Dino Sejdinovic

Professor Dino Sejdinovic

Professor

School of Computer and Mathematical Sciences

Faculty of Sciences, Engineering and Technology

Eligible to supervise Masters and PhD - email supervisor to discuss availability.


Dino Sejdinovic is a Professor at the School of Computer and Mathematical Sciences, University of Adelaide. He was previously a Lecturer and an Associate Professor at the Department of Statistics, University of Oxford (2014-2022). He held postdoctoral positions at the Gatsby Computational Neuroscience Unit, University College London (2011-2014) and at the Institute for Statistical Science, University of Bristol (2009-2011). He received a PhD in Electrical and Electronic Engineering from the University of Bristol (2009) and a Diplom in Mathematics and Theoretical Computer Science from the University of Sarajevo (2006).

My research spans a variety of topics at the interface between statistical methodology and machine learning, including:

  • Large-scale nonparametric and kernel methods,
  • Robust and trustworthy machine learning,
  • Multiresolution data and data fusion,
  • Measures of dependence and multivariate interaction.
  • Journals

    Year Citation
    2024 Severin, B., Lennon, D. T., Camenzind, L. C., Vigneau, F., Fedele, F., Jirovec, D., . . . Ares, N. (2024). Cross-architecture tuning of silicon and SiGe-based quantum devices using machine learning. Scientific Reports, 14(1), 17281.
    DOI Scopus1
    2024 Hu, R., Sejdinovic, D., & Evans, R. J. (2024). A Kernel Test for Causal Association via Noise Contrastive Backdoor Adjustment. Journal of Machine Learning Research, 25, 160-1-160-56.
    2024 Bouabid, S., Sejdinovic, D., & Watson-Parris, D. (2024). FaIRGP: A Bayesian Energy Balance Model for Surface Temperatures Emulation. JOURNAL OF ADVANCES IN MODELING EARTH SYSTEMS, 16(6), 53 pages.
    DOI
    2024 Craig, D. L., Moon, H., Fedele, F., Lennon, D. T., Van Straaten, B., Vigneau, F., . . . Ares, N. (2024). Bridging the Reality Gap in Quantum Devices with Physics-Aware Machine Learning. Physical Review X, 14(1).
    DOI Scopus1
    2024 Lenhardt, J., Quaas, J., & Sejdinovic, D. (2024). Marine cloud base height retrieval from MODIS cloud properties using machine learning. ATMOSPHERIC MEASUREMENT TECHNIQUES, 17(18), 5655-5677.
    DOI
    2023 Chau, S. L., Cucuringu, M., & Sejdinovic, D. (2023). Spectral Ranking with Covariates. Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 13717 LNAI, 70-86.
    DOI Scopus2
    2023 Perez-Suay, A., Gordaliza, P., Loubes, J. -M., Sejdinovic, D., & Camps-Valls, G. (2023). Fair Kernel Regression through Cross-Covariance Operators. Transactions on Machine Learning Research.
    2023 Hu, R., & Sejdinovic, D. (2023). Towards Deep Interpretable Features. Journal of Computational Mathematics and Data Science, 6, 100067.
    DOI Scopus1
    2023 Li, Z., Su, W. J., & Sejdinovic, D. (2023). Benign Overfitting and Noisy Features. Journal of the American Statistical Association, 118(544), 2876-2888.
    DOI Scopus2 WoS1
    2023 Schuff, J., Lennon, D. T., Geyer, S., Craig, D. L., Fedele, F., Vigneau, F., . . . Ares, N. (2023). Identifying Pauli spin blockade using deep learning. Quantum, 7, 1077.
    DOI Scopus2
    2022 Wild, V. D., Hu, R., & Sejdinovic, D. (2022). Generalized Variational Inference in Function Spaces: Gaussian Measures meet Bayesian Deep Learning. Advances in Neural Information Processing Systems, 35.
    Scopus5
    2022 Hu, R., Chau, S. L., Sejdinovic, D., & Glaunès, J. A. (2022). Giga-scale Kernel Matrix-Vector Multiplication on GPU. Advances in Neural Information Processing Systems, 35.
    2022 Schrab, A., Jitkrittum, W., Szabo, Z., Sejdinovic, D., & Gretton, A. (2022). Discussion of 'Multi-scale Fisher's independence test for multivariate dependence'. BIOMETRIKA, 109(3), 597-603.
    DOI Scopus1
    2022 Hu, R., Chau, S. L., Huertas, J. F., & Sejdinovic, D. (2022). Explaining Preferences with Shapley Values. Advances in Neural Information Processing Systems, 35.
    Scopus4
    2022 Chau, S. L., Hu, R., Gonzalez, J., & Sejdinovic, D. (2022). RKHS-SHAP: Shapley Values for Kernel Methods. Advances in Neural Information Processing Systems, 35.
    Scopus6
    2022 Bouabid, S., Watson-Parris, D., Stefanović, S., Nenes, A., & Sejdinovic, D. (2022). AODisaggregation: toward global aerosol vertical profiles.
    2022 Li, Z., Pérez-Suay, A., Camps-Valls, G., & Sejdinovic, D. (2022). Kernel dependence regularizers and Gaussian processes with applications to algorithmic fairness. Pattern Recognition, 132, 11 pages.
    DOI Scopus2
    2022 Zhang, Q., Wild, V., Filippi, S., Flaxman, S., & Sejdinovic, D. (2022). Bayesian Kernel Two-Sample Testing. Journal of Computational and Graphical Statistics, 31(4), 1164-1176.
    DOI Scopus1 WoS1
    2022 Hu, R., Nicholls, G. K., & Sejdinovic, D. (2022). Large scale tensor regression using kernels and variational inference. Machine Learning, 111(7), 2663-2713.
    DOI
    2022 Cortés-Andrés, J., Camps-Valls, G., Sippel, S., Székely, E., Sejdinovic, D., Diaz, E., . . . Reichstein, M. (2022). Physics-aware nonparametric regression models for Earth data analysis. Environmental Research Letters, 17(5), 054034.
    DOI Scopus9 WoS4
    2022 Fawkes, J., Evans, R. J., & Sejdinovic, D. (2022). Selection, Ignorability and Challenges with Causal Fairness. Proceedings of Machine Learning Research, 177, 275-289.
    Scopus3
    2022 Chau, S. L., Gonzalez, J., & Sejdinovic, D. (2022). Learning Inconsistent Preferences with Gaussian Processes. INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 151, 151, 16 pages.
    Scopus3
    2022 Fawkes, J., Hu, R., Evans, R. J., & Sejdinovic, D. (2022). Doubly Robust Kernel Statistics for Testing Distributional Treatment
    Effects.
    2022 Martinez-Taboada, D., & Sejdinovic, D. (2022). Sequential Decision Making on Unmatched Data using Bayesian Kernel
    Embeddings.
    2022 Martinez-Taboada, D., & Sejdinovic, D. (2022). Bayesian Counterfactual Mean Embeddings and Off-Policy Evaluation.
    2022 Matabuena, M., Vidal, J. C., Padilla, O. H. M., & Sejdinovic, D. (2022). Kernel Biclustering algorithm in Hilbert Spaces.
    2021 Zhu, H., Howes, A., Eer, O. V., Rischard, M., Li, Y., Sejdinovic, D., & Flaxman, S. (2021). Aggregated Gaussian Processes with Multiresolution Earth Observation
    Covariates.
    2021 Craig, D. L., Moon, H., Fedele, F., Lennon, D. T., Straaten, B. V., Vigneau, F., . . . Ares, N. (2021). Bridging the reality gap in quantum devices with physics-aware machine
    learning.
    2021 Severin, B., Lennon, D. T., Camenzind, L. C., Vigneau, F., Fedele, F., Jirovec, D., . . . Ares, N. (2021). Cross-architecture Tuning of Silicon and SiGe-based Quantum Devices
    Using Machine Learning.
    2021 Wild, V., Kanagawa, M., & Sejdinovic, D. (2021). Connections and Equivalences between the Nyström Method and Sparse
    Variational Gaussian Processes.
    2021 Rindt, D., Sejdinovic, D., & Steinsaltz, D. (2021). Consistency of permutation tests of independence using distance covariance, HSIC and dHSIC. Stat, 10(1), 10 pages.
    DOI Scopus4 WoS2
    2021 Bradley, V. C., Kuriwaki, S., Isakov, M., Sejdinovic, D., Meng, X. L., & Flaxman, S. (2021). Unrepresentative big surveys significantly overestimated US vaccine uptake. Nature, 600(7890), 695-700.
    DOI Scopus142 Europe PMC83
    2021 Fernández, T., Gretton, A., Rindt, D., & Sejdinovic, D. (2021). A Kernel Log-Rank Test of Independence for Right-Censored Data. Journal of the American Statistical Association, 118(542), 1-12.
    DOI Scopus2 WoS1
    2021 Nguyen, V., Orbell, S. B., Lennon, D. T., Moon, H., Vigneau, F., Camenzind, L. C., . . . Ares, N. (2021). Deep reinforcement learning for efficient measurement of quantum devices. npj Quantum Information, 7(1), 9 pages.
    DOI Scopus26 WoS14
    2021 Li, Z., Ton, J. F., Oglic, D., & Sejdinovic, D. (2021). Towards a unified analysis of random fourier features. Journal of Machine Learning Research, 22(1), 4887-4937.
    Scopus33 WoS8
    2021 Pu, X., Chau, S. L., Dong, X., & Sejdinovic, D. (2021). Kernel-Based Graph Learning from Smooth Signals: A Functional Viewpoint. IEEE Transactions on Signal and Information Processing over Networks, 7, 192-207.
    DOI Scopus12 WoS11
    2021 Blair, G. S., Bassett, R., Bastin, L., Beevers, L., Borrajo, M. I., Brown, M., . . . Watkins, J. (2021). The Role of Digital Technologies in Responding to the Grand Challenges of the Natural Environment: The Windermere Accord. Patterns, 2(1), 100156.
    DOI Scopus5 WoS3
    2021 Rindt, D., Sejdinovic, D., & Steinsaltz, D. (2021). A kernel- And optimal transport- based test of independence between covariates and right-censored lifetimes. International Journal of Biostatistics, 17(2), 331-348.
    DOI Scopus1 WoS1
    2020 Van Esbroeck, N. M., Lennon, D. T., Moon, H., Nguyen, V., Vigneau, F., Camenzind, L. C., . . . Ares, N. (2020). Quantum device fine-tuning using unsupervised embedding learning. New Journal of Physics, 22(9), 9 pages.
    DOI Scopus17 WoS11
    2020 Moon, H., Lennon, D. T., Kirkpatrick, J., van Esbroeck, N. M., Camenzind, L. C., Yu, L., . . . Ares, N. (2020). Machine learning enables completely automatic tuning of a quantum device faster than human experts. Nature Communications, 11(1), 10 pages.
    DOI Scopus49 WoS31 Europe PMC7
    2020 Rindt, D., Sejdinovic, D., & Steinsaltz, D. (2020). Consistency of permutation tests for HSIC and dHSIC.
    2020 Sejdinovic, D. (2020). Discussion of "Functional Models for Time-Varying Random Objects'' by
    Dubey and Müller.
    2019 Watson-Parris, D., Sutherland, S., Christensen, M., Caterini, A., Sejdinovic, D., & Stier, P. (2019). Detecting anthropogenic cloud perturbations with deep learning.
    2019 Briol, F. X., Oates, C. J., Girolami, M., Osborne, M. A., & Sejdinovic, D. (2019). Rejoinder: Probabilistic integration: A role in statistical computation?. Statistical Science, 34(1), 38-42.
    DOI Scopus6 WoS1
    2019 Camps-Valls, G., Sejdinovic, D., Runge, J., & Reichstein, M. (2019). A perspective on Gaussian processes for Earth observation. National Science Review, 6(4), 616-618.
    DOI Scopus45 WoS34 Europe PMC14
    2019 Briol, F. X., Oates, C. J., Girolami, M., Osborne, M. A., & Sejdinovic, D. (2019). Probabilistic integration: A role in statistical computation?. Statistical Science, 34(1), 1-22.
    DOI Scopus96 WoS67
    2019 Runge, J., Nowack, P., Kretschmer, M., Flaxman, S., & Sejdinovic, D. (2019). Detecting and quantifying causal associations in large nonlinear time series datasets. Science Advances, 5(11), 15 pages.
    DOI Scopus471 WoS246 Europe PMC76
    2018 Ton, J. F., Flaxman, S., Sejdinovic, D., & Bhatt, S. (2018). Spatial mapping with Gaussian processes and nonstationary Fourier features. Spatial Statistics, 28, 59-78.
    DOI Scopus35 WoS26 Europe PMC6
    2018 Zhang, Q., Filippi, S., Gretton, A., & Sejdinovic, D. (2018). Large-scale kernel methods for independence testing. Statistics and Computing, 28(1), 113-130.
    DOI Scopus68 WoS46
    2018 Kanagawa, M., Hennig, P., Sejdinovic, D., & Sriperumbudur, B. K. (2018). Gaussian Processes and Kernel Methods: A Review on Connections and
    Equivalences.
    2017 Flaxman, S., Teh, Y. W., & Sejdinovic, D. (2017). Poisson intensity estimation with reproducing kernels. Electronic Journal of Statistics, 11(2), 5081-5104.
    DOI Scopus15 WoS10
    2016 Vukobratovic, D., Jakovetic, D., Skachek, V., Bajovic, D., Sejdinovic, D., Karabulut Kurt, G., . . . Fischer, I. (2016). CONDENSE: A Reconfigurable Knowledge Acquisition Architecture for Future 5G IoT. IEEE Access, 4, 3360-3378.
    DOI Scopus31 WoS17
    2015 Kurth-Nelson, Z., Barnes, G., Sejdinovic, D., Dolan, R., & Dayan, P. (2015). Temporal structure in associative retrieval. eLife, 2015(4), 18 pages.
    DOI Scopus45 WoS40 Europe PMC26
    2015 Strathmann, H., Sejdinovic, D., & Girolami, M. (2015). Unbiased Bayes for Big Data: Paths of Partial Posteriors.
    2014 Johnson, O., Sejdinovic, D., Cruise, J., Piechocki, R., & Ganesh, A. (2014). Non-Parametric Change-Point Estimation using String Matching Algorithms. Methodology and Computing in Applied Probability, 16(4), 987-1008.
    DOI Scopus1 WoS1
    2013 Sejdinovic, D., Sriperumbudur, B., Gretton, A., & Fukumizu, K. (2013). Equivalence of distance-based and RKHS-based statistics in hypothesis testing. Annals of Statistics, 41(5), 2263-2291.
    DOI Scopus411 WoS295
    2010 Sejdinović, D., Piechocki, R., Doufexi, A., & Ismail, M. (2010). Decentralised distributed fountain coding: Asymptotic analysis and design. IEEE Communications Letters, 14(1), 42-44.
    DOI Scopus18 WoS16
    2009 Sejdinović, D., Piechocki, R. J., Doufexi, A., & Ismail, M. (2009). Fountain code design for data multicast with side information. IEEE Transactions on Wireless Communications, 8(10), 5155-5165.
    DOI Scopus19 WoS18
    2009 Sejdinović, D., Vukobratović, D., Doufexi, A., Šenk, V., & Piechocki, R. J. (2009). Expanding window fountain codes for unequal error protection. IEEE Transactions on Communications, 57(9), 2510-2516.
    DOI Scopus154 WoS120
    2009 Vukobratović, D., Stankoyić, V., Sejdinović, D., Stanković, L., & Xiong, Z. (2009). Scalable video multicast using expanding window fountain codes. IEEE Transactions on Multimedia, 11(6), 1094-1104.
    DOI Scopus124 WoS105
  • Conference Papers

    Year Citation
    2024 Tsuchida, R., Ong, C. S., & Sejdinovic, D. (2024). Exact, Fast and Expressive Poisson Point Processes via Squared Neural Families. In Proceedings of the AAAI Conference on Artificial Intelligence Vol. 38 (pp. 20559-20566). Online: Association for the Advancement of Artificial Intelligence (AAAI).
    DOI
    2024 Shimizu, E., Fukumizu, K., & Sejdinovic, D. (2024). Neural-Kernel Conditional Mean Embeddings. In Proceedings of Machine Learning Research Vol. 235 (pp. 45040-45059). Vienna: ML Research Press.
    2023 Chau, S. L., Muandet, K., & Sejdinovic, D. (2023). Explaining the Uncertain: Stochastic Shapley Values for Gaussian Process Models. In Proceedings of Advances in Neural Information Processing Systems (NeurIPS) Vol. 36 (pp. 50769-50795). Online: Neural Information Processing Systems Foundation, Inc. (NeurIPS).
    Scopus1
    2023 Wild, V. D., Ghalebikesabi, S., Sejdinovic, D., & Knoblauch, J. (2023). A Rigorous Link between Deep Ensembles and (Variational) Bayesian Methods. In Advances in Neural Information Processing Systems (NeurIPS) Vol. 36. Online: Neural information processing systems foundation.
    Scopus3
    2023 Tsuchida, R., Ong, C. S., & Sejdinovic, D. (2023). Squared Neural Families: A New Class of Tractable Density Models. In Advances in Neural Information Processing Systems (NeurIPS) Vol. 36 (pp. 26 pages). Online: Neural information processing systems foundation.
    Scopus3
    2023 Bouabid, S., Fawkes, J., & Sejdinovic, D. (2023). Returning The Favour: When Regression Benefits From Probabilistic Causal Knowledge. In Proceedings of Machine Learning Research Vol. 202 (pp. 2885-2913). Online: MLResearch Press.
    2022 Wild, V. D., Hu, R., & Sejdinovic, D. (2022). Generalized Variational Inference in Function Spaces: Gaussian Measures meet Bayesian Deep Learning. In S. Koyejo, S. Mohamed, A. Agarwal, D. Belgrave, K. Cho, & A. Oh (Eds.), ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35, NEURIPS 2022 (pp. 15 pages). Online: NEURAL INFORMATION PROCESSING SYSTEMS (NIPS).
    2022 Hu, R., Chau, S. L., Huertas, J. F., & Sejdinovic, D. (2022). Explaining Preferences with Shapley Values. In S. Koyejo, S. Mohamed, A. Agarwal, D. Belgrave, K. Cho, & A. Oh (Eds.), ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022) (pp. 14 pages). Online: NEURAL INFORMATION PROCESSING SYSTEMS (NIPS).
    2022 Hu, R., Chau, S. L., Sejdinovic, D., & Glaunes, J. A. (2022). Giga-scale Kernel Matrix-Vector Multiplication on GPU. In S. Koyejo, S. Mohamed, A. Agarwal, D. Belgrave, K. Cho, & A. Oh (Eds.), ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022) (pp. 13 pages). Online: NEURAL INFORMATION PROCESSING SYSTEMS (NIPS).
    2022 Chau, S. L., Hu, R., Gonzalez, J., & Sejdinovic, D. (2022). RKHS-SHAP: Shapley Values for Kernel Methods. In S. Koyejo, S. Mohamed, A. Agarwal, D. Belgrave, K. Cho, & A. Oh (Eds.), ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022) (pp. 14 pages). Online: NEURAL INFORMATION PROCESSING SYSTEMS (NIPS).
    2022 Rindt, D., Hu, R., Steinsaltz, D., & Sejdinovic, D. (2022). Survival Regression with Proper Scoring Rules and Monotonic Neural Networks. In G. Camps-Valls, F. J. R. Ruiz, & I. Valera (Eds.), Proceedings of The 25th International Conference on Artificial Intelligence and Statistics Vol. 151 (pp. 1190-1205). Virtual Conference: JMLR-JOURNAL MACHINE LEARNING RESEARCH.
    Scopus12
    2021 Ton, J. -F., Chan, L., Teh, Y. W., & Sejdinovic, D. (2021). Noise Contrastive Meta-Learning for Conditional Density Estimation using Kernel Mean Embeddings. In A. Banerjee, & K. Fukumizu (Eds.), 24TH INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS (AISTATS) Vol. 130 (pp. 11 pages). Online virtual: PMLR Publisher.
    Scopus6
    2021 Chau, S. L., Bouabid, S., & Sejdinovic, D. (2021). Deconditional Downscaling with Gaussian Processes. In M. Ranzato (Ed.), Advances in Neural Information Processing Systems Vol. 22 (pp. 17813-17825). Online conference, Canada: Neural Information Processing Systems Foundation, Inc. (NeurIPS).
    Scopus5
    2021 Chau, S. L., Ton, J. F., González, J., Teh, Y. W., & Sejdinovic, D. (2021). BAYESIMP: Uncertainty Quantification for Causal Data Fusion. In M. Ranzato, A. Beygelzimer, Y. Dauphin, P. S. Liang, & J. Wortman Vaughan (Eds.), Proceedings of Advances in Neural Information Processing Systems 34 Vol. 5 (pp. 3466-3477). Online: NEURAL INFORMATION PROCESSING SYSTEMS (NIPS).
    Scopus7
    2021 Ton, J. F., Sejdinovic, D., & Fukumizu, K. (2021). Meta Learning for Causal Direction. In 35th AAAI Conference on Artificial Intelligence, AAAI 2021 Vol. 11B (pp. 9897-9905). Online: AAAI.
    DOI Scopus9
    2021 Caterini, A., Cornish, R., Sejdinovic, D., & Doucet, A. (2021). Variational Inference with Continuously-Indexed Normalizing Flows. In C. de Campos, & M. H. Maathuis (Eds.), Proceedings of Machine Learning Research Vol. 161 (pp. 44-53). online: AUAI Press.
    Scopus7
    2020 Rudner, T. G. J., Sejdinovic, D., & Gal, Y. (2020). Inter-domain deep gaussian processes. In Proceedings of the 37th International Conference on Machine Learning, ICML 2020 Vol. PartF168147-11 (pp. 8256-8264). Vienna, Austria: Journal of Machine Learning Research.
    Scopus1
    2020 Raj, A., Law, H. C. L., Sejdinovic, D., & Park, M. (2020). A Differentially Private Kernel Two-Sample Test. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) Vol. 11906 LNAI (pp. 697-724). Online: Springer International Publishing.
    DOI Scopus3 WoS1
    2019 Law, H. C. L., Zhao, P., Chan, L., Huang, J., & Sejdinovic, D. (2019). Hyperparameter learning via distributional transfer. In H. Wallach, H. Larochelle, A. Beygelzimer, F. d'Alche-Buc, E. Fox, & R. Garnett (Eds.), Advances in Neural Information Processing Systems 32 (NeurIPS 2019) Vol. 32 (pp. 23 pages). Washington, D.C., USA: American Chemical Society (ACS).
    Scopus12 WoS1
    2019 Li, Z., Ton, J. F., Oglic, D., & Sejdinovic, D. (2019). Towards a unified analysis of random Fourier features. In K. Chaudhuri, & R. Salakhutdinov (Eds.), 36th International Conference on Machine Learning, ICML 2019 Vol. 2019-June (pp. 6916-6936). Long Beach, California, USA: Curran Associates, Inc.
    Scopus16
    2019 Mitrovic, J., Sejdinovic, D., & Teh, Y. W. (2019). Causal inference via kernel deviance measures. In Advances in Neural Information Processing Systems Vol. 2018-December (pp. 6986-6994). Montreal, Canada: Curran Associates, Inc.
    Scopus24 WoS9
    2018 Leon Law, H. C., Sejdinovic, D., Cameron, E., Lucas, T. C. D., Flaxman, S., Battle, K., & Fukumizu, K. (2018). Variational learning on aggregate outputs with Gaussian processes. In S. Bengio, H. Wallach, H. Larochelle, K. Grauman, N. Cesa-Bianchi, & R. Garnett (Eds.), Advances in Neural Information Processing Systems Vol. 31 (pp. 6081-6091). San Francisco. CA., USA.: Association for Computing Machinery.
    Scopus15 WoS1
    2018 Caterini, A. L., Doucet, A., Sejdinovic, D., Bengio, S., Wallach, H., Larochelle, H., . . . Garnett, R. (2018). Hamiltonian variational auto-encoder. In Advances in Neural Information Processing Systems Vol. 2018-December (pp. 8167-8177). Cambridge, Massachusetts, USA: MIT Press.
    Scopus42 WoS18
    2018 Law, H. C. L., Sutherland, D. J., Sejdinovic, D., & Flaxman, S. (2018). Bayesian approaches to distribution regression. In S. Fernando, & F. Perez-Cruz (Eds.), Proceedings of the Twenty-First International Conference on Artificial Intelligence and Statistics Vol. 84 (pp. 1167-1176). Lanzarote, Canary Islands: PMLR.
    Scopus12
    2017 Law, H. C. L., Yau, C., & Sejdinovic, D. (2017). Testing and learning on distributions with symmetric noise invariance. In Advances in Neural Information Processing Systems Vol. 2017-December (pp. 1344-1354). Long Beach, CA, USA: Curran Associattes.
    Scopus4
    2017 Mitrovic, J., Sejdinovic, D., & Teh, Y. W. (2017). Deep kernel machines via the kernel reparametrization trick. In 5th International Conference on Learning Representations, ICLR 2017 - Workshop Track Proceedings (pp. 4 pages). Toulon, France: Open Review.
    Scopus1
    2017 Schuster, I., Strathmann, H., Paige, B., & Sejdinovic, D. (2017). Kernel Sequential Monte Carlo. In Machine learning and Knowledge Discovery in Databases Vol. 10534 (pp. 390-409). Skopje, Macedonia: Springer International Publishing.
    DOI Scopus4 WoS3
    2017 Zhang, Q., Filippi, S., Flaxman, S., & Sejdinovic, D. (2017). Feature-to-feature regression for a two-step conditional independence test. In Uncertainty in Artificial Intelligence - Proceedings of the 33rd Conference, UAI 2017 (pp. 10 pages). Sydney, Aust: Proceedings of Machine Learning Research (PMLR).
    Scopus13 WoS6
    2017 Flaxman, S., Teh, Y. W., & Sejdinovic, D. (2017). Poisson intensity estimation with reproducing kernels. In A. Singh, & J. Zhu (Eds.), ARTIFICIAL INTELLIGENCE AND STATISTICS Vol. 54 (pp. 270-279). Fort Lauderdale, FL: MICROTOME PUBLISHING.
    WoS8
    2016 Park, M., Jitkrittum, W., & Sejdinovic, D. (2016). K2-ABC: Approximate bayesian computation with kernel embeddings. In A. Gretton, & C. C. Robert (Eds.), Proceedings of the 19th International Conference on Artificial Intelligence and Statistics, AISTATS 2016 Vol. 51 (pp. 398-407). Cadiz, Spain: MLR Press.
    Scopus50 WoS30
    2016 Franchi, G., Angulo, J., & Sejdinovic, D. (2016). Hyperspectral image classification with support vector machines on kernel distribution embeddings. In Proceedings - International Conference on Image Processing, ICIP Vol. 2016-August (pp. 1898-1902). AZ, Phoenix: IEEE.
    DOI Scopus6 WoS6
    2016 Paige, B., Sejdinovic, D., & Wood, F. (2016). Super-sampling with a reservoir. In 32nd Conference on Uncertainty in Artificial Intelligence 2016, UAI 2016 (pp. 567-576).
    Scopus4
    2016 Flaxman, S., Sejdinovic, D., Cunningham, J. P., & Filippi, S. (2016). Bayesian learning of kernel embeddings. In 32nd Conference on Uncertainty in Artificial Intelligence 2016, UAI 2016 (pp. 182-191).
    Scopus18
    2016 Mitrovic, J., Sejdinovic, D., & Teh, Y. W. (2016). DR-ABC: Approximate Bayesian computation with kernel-based distribution regression. In Proceedings of Machine Learning Research Vol. 48 (pp. 2209-2218). New York City, NY, USA: MLR Press.
    Scopus11 WoS14
    2016 Vukobratovic, D., Jakovetic, D., Skachek, V., Bajovic, D., & Sejdinovic, D. (2016). Network function computation as a service in future 5G machine type communications. In 2016 9th International Symposium on Turbo Codes and Iterative Information Processing (ISTC) Vol. 2016-October (pp. 365-369). Brest, France: IEEE.
    DOI Scopus3
    2015 Jitkrittum, W., Gretton, A., Heess, N., Eslami, S. M. A., Lakshminarayanan, B., Sejdinovic, D., & Szabó, Z. (2015). Kernel-based just-in-time learning for passing expectation propagation messages. In M. Meila, & T. Heskes (Eds.), Uncertainty in Artificial Intelligence - Proceedings of the 31st Conference, UAI 2015 (pp. 405-414). NETHERLANDS, Amsterdam: AUAI PRESS.
    Scopus16 WoS8
    2015 Chwialkowski, K., Ramdas, A., Sejdinovic, D., & Gretton, A. (2015). Fast two-sample testing with analytic representations of probability measures. In Advances in Neural Information Processing Systems Vol. 2015-January (pp. 1981-1989).
    Scopus94
    2015 Strathmann, H., Sejdinovic, D., Livingstone, S., Szabo, Z., & Gretton, A. (2015). Gