 dicembre 2018

PERSONAL INFORMATION

Citizenship: Italian and United States
Contact addresses: Universitá degli Studi di Genova, via Dodecaneso 35, Genova, Italy

RESEARCH INTERESTS

My main interest is machine learning. Learning is widely acknowledged to be key for understanding
human and machine intelligence. A computational scheme able to acquire knowledge and decision ma-
king skills cannot simply memorize data. Rather, it must be able to learn, that is to efficiently process
and summarize the flood of available data coming from sensory systems. At its core, learning is an
inference problem from complex, high dimensional, noisy data. I am interested into the principles that
allow to learn from small as well as massive samples of data and into the computational schemes that
implement these principles. I pursue these questions using probabilistic and analytical tools, within a
multidisciplinary approach drawing concepts and techniques primarily from computer science but al-
so from statistics, engineering and applied mathematics. Applications in computer vision and robotics
motivate some of the computational learning schemes I study and provide a natural ground to test their
properties.

Keywords: Machine Learning, Optimization, Inverse problems and Regularization, High Dimensio-
nal Statistics and Probability, Reproducing Kernel Hilbert Spaces.

EDUCATION & EMPLOYMENT

fall 2017           Visiting Professor at the Massachusetts Institute of Technology.
2016 –              Associate professor, Dipartimento di Informatica, Bioingegneria, Robotica, Inge-
                    gneria, Ingegneria dei Sistemi (DIBRIS), University of Genova.
2012 2016           Assistant professor (with tenure), Dipartimento di Informatica, Bioingegneria, Ro-
                    botica, Ingegneria, Ingegneria dei Sistemi (DIBRIS), University of Genova.
2013 –              External Collaborator at the Istituto Italiano di Tecnologia, coordinating the Labo-
                    ratory for Computational and Statistical Learning, a joint lab between the Istituto
                    Italiano di Tecnologia and the Massachusetts Institute of Technology.
fall 2016           Visiting Professor at the Massachusetts Institute of Technology.
2016                Research Affiliate at the Massachusetts Institute of Technology.
fall 2015           Visiting Professor at the Massachusetts Institute of Technology.
2015                Research Affiliate at the Massachusetts Institute of Technology.
fall 2014           Visiting Professor at the Massachusetts Institute of Technology.
2014                Research Affiliate at the Massachusetts Institute of Technology.
fall 2013           Visiting Professor at the Massachusetts Institute of Technology.
2011 2012           Research scientist at the Massachusetts Institute of Technology.
2010 2012           Team leader at the Istituto Italiano di Tecnologia, coordinating the Laboratory for
                    Computational and Statistical Learning, a joint lab between the Istituto Italiano di
                    Tecnologia and the Massachusetts Institute of Technology.
2010 – 2011         Visiting scientist at the Massachusetts Institute of Technology.
2007 – 2009         Post doctoral Fellow at the Center for Biological and Computational Learning, Mas-
                    sachusetts Institute of Technology.
2003 – 2006         PhD student in the Computer Science Department (DISI) at The University of Ge-
                    nova. Regularization Approaches to Learning Theory, Supervisors: Prof. Alessandro
                    Verri, Dr. Ernesto De Vito.
2002                Consultant within the start-up SLAM - Statistical Learning Applied to Market. De-
                    sign and implementation of algorithms for the analysis and modelization of finan-
                    cial data using machine learning.
1996 – 2001         Laurea (M.Sc. equivalent) degree in Physics, University of Genova (I), December 12,
                    2001. Dissertation title: ”Optimal Choice of Regularization Parameter in Statistical Lear-
                    ning Theory”. Supervisors: Prof. Alessandro Verri, Computer Science Department
                    (DISI), University of Genova; Michele Piana, Department of Mathematics (DIMA),
                    University of Genova.

SHORT VISITING POSITIONS

2011                visiting scientist at the École Polytechnique in Paris, France (working with Stephane
                    Mallat and Christope Giraud).
2009-2011           regularly visiting Steve Smale at City University of Hong Kong.
2008                regularly visiting Steve Smale at Toyota Technological Institute at Chicago.
2005 oct – nov      visiting student at the Radon Institute for Computational and Applied Mathematics
                    (working with Sergei Pereverzev).
2005 mar – jun      visiting student at Toyota Technological Institute at Chicago, within the Learning
                    Theory Program (working with Steve Smale).
2005 jan – jun      visiting student working with Tomaso Poggio at the Center for Biological and Com-
                    putational Learning, Massachusetts Institute of Technology.

GRANTS and AWARDS
   • ERC consolidator grant e2 M (2019-2023).
   • AFOSR grant Principal Investigator, e170 K.
   • AXPO joint lab, e150 K (2019-2021).
   • SIMULA joint lab, e350 K (2018-2022).
   • Research and Innovation Staff Exchange (RISE), Unit coordinator, e40,5K.
   • AFOSR grant Principal Investigator, e170 K.
   • FIRB- Futuro in Ricerca project. Co-Principal Investigator, e307,187 K.
   • SEED project Dipartimento di Informatica, Bioingegneria, Robotica, Ingegneria, Ingegneria dei
     Sistemi (DIBRIS), e15 K.
   • Principal Investigator at the Center for Brain Minds and Machines, NSF funded $25 M.
   • Recepient of the Consorzio Italia-MIT 2005 Fellowship meant to bring top doctoral students from
     Italian member institutions to MIT, e5.
   • Recepient of the 2005 Silvio Tronchetti Provera Fellowship in the Information and Communica-
     tion Technology (ICT) area, e5 K.

PUBLICATIONS

Submitted

  1. Matet, S., Rosasco, L., Villa, S., and Vu, B. L. Don’t relax: early stopping for convex regularization,
     arXiv preprint arXiv:1707.05422.
  2. Salzo, S., Suykens, J. A., and Rosasco, L. Solving `p-norm regularization with tensor kernels, arXiv
     preprint arXiv:1707.05609.
  3. Lin, J., and Rosasco, L. Generalization Properties of Doubly Online Learning Algorithms, arXiv preprint
     arXiv:1707.00577.
4. Garrigos, G., Rosasco, L., and Villa, S. Convergence of the Forward-Backward Algorithm: Beyond the
      Worst Case with the Help of Geometry, arXiv preprint arXiv:1703.09477.
   5. Garrigos, G., Rosasco, L. and Villa S. Iterative regularization via dual diagonal descent, arXiv preprint
      arXiv:1610.02170.
   6. T Poggio, H Mhaskar, L Rosasco, B Miranda, Q Liao Why and When Can Deep–but Not Shallow–
      Networks Avoid the Curse of Dimensionality: a Review arXiv preprint arXiv:1611.00740
   7. Lin, J., Rosasco, L., Villa, S. and Zhou, D.X Modified Fejer sequences and applications arXiv:1510.04641.
   8. Pasquale, G. Ciliberto, C. Odone, F. Rosasco, L. and Natale, L. Real-world Object Recognition with
      Off-the-shelf Deep Conv Nets: How Many Objects can iCub Learn?, arXiv:1504.03154, submitted.
   9. Rosasco, L., Villa, S., and Vu, B.C. Stochastic inertial primal-dual algorithms, arXiv: arXiv:1507.00852.
 10. Rosasco, L., Villa, S., and Vu, B.C. A Stochastic forward-backward splitting method for solving monotone
     inclusions in Hilbert spaces, arxiv:1403.7999v1
 11. Rosasco, L., Villa, S., and Vu, B.C. Convergence of Stochastic Proximal Gradient Algorithm. arXiv:1403.5074

Journal Papers
   1. Rosasco, L., Villa, S., and ũ, B. C. Stochastic Forward–Backward Splitting for Monotone Inclusions,
      Journal of Optimization Theory and Applications, 169(2), 388-406.
   2. Rosasco, L., Villa, S. and Vũ, B., C. A first-order stochastic primal-dual algorithm with correction
      step, Numerical Functional Analysis and Optimization 38 (5), 602-626
   3. Anselmi, F., Rosasco, L. and Poggio, T. On Invariance and Selectivity in Representation Learning
      Information and Inference 5 (2), 134-158, arXiv:1503.05938.
   4. Rosasco, L., Villa, S., and Vu, B.C. A stochastic inertial forward-backward splitting algorithm for multi-
      variate monotone inclusions, Optimization 65 (6), 1293-1314, also arXiv:1507.00848.
   5. Lin, J., Rosasco, L., and Zhou, D.X. Iterative Regularization for Learning with Convex Loss Functions,
      Journal of Machine Learning Research, arXiv:1403.5074.
   6. Little, A. V., Maggioni, M., and Rosasco, L. Multiscale geometric methods for data sets I: Multiscale
      SVD, noise and curvature. Applied and Computational Harmonic Analysis, 43(3), 504-567.
   7. Breschi, G., Ciliberto, C., Nieus, T., Rosasco, L., Taverna, S., Chiappalone, M., and Pasquale, V.
      Characterizing the input-output function of the olfactory-limbic pathway in the guinea pig, to appear in
      Computational Intelligence and Neuroscience.
   8. Anselmi, F., Leibo, J., Rosasco, L. Mutch, J., Tacchetti, A. and Poggio, T. Unsupervised Learning of
      Invariant Representations , to appear in Theoretical Computer Science, also arXiv:1311.4158
   9. Villa, S., L. Rosasco, L., Mosci, S. and Verri, A. Proximal methods for the latent group lasso penalty,
      Journal Computational Optimization and Applications archive Volume 58 Issue 2, 38-407 (Arxiv
      1209.0368).
 10. De Vito, E., Rosasco, L., and Toigo, A. Learning Sets with Separating Kernels, Applied and Compu-
     tational Harmonic Analysis, 37 185-217, 2014 (Arxiv 1204.3573 ).
 11. Tacchetti, A. , Mallapragada, P., Santoro, M. and Rosasco, L., GURLS: a Least Squares Library for
     Supervised Learning, Journal of Machine Learning Research 14(1): 3201-3205 (2013).
 12. Mosci, S., Rosasco, L., Santoro, M., Verri, A. and Villa, S., Nonparametric Sparsity and Regularization.,
     Journal of Machine Learning Research 14(1): 1665-1714 (2013).
 13. Alvarez, M., Lawrence, N. and Rosasco, L., Kernels for Vector-Valued Functions: a Review., Founda-
     tions and Trends in Machine Learning 4(3):195-266, 2012, (also MIT-CSAIL-TR-2011-033/CBCL-
     301).
 14. Baldassarre, L., Barla, A., Rosasco, L. and Verri, A., Multi-Output Learning via Spectral Filtering,
     Machine Learning 87(3): 259-301 (2012).
15. Mosci, S., Rosasco, L., Verri, A. and Villa, S., Applications of Variational Convergence to Regularized
     Learning Algorithms, Optimization 61(3):287-305, 2012..
 16. De Vito, E., Pereverzev, S. and Rosasco, L., Adaptive Learning via the Balancing Principle, Founda-
     tions of Computational Mathematics, 8 355-479 (2010).
 17. P. Fardin, A. Barla, S. Mosci, L. Rosasco, A. Verri, R. Versteeg, H. Caron, J. Molenaar, I. Ora, A. Eva,
     M. Puppo and L. Varesio, A biology-driven approach identifies the hypoxia gene signature as a predictor
     of the outcome of neuroblastoma patients, Molecular Cancer 2010, 9:185.
 18. Fardin, P., Barla A., Mosci, S., Rosasco, L., Verri, A. and Varesio, L., Identification of multiple hypoxia
     signatures in neuroblastoma cell lines by l1-l2 regularization and data reduction, Journal of Biomedicine
     and Biotechnology, Volume 2010 (2010)
 19. Fardin, P., Barla A., Mosci, S., Rosasco, L., Verri, A. and Varesio, L., The l1-l2 regularization fra-
     mework unmasks the hypoxia signature hidden in the transcriptome of a set of heterogeneous neuroblastoma
     cell lines, BMC Genomics 2009, 10:474.
 20. Del Bono, V., Mularoni, A., Furfaro, E., Delfino, E., Rosasco, L., Miletich, F., and Viscoli, C., Clinical
     Evaluation of a (1,3)-beta-D-Glucan Assay for Presumptive Diagnosis of Pneumocystis jiroveci Pneumonia
     in Immunocompromised Patients, Clin. Vaccine Immunol. 2009 16: 1524-1526.
 21. Rosasco, L., Belkin, M. and De Vito, E., On Learning with Integral Operators, Journal of Machine
     Learning Research, 11(Feb):905?934, 2010.
 22. Smale, S., Rosasco, L., Bouvrie, J., Caponnetto, A. and Poggio, T., The Mathematics of the Neural
     Response, Foundations of Computational Mathematics, June 2009, DOI 10.1007/s10208-009-9049-
     1.
 23. De Mol, C., De Vito, E. and Rosasco, L., Elastic Net Regularization in Learning Theory, Journal of
     Complexity, Volume 25 , Issue 2 (April 2009), Pages 201-230, 2009.
 24. Lo Gerfo, L., Rosasco, L., Odone, F., De Vito E. and Verri, A., Spectral Algorithms for Supervised
     Learning, Neural Comp..2008; 20: 1873-1897.
 25. Bauer, F., Pereverzev, S. and Rosasco, L., On Regularization Algorithms in Learning Theory, J. Com-
     plexity 23(1): 52-72 (2007).
 26. Yao, Y., Caponnetto, A. and Rosasco, L., Early Stopping for Gradient Descent Boosting, Constr.
     Approx. 26 (2007), no. 2, 289–315.
 27. De Vito, E., Rosasco, L. and Caponnetto, A., Discretization Error Analysis for Tikhonov Regularization,
     Analysis and Applications Vol. 4, No. 1 (January 2006).
 28. De Vito, E., Rosasco, L., Caponnetto, A., De giovannini, U. and Odone, F., Learning as an Inverse
     Problem, Journal of Machine Learning Research 6(May):883–904, 2005.
 29. De Vito, E., Caponnetto, A. and Rosasco, L., Model Selection for Regularized Least-Squares Algorithm
     in Learning Theory, Foundations of Computational Mathematics Volume 5, Number 1 pp. 59 - 85,
     February 2005.
 30. Rosasco, L., De Vito, E., Caponnetto, A., Piana, M. and Verri, A., Are Loss Function All the Same?,
     Neural Computation, Vol 16, Issue 5, 2004.
 31. De Vito, E., Rosasco, L., Caponnetto, A., Piana, M. and Verri, A., Some Properties of Regularized
     Kernel Methods, Journal of Machine Learning Research 5(Oct):1363–1390, 2004.

Chapters in Books
  1. Mutch, J., Anselmi, F., Tacchetti, A., Rosasco, L., Leibo, J. Z., and Poggio, T. Invariant Recognition
     Predicts Tuning of Neurons in Sensory Cortex, Computational and Cognitive Neuroscience of Vision
     (pp. 85-104). Springer Singapore.
2. Villa, S., Rosasco, L. and Poggio, T. On Learnability, Complexity and Stability, ”Empirical Inference,
     Festschrift in Honor of Vladimir N. Vapnik”. Editors: Schölkopf, Bernhard; Luo, Zhiyuan; Vovk,
     Vladimir. Springer-Verlag Berlin and Heidelberg GmbH, Chapter 7, page 59-70, 2013. Also Arxiv
     1303.5976
  3. G. Chen, A.V. Little, M. Maggioni, L. Rosasco, Some recent advances in multiscale geometric analy-
     sis of point clouds, in Wavelets and Multiscale Analysis: Theory and Applications (March, 2010),
     Springer.

Conference and Workshop Papers
  1. Rudi, A., Camoriano, R., and Rosasco, L. Generalization properties of learning with random features,
     To appear in NIPS 2017.
  2. Rudi, A., Carratino, L., and Rosasco, L. FALKON: An Optimal Large Scale Kernel Method, To appear
     in NIPS 2017.
  3. Ciliberto, C., Rudi, A., Rosasco, L., and Pontil, M. Consistent Multitask Learning with Nonlinear
     Output Relations, To appear in NIPS 2017.
  4. Camoriano, R., Pasquale, G., Ciliberto, C., Natale, L., Rosasco, L., and Metta, G. Incremental ro-
     bot learning of new objects with fixed update time, In Robotics and Automation (ICRA), 2017 IEEE
     International Conference on (pp. 3207-3214). IEEE.
  5. Anselmi, F., Evangelopoulos, G., Rosasco, L., and Poggio, T. Symmetry Regularization, Center for
     Brains, Minds and Machines (CBMM).
  6. Higy, B., Ciliberto, C., Rosasco, L., and Natale, L. Combining sensory modalities and exploratory
     procedures to improve haptic object recognition in robotics, In Humanoid Robots (Humanoids), 2016
     IEEE-RAS 16th International Conference on (pp. 117-124). IEEE.
  7. Jamali, N., Ciliberto, C., Rosasco, L., and Natale, L. Active perception: Building objects’ models
     using tactile exploration, In Humanoid Robots (Humanoids), 2016 IEEE-RAS 16th International
     Conference on (pp. 179-185). IEEE.
  8. Pasquale, G., Ciliberto, C., Rosasco, L., and Natale, L. Object identification from few examples by
     improving the invariance of a Deep Convolutional Neural Network, Intelligent Robots and Systems
     (IROS), 2016 IEEE/RSJ International Conference on (pp. 4904-4911). IEEE.
  9. Lin, J., Camoriano, R., and Rosasco, L. Generalization properties and implicit regularization for multiple
     passes SGM, International Conference on Machine Learning (pp. 2340-2348).
 10. Lin, J., and Rosasco, L. Optimal Learning for Multi-pass Stochastic Gradient Methods, Advances in
     Neural Information Processing Systems (pp. 4556-4564).
 11. Ciliberto, C., Rudi, A., and Rosasco, L. A Consistent Regularization Approach for Structured Predic-
     tion, Advances in Neural Information Processing Systems (pp. 4412-4420).
 12. Camoriano, R., Traversaro, S., Rosasco, L., Metta, G., and Nori, F. Incremental Semiparametric Inverse
     Dynamics Learning, IROS 2016, arXiv:1601.04549.
 13. Angles, T. Camoriano, R., Rudi, A. and Rosasco, L. NYTRO: When Subsampling Meets Early
     Stopping AISTATS 2016.
 14. Poggio, T., Rosasco, L., Shashua, A., Cohen, N., and Anselmi, F. Notes on hierarchical splines, dclns
     and i-theory, Center for Brains, Minds and Machines (CBMM).
 15. Nickel, M., Rosasco, L. and Poggio, T. Holographic Embeddings Knowledge Graphs, AAAI-16, also
     arXiv:1510.04935.
 16. Poggio, T., Anselmi, F., and Rosasco, L. I-theory on depth vs width: hierarchical function composition,
     Center for Brains, Minds and Machines (CBMM).
 17. Rudi, A., Camoriano, R. and Rosasco, L. Less is More: Nyström Computational Regularization, accep-
     ted to NIPS 2015 (Oral presentation, < 1% acceptance), arXiv:1507.04717.
18. Rosasco, L. and Villa, S. Learning with incremental iterative regularization, accepted to NIPS 2015,
    arXiv:1405.0042.
19. Pasquale, G., Ciliberto, C., Odone, F., Rosasco, L., and Natale, L. Teaching iCub to recognize objects
    using deep Convolutional Neural Networks, In Machine Learning for Interactive Systems (pp. 21-25).
20. Badino, L., Mereta, A. and Rosasco, L. Discovering discrete subword units with Binarized Autoencoders
    and Hidden-Markov-Model Encoders, accepted to Interspeech 2015.
21. Zhang, C., Voinea, S., Evangelopoulos, G., Rosasco, L. and Poggio, T. Discriminative Template Lear-
    ning in Group-Convolutional Networks for Invariant Speech Representations, accepted to Interspeech
    2015.
22. Ciliberto, C., Villa, S. and Rosasco, L., Learning Multiple Visual Tasks while Discovering their Structu-
    re, arXiv:1504.03106, accepted to CVPR 2015.
23. Ciliberto, C., Mroueh, Y., Poggio, T. and Rosasco, L., Convex Learning of Multiple Tasks and their
    Structure, arXiv:1504.03101 accepted ICML 2015.
24. Mroueh, Y. and Rosasco, L. On efficiency and low sample complexity in phase retrieval, IEEE Interna-
    tional Symposium on Information Theory (ISIT) 2014: 931-935, 2014.
25. Zhang, C., Evangelopoulos, G., Voinea, S., Rosasco, L. and Poggio, T. A Deep Representation for
    Invariance and Music Classification, IEEE International Conference on Acoustics, Speech and Signal
    Processing (ICASSP), 2014.
26. Zhang, C., Voinea, S., Evangelopoulos, G., V Rosasco, L. and Poggio, T. Phone Classification by
    a Hierarchy of Invariant Representation Layers INTERSPEECH 2014 - 15th Annual Conf. of the
    International Speech Communication Association.
27. Voinea, S., Zhang, C., Evangelopoulos, G., V Rosasco, L. and Poggio, T. Word-Level Invariant Repre-
    sentations from Acoustic Waveforms INTERSPEECH 2014 - 15th Annual Conf. of the International
    Speech Communication Association.
28. Ciliberto, C., Fiorio, L., Maggiali, M. Natale, L., Rosasco, L., Metta, G., Sandini, G. and Nori, F. Ex-
    ploiting Global Force Torque Measurements for Local Compliance Estimation in Tactile Arrays IEEE/RSJ
    International Conference on Intelligent Robots and Systems (IROS), 2014
29. Fanello, S., Ciliberto, C., Santoro, M., Natale, L., Metta, G., Rosasco, L. and Odone, F. iCub World:
    Friendly Robots Help Building Good Vision Data-Sets IEEE Conference on Computer Vision and
    Pattern Recognition Workshops (CVPRW), 2013.
30. Rudi, A., Canas, G., and Rosasco, L. On the Sample Complexity of Subspace Learning In Advances in
    Neural Information Processing Systems (NIPS) 26. 2013.
31. Ciliberto, C., Fanello, S.. Santoro, M., Natale, L., Metta, G. and Rosasco, L. On the Impact of Learning
    Hierarchical Representations for Visual Recognition in Robotics IEEE/RSJ International Conference on
    Intelligent Robots and Systems (IROS), 2013.
32. Mroueh, Y., Rosasco, L. Q-ary Compressive Sensing. Proceedings SampTA, 2013, also Arxiv 1302.5168.
33. Mroueh, Y., Poggio, T., Rosasco, L. Slotine, J.J. Multi-class Learning with Simplex Coding. In Advan-
    ces in Neural Information Processing Systems, NIPS 2012..
34. Rosasco, L., Villa, S., Mosci, S., Santoro, M., and Verri, A., Is there sparsity beyond additive models?,
    Proceedings of IFAC System Identification 16, 2012.
35. Canas, G.D., Rosasco, L., Poggio, T. Learning Manifolds with K-Means and K-Flats. In Advances in
    Neural Information Processing Systems, NIPS 2012.
36. Canas, G.D., Rosasco, L. Learning Probability Measures with respect to Optimal Transport Metrics.. In
    Advances in Neural Information Processing Systems, NIPS 2012.
37. A.V. Little, M. Maggioni, L. Rosasco, Multiscale Geometric Methods for Estimating Intrinsic Dimen-
    sion, Proc. SampTA 2011 (2010).
38. De Vito, E., Rosasco, L. and Toigo, A. , Support Estimation with Regularization, Advances in Neural
    Information Processing Systems Proc. SampTA 2011 (2010).
39. De Vito, E., Rosasco, L. and Toigo, A. , Spectral Regularization for Support Estimation, Advances in
    Neural Information Processing Systems (NIPS) 23, 2010.
40. Mosci, S., Villa, S. and Rosasco, L., A primal-dual algorithm for group sparse regularization with
    overlapping groups. Advances in Neural Information Processing Systems (NIPS) 23, 2010.
41. Baldassarre, L., Barla, A., Rosasco, L. and Verri, A., Learning Vector Fields via Spectral Filtering. In
    proceeding of ECML 2010.
42. Mosci, S., Rosasco, L., Santoro, M., Verri, A. and Villa, S., Solving Structured Sparsity Regularization
    with Proximal Methods. In proceeding of ECML 2010.
43. Rosasco, L., Mosci, S., Santoro, M., Verri, A. and Villa, S., A Regularization Approach to non linear
    Variable Selection. AISTAT 2010.
44. Bouvrie, J., Rosasco, L. and Poggio, T. , ”On Invariance in Hierarchical Models, Advances in Neural
    Information Processing Systems (NIPS) 22, 2009.
45. N. Noceti, B. Caputo, C. Castellini, L. Baldassarre, A. Barla, L. Rosasco, F. Odone and G. Sandini
    Towards a theoretical framework for learning multi-modal patterns for embodied agents, ICIAP-09– 15th,
    International Conference on Image Analysis and Processing.
46. Rosasco, L., Belkin, M., and De Vito, E., A Note on Learning with Integral Operators, COLT 2009–
    22nd Annual Conference on Learning Theory.
47. Barla, A., Mosci, S., Rosasco, L. and Verri, A., Finding structured gene signatures, IEEE Proc. of Work-
    shop on Data Mining in Functional Genomics (IEEE International Conference on Bioinformatics
    and Biomedicine), Nov 2008.
48. Barla, A., Mosci, S., Rosasco, L. and Verri, A., A method for robust variable selection with significance
    assessments 16th European Symposium on Artificial Neural Networks.
49. Mosci, S., Rosasco, L. and Verri A., Dimensionality reduction and generalization , ACM International
    Conference Proceeding Series; Vol. 227 archive Proceedings of the 24th International Conference
    on Machine Learning (ICML).
50. Caponnetto, A., Rosasco, L., Odone, F. and Verri, A., Support Vectors Algorithms as Regularization
    Networks, 13th European Symposium on Artificial Neural Networks (ESANN).
51. Rosasco, L., Caponnetto, A., De Vito, E., De Giovannini, U. and Odone, F., Learning, Regularization
    and Ill-posed Inverse problems, Eighteenth Annual Conference on Neural Information Processing
    Systems (NIPS).
 Technical Reports

 1. Pasquale, G. Mar, T., Ciliberto, C. Rosasco, L. and Natale, L. Enabling Depth-driven Visual Attention
    on the iCub Humanoid Robot: Instructions for Use and New Perspectives arxiv:1509.06939
 2. Mroueh, Y., and Rosasco, L. Quantization and Greed are Good: One bit Phase Retrieval, Robustness and
    Greedy Refinements. arXiv:1312.1830
 3. Poggio, T., S. Voinea and L. Rosasco, Online Learning, Stability, and Stochastic Gradient Descent,
    Cornell University Library, arXiv:1105.4701v2 [cs.LG], May 25, 2011
 4. Leibo, J.Z., J. Mutch, L. Rosasco, S. Ullman, and T. Poggio, Learning Generic Invariances in Object
    Recognition: Translation and Scale. MIT-CSAIL-TR-2010-061/CBCL-294, Massachusetts Institute of
    Technology, Cambridge, MA, December 30, 2010.
 5. Mutch, J., J.Z. Leibo, S. Smale, L. Rosasco, and T. Poggio, Neurons That Confuse Mirror-Symmetric
    Object Views. MIT-CSAIL-TR-2010-062/CBCL-295, Massachusetts Institute of Technology, Cam-
    bridge, MA, December 31, 2010.
6. Wibisono, A., J. Bouvrie, L. Rosasco, and T. Poggio, Learning and Invariance in a Family of Hie-
      rarchical Kernels. MIT-CSAIL-TR-2010-035 / CBCL-290, Massachusetts Institute of Technology,
      Cambridge, MA, July 30, 2010
   7. Bouvrie, J., Rosasco, L. , Shakhnarovich, G. and Smale, S., hi the Shannon Entropy of the Neural
      Response. CBCL-281, MIT-CSAIL-TR-2009-049, Massachusetts Institute of Technology, Cambridge,
      MA, October 9, 2009.
   8. Rosasco, L., Mosci, S., Santoro, M., Verri, A. and Villa, S., Iterative Projection Methods for Structured
      Sparsity Regularization, MIT-CSAIL-TR-2009-50 / CBCL-282, Massachusetts Institute of Technolo-
      gy, Cambridge, MA, October 14, 2009. Submitted.
   9. Wibisono, A., Rosasco, L., and Poggio, T., Sufficient Conditions for Uniform Stability of Regularization
      Algorithms, CBCL paper #284/CSAIL Technical Report#MIT-CSAIL-TR-2009-060, Massachusetts
      Institute of Technology, Cambridge, MA, December 1, 2009.
  10. Rosasco, L., De Vito, E. and Verri, A., Spectral Regularization Algorithms for Learning Technical report
      DISI-TR-05-18.
  11. Caponnetto, A., Rosasco, L., De Vito, E. and Verri, A., Empirical Effective Dimension and Optimal
      Rates for Regularized Least Squares, CBCL Paper 252/AI Memo 2005-019, MIT, Cambridge, MA,
      May 2005.
  12. Caponnetto, A. and Rosasco, L., Non Standard Support Vector Machines and Regularization Networks,
      Technical Report DISI, DISI-TR-04-03.
  13. De Vito, E., Rosasco, L., Caponnetto, A., Piana, M. and Verri, A., Representer Theorem for Convex
      Loss Fuctions, Technical Report DISI, DISI-TR-03-13.
  14. De Vito, E., Rosasco, L., Caponnetto, A., Piana, M. and Verri, A., Minimization of Tikhonov Functio-
      nals: the Continuos Setting, Technical Report DISI, DISI-TR-03-14. Technical Report DISI-TR-02-09,
      Dipartimento di Informatica e Scienze dell’Informazione (DISI), University of Genova.

TEACHING

The latest evaluation of my teaching at MIT reported an overall rating of 6.4 out of 7 (1=Very Poor,
7=Excellent), and in particular: Stimulated interest=6.5, Displayed thorough knowledge of subject ma-
terial=6.8, Helped me learn=6.5.

   • Spring 2018: Probability, Information Theory and Inference, undergraduate course, University of
     Genova.
   • Spring 2017. Machine Learning Crash Course, PhD and Master Level course, Scuola Galileana,
     University of Padova.
   • Summer 2017. Machine Learning Crash Course, PhD and Master Level course, University of Geno-
     va.
   • Spring 2017: Regularization Methods for Machine Learning, PhD Course, SIMULA, Oslo.
   • Spring 2017: Probability, Information Theory and Inference, undergraduate course, University of
     Genova.
   • Fall 2016. Machine Learning , Master Level course, University of Genova.
   • Fall 2016. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso Pog-
     gio).
   • Summer 2016: Regularization Methods for Machine Learning, PhD Course, University of Genova.
   • Spring 2016. Intelligence Systems and Machine Learning Module 2: Machine Learning, Master Level
     course, University of Genova.
• Fall 2015. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso Pog-
  gio).
• Summer 2015. Machine Learning Summer School (MLSS) Kyoto.Tutorial on learning data represen-
  tation.
• Summer 2015. MBL-Woodshole summer school: Brains, mind and machine.
• Summer 2015. Machine Learning Crash Course, PhD and Master Level course, University of Genova
  (with Francesca Odone).
• Spring 2015. Intelligence Systems and Machine Learning Module 2: Machine Learning, Master Level
  course, University of Genova.
• Fall 2014. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso Pog-
  gio).
• Summer 2014: Regularization Methods for Machine Learning, PhD Course, University of Genova
  (with Francesca Odone).
• Summer 2014. Summer Course at MLB, Woods Hole: Brains, Minds and Machines, PhD Course, MIT.
• Spring 2014. Intelligence Systems and Machine Learning Module 2: Machine Learning, Master Level
  course, University of Genova.
• Spring 2014. Machine Learning Crash Course, PhD and Master Level course, University of Genova
  (with Francesca Odone).
• Fall 2013. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso Pog-
  gio).
• Summer 2013: Regularization Methods for Learning High Dimensional Data, PhD Course, University
  of Genova (with Francesca Odone).
• July 2012: National Graduate Student School SIDRA, Sistemi Stocastici: stima ed identificazione,
  Bertinoro, Italy.
• Bertinoro international Spring School (BISS), 12-16 March 2012, PhD course, (with Francesca
  Odone).
• Spring 2012. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso
  Poggio).
• Fall 2011. Guest Lectures for the course What’s Intelligence?, PhD course, MIT.
• Summer 2011: Regularization Methods for Learning High Dimensional Data, PhD course, University
  of Genova (with Francesca Odone).
• Spring 2011. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso
  Poggio).
• Summer 2010: Regularization Methods for Learning High Dimensional Data, PhD course, University
  of Genova (with Francesca Odone).
• Spring 2010. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso
  Poggio).
• Guest Lectures for the course 6.873/HST.951: Medical Decision Support, PhD course, MIT (lectured
  by R. C. Lacson, S. A. Vinterbo).
• Summer 2009: Regularization Methods for Learning High Dimensional Data, PhD course, University
  of Genova (with Francesca Odone).
• Spring 2009. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso
  Poggio).
• Winter 2009. IAP Course: From Understanding Cortex to Building Intelligent Machines, (with Tomaso
     Poggio and Thomas Serre).
   • Summer 2008. Regularization Approaches to Learning, PhD course, University of Genova (with
     Francesca Odone).
   • Spring 2008. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso
     Poggio).
   • Winter 2008. IAP Course: From Understanding Cortex to Building Intelligent Machines, (with Tomaso
     Poggio and Thomas Serre).
   • Fall 2007: Statistical Learning, Master Course, Computer Science Department (DISI), University of
     Genova (with Alessandro Verri).
   • Spring 2007. 9.520: Statistical Learning Theory and Applications, PhD course, MIT (with Tomaso
     Poggio).
   • Fall 2006: Statistical Learning, Master Course, Computer Science Department (DISI), University of
     Genova (with Alessandro Verri).
   • Spring 2006-2007. Guest Lectures for the course Mathematical foundations of Learning Department
     of Mathematics (DIMA), University of Genova (lectured by Ernesto De Vito).
   • 2005-2006, Guest Lectures for course Stochastic Process, Engineering Department of the University
     of Genova (lectured by Nino Zanghı́ ).
   • 2005-06: Statistical Learning, Master Course, DISI- University of Genova (with Alessandro Verri).
   • 2004-05: Statistical Learning, Guest Lectures Statistical Learning, Master Course, Computer Science
     Department (DISI), University of Genova (with Alessandro Verri).
   • 2003-04: Statistical Learning Master Course, Computer Science Department (DISI), University of
     Genova (with Alessandro Verri).

SERVICES AND OTHER PROFESSIONAL ACTIVITIES

Organization of scientific events

   • Organizer, Large scale learning session, International Symposium on Mathematical Programming
     (ISMP 2018), Bordeaux
   • Organizer (with A. Stuart) Inverse Problems in Machine Learning workshop, Caltech, USA.
   • Organizer (with Sebastien Bubeck and Sasha Tsybakov) of the Workshop “Learning Theory’ at the
     FoCM conference 2017, Barcelona.
   • Organizer (with Silvia Villa, Roberto Lucchetti) of the Learning, Games and Optimization minisym-
     posium, SIMAI, Milan 2016.
   • Organizer (with Tomaso Poggio, Max Nickel, Pierre Baldi) of the Deep Learning workshop, MIT,
     Boston 2016
   • Organizer (with Giorgio Metta, Boris Katz) of the Brain Minds & Machine workshop, Sestri Levante,
     Italy 2016.
   • Organizer (with Zoubin Ghaharamani, Thomas Hofmann, Neil Lawrence, Bernhard Schölkopf )
     of the DALI 2016 - Data Learning and Inference meeting, Sestri Levante, Italy 2016.
   • Organizer (with Nicolo Cesa-Bianchi) of the Learning Theory workshop within the DALI 2016 - Data
     Learning and Inference meeting, Sestri Levante, Italy 2016.
   • Organizer (with Matthias Hein, Gabor Lugosi) of the Dagstuhl Seminar Computational and Mathe-
     matical Foundation of Learning Theory, August 2015.
   • Organizer (with Tomaso Poggio) of the Workshop “Learning Theory’ at FoCM 2014, Montevideo.
• Organizer (with Silvia Villa) of the Mini-symposium “The Mathematics of Learning from Data”
     Società Italiana di Matematica Applicata (SIMAI) 9th Congress, 2015 - Taormina, Italy.
   • Organizer (with Patrick Combettes, Saverio Salzo, Silvia Villa) of the Workshop “Optimization
     and Dynamical Processing for Machine Learning and Inverse Problems” at Fondazione Mediater-
     raneo, Sestri Levante Genova Italy, September 2015.
   • Organizer (with Ryan Adams, Sham Kakade, Stephanie Telex) of the Workshop “New England
     Machine Learning Day” at MSR, Boston, USA.
   • Organizer (with Tomaso Poggio) of the Workshop “Learning Data Representation: Hierarchies
     and Invariance” at MIT.
   • Organizer of the 2012 - Genova Machine Learning and Robotics Seminar Series.
   • Organizer of the 2012 Cambridge Machine Learning Colloquium and Seminar Series at MIT.
   • Organizer of the 2010-2012 Brain and Machines Seminar Series at MIT, sponsored by MIT-IIT colla-
     borative agreement.
   • Organizer (with Matthias Hein, Gabor Lugosi and Steve Smale) of the Dagstuhl Seminar Computa-
     tional and Mathematical Foundation of Learning Theory, July 2011.
   • Organizer (with Sergei Pereverzev) of the Workshop on Inverse Problems in Learning and Data Driven
     Model within the Special Semester on Computational and Applied Inverse Problems (to be held
     in Linz, Austria, July 2010).
   • Organizer (with Sergei Pereverzev) of the Workshop on Inverse Problems in Learning within the In-
     ternational Conference on Inverse Problems: Modeling and Simulation (to be held in Turkey, May
     24 -29, 2010).
   • Organizer (with Mauricio Alverez and Neil Lawrence) of the workshop Kernels for Multiple Out-
     puts and Multi-task Learning: Frequentist and Bayesian Points of View, within Twenty-Third Annual
     Conference on Neural Information Processing Systems (NIPS).
   • Organizer of the mini-symposium Learning High Dimensional Data, within the International Con-
     ference on Applied Inverse Problems 2009 (Vienna, Austria).
   • Organizer (with Andrea Caponnetto) of the workshop Learning from Examples as an Inverse Problem,
     within the International Conference on Applied Inverse Problems 2007.
   • Organizer (with Ernesto De Vito and Alessandro Verri) of the workshop Trends in Computational
     Science in 2006 (main speakers: Ingrid Daubachies, Steve Smale, Ron Devore, Tomaso Poggio).
   • Organizer (with Ernesto De Vito and Alessandro Verri) of the workshop Analytic Methods for Lear-
     ning Theory in 2006 (main speakers: Filippo De Mari, Massimiliano Pontil, Vladimir Temlyakov)
   • Organizer (with Ernesto De Vito and Alessandro Verri) of the workshop Analytic Methods for Lear-
     ning Theory in 2005 (main speakers: Steve Smale, Tomaso Poggio).

Academic service

2018               Member of PhD Committee of Magda Gregorova, University of Geneva, Switzer-
                   tland.
2018               Member of PhD Committee of Charles Frogner, MIT, Boston, USA.
2018               Scientific Advisory Board, Data Science Initiative SIMULA, Norway
2017               Member of PhD Committee of Aymeric Dieulevet, ENS, Paris, France.
2017               Member of Habilitation à Diriger la Recherche Committee of Maurizio Filippone,
                   Eurecom, Nice.
2017               Member of PhD Committee of Chyuan Zhang, MIT, Boston, USA.
2017               PhD Committee, ’School of Computer Science’, Universitá di Genova.
2013 -2016         PhD Committee, ’School of Bioengineering and robotics’, Universitá di Genova.
2015, 2017         PhD selection committee,’School of Bioengineering and robotics’, Universitá di Ge-
                   nova.
2017               Scientific council of Maison des Sciences de l’Homme et de la Societé Sud Est ( Uni-
                   versité de Nice, Université di Corsica, CNRS).

Reviewer and editor service
   • Editorial Board for: Journal of Machine Learning Research, Statistics, Annals of Mathematics and
     Artificial Intelligence.
   • Journal Reviewer for
     Journal of Machine Learning Research, Machine Learning Journal, Neural Computation, IEEE
     Transaction on Information Theory, IEEE Transactions on Pattern Analysis and Machine Intel-
     ligence, IEEE Transactions on Neural Networks, IEEE Transactions on Geoscience and Remote
     Sensing, Foundations of Computational Mathematics, Journal of Complexity, Constructive Ap-
     proximation, Applied and Computational Harmonic Analysis, Journal of Statistical Planning and
     Inference.
   • Area Chair for
     Neural Information Processing System (NIPS) 2013-2016-2017-2018, International Conference on
     Machine Learning (ICML) 2015, International Conference on Computer Vision (ICCV) 2017.
   • Programme Committee for
     Conference on Computational Learning Theory (COLT) 2011, 2012, 2013, 2014, 2015, 2018.
   • Conference Reviewer for
     Conference on Neural Information Processing System (NIPS), Conference on Computational Lear-
     ning Theory (COLT), International Conference on Machine Learning (ICML), International Con-
     ference on Machine Learning (ECML), International Conference on Artificial Intelligence and Sta-
     tistics (AISTATS).

Invited Talks & Lectures

December 2018 CMStatistics, Pisa
November 2018 Horizon de math, ENS, Paris
October 2018 ORFE, Princeton
July 2018   International Symposium on Mathematical Programming (ISMP 2018), Bordeaux
June 2018   International Society for Nonparametric Statistics, Salerno
June 2018   Alan Turing Institute, London
June 2018   ‘From optimization to regularization in inverse problems and machine learning’ , SIAM
            Conference on Imaging Science, Bologna
June 2018   ’Low dimensional structure in imaging science’ , SIAM Conference on Imaging Science,
            Bologna
Mar 2018    Universitá di Pavia
Mar 2018    Deep learning & Inverse Problems workshop, Oberwolfach
Feb 2018    Machine Learning & Inverse Problems workshop, Caltech
Feb 2018    UCLA
Jan 2018    Theoretical and algorithmic underpinnings of Big Data workshop, Newton Institute Cam-
            bridge
Jan 2018    Google DeepMind
Jan 2018    Amazon Cambridge UK
Nov 2017    Massachusetts Institute of Technology
Oct 2017    Ohio State University, Columbus
Oct 2017    Air Force Technological Institute, Dayton
Oct 2017    New York University, New York
June 2017   Institut Henri Poincaré 2017, ’Structured Regularization for High-Dimensional Data Ana-
            lysis’, Paris
June 2017   CERN 2017, ’Data Science Seminar Series’ , Geneva
June 2017   Applied Inverse Problems conference 2017, ’Modern regularization techniques in data-
            based learning’, Hangzhou
June 2017   Applied Inverse Problems conference 2017, ’Multi-penalty regularization and applications
            in high dimensional data learning’, Hangzhou
June 2017   Applied Inverse Problems conference 2017, ’Deep Neural Networks: Theory and Applica-
            tions’, Hangzhou
June 2017   International conference on applied and Computational Harmonic Analysis 2017, Shan-
            ghai
May 2017    SIOPT 2017, ’Robustness and Dynamics in Optimization’ , Vancouver
May 2017    SIOPT 2017, ’First-Order Methods and Applications’ , Vancouver
Mar 2017    Spring School ‘Structural Inference’ 2017, Hamburg
Feb 2017    Université de la Côte d’Azur, Nice
Jan 2017    ENSAE, Paris
Jan 2017    Ecole Polytechnique, Paris
Dec 2016    Workshop Learning in High Dimensions with Structure, NIPS, Barcelona
Dec 2016    Workshop Adaptive and Scalable Nonparametric Methods in Machine Learning, NIPS,
            Barcelona
Oct 2016    MIT, Boston.
Sept 2016   MIT, Boston.
July 2016   66th Workshop on Convex Analysis and Optimization, Erice, Italy.
June 2016   Brain, Minds, Machines workshop, Sestri Levante, Italy.
June 2016   Universitat Pompeu Fabra, Barcellona
May 2016    SIAM Conference on Imaging Science, Albuquerque New Mexico
May 2016    Plenary Tutorial SIAM Conference on Imaging Science, Albuquerque New Mexico
Mar 2016    DALI 2016 Data, Learning and Inference Workshop, Sestri Levante
Mar 2016    Hausdorff Research Institute for Mathematics, Bonn
Jan 2016    INRIA, Paris
Jan 2016    Mathematics of Image Analysis, Paris
Jan 2016    Google DeepMind, London
Jan 2016    University College London,
Dec 2015    New York University, New York
Dec 2015    Yahoo!, New York
Aug2015     Kyoto University, Japan
Jun 2015    University of California, Berkeley
May 2015    Applied Inverse Problems Conference, Helsinki
May 2015    Deep Learning Workshop, Bertinoro
Apr 2015    Neuroengineering Workshop, University of Wisconsin, Madison
Apr 2015    DALI 2015 Data, Learning and Inference Workshop, La Palma (Canaries, Spain)
Mar 2015    DEI, Universitá degli Studi di Padova
Jan 2015    Optimization and Statistical Learning Workshop , Les Houches, France
Dec 2014    Foundations of Computational Mathematics Conference, Universidad de la Republica in
            Montevideo
Nov 2014    Brown University
Oct 2014    Simons Institute, University of California, Berkeley
Sept 2014   Workshop on ”Optimization and Dynamical Processes for Statistical Learning and Inverse
            Problems”
Sept 2014   Universita’ Bocconi
Aug 2014    City University Hong Kong
July 2014   IMT Institute for Advanced Studies Lucca
June 2014   Mathematical Foundations of Learning Theory Workshop, Barcelona
June 2014   International Conference Curves and Surfaces, Paris
June 2014   Journee du Labex Bezout Data Science and Massive Data Analysis, ESIEE Paris et l’Ecole
            des Ponts ParisTech
May 2014    University of California at Los Angeles
Dec 2013    International Conference Neural Information Processing Systems (NIPS 2013)
June 2013   Workshop on Systems, Information, Learning, and Optimization (SILO), University of
            Wisconsin
May 2013    International Conference on Approximation Theory and Applications, Honk Kong
Mar 2013    Institute of Science and Technology Austria (IST Austria)
Feb 2013    Graduate School of Informatics, Kyoto University
Jan 2013    University of Genova
Jun 2012    International Conference on System Identification
Jun 2012    International Conference on Machine Learning, workshop on Reproducing Kernel Hilbert
            Spaces and Kernel-Based Methods in Machine Learning, Edinburgh.
Jun 2012    Oberwolfach, Workshop on Learning Theory and Approximation.
Jun 2012    WIAS Berlin.
Apr 2012    Ohio State University.
Apr 2012    Workshop on Probabilistic techniques and algorithms, University of Texas at Austin.
Apr 2012    Computer Science Department, University of Texas at Austin.
Mar 2012    University College London, Gatsby Unit, London.
Feb 2012    Workshop ”From biology to robots: the iCub project”, MIT.
Jan 2012    AFOSR Cognition, Decision & Computational Intelligence Program Review.
Dec 2011    Poster Presentation at the International Conference Neural Information Processing Sy-
            stems (NIPS 2011), Workshop on Challenges in Learning Hierarchical Models: Transfer
            Learning and Optimization.
Aug 2011    Oberwolfach Mini-Workshop: Mathematics of Machine Learning.
Jul 2011    Dagstuhl Seminar Computational and Mathematical Foundation of Learning Theory.
May 2011    International Conference on Sampling Theory and Applications (SampTA 2011).
Dec 2010    Poster Presentation at the International Conference Neural Information Processing Sy-
            stems (NIPS 2010).
Dec 2010    Poster Presentation at the International Conference Neural Information Processing Sy-
            stems (NIPS 2010).
Nov 2010    École Polytechqnieue.
Nov 2010    Harvard University.
Oct 2010    Ohio State University.
Sep 2010    European Conference of Machine Learning, Barcelona, Spain.
Jul 2010    Radon Institute for Computational and Applied Mathematics.
Dec 2012    Poster Presentation at the International Conference on Artificial Intelligence and Statistics
            (AISTATS 2010)
Mar 2010    Image and Computing Seminar, MIT.
Jan 2010    City University of Hong Kong.
Dec 2009    Kernels for Multiple Outputs and Multi-task Learning Workshop, International Conferen-
            ce Neural Information Processing Systems (NIPS 2009).
Nov 2009    Pattern Theory Seminar Series, Brown University.
Jun 2009    Computational Learning Theory Conference, Montreal.
Jun 2009    Machine Learning Summer School/Workshop 2009 University of Chicago.
Apr 2009    Duke University.
Dec 2008    University of Genova, Genova, Italy.
Dec 2008    University College London, London, England.
Dec 2008    University of Manchester, Manchester, England.
Jul 2008    Società Italiana di Matematica Applicata (SIMAI) 9th Congress, September 19, 2008 - Ro-
            me, Italy.
Jul 2008    Società Italiana di Matematica Applicata (SIMAI) 9th Congress, September 15, 2008 - Ro-
            me, Italy.
Jul 2008    ICML/COLT-2008 workshop on ”Sparse Optimization and Variable Selection”, Helsinki,
            Finland.
Jul 2008    Oberwolfach workshop, ”Learning Theory and Approximation”, Germany.
May 2008   Ohio State University.
Dec 2007   Rencontres de statistiques mathématiques, Marseille France.
Nov 2007   Fuzzy Logic Laboratorium Linz-Hagenberg Johannes Kepler University of Linz.
Nov 2007   Radon Institute for Computational and Applied Mathematics.
Apr 2007   Duke University, USA.
Sep 2006   Conference of the Italian Operations Research Society (AIRO), Cesena, Italy.
Jul 2006   21st European Conference on Operational Research, Iceland.
Dec 2005   Rencontres de statistiques mathématiques, Marseille France.
Oct 2005   Workshop on Inverse Problems, Toulouse.
Jul 2005   International Conference on Applied Inverse Problems 2005, Royal Agricultural College.
Mar 2005   Toyota Technological Institute at Chicago.
Dec 2004   Eighteenth Annual Conference on Neural Information Processing Systems.
Nov 2004   Department of Computer Science, Queen’s Mary College, London.
Nov 2004   Laboratoire PSI FRE CNRS 2645 - INSA de Rouen.
Jul 2004   Université de Nice Sophia-Antipolis, Nice, France.
Feb 2004   ASTAA Project Workshop, Italy.
Oct 2003   University of Modena, Italy.
Jun 2003   ASTAA Project Workshop, Italy.
Apr 2003   KerMIT Project Workshop, Italy.
Nov 2002   ASTAA Project Workshop, Sestri Levante, Italy.
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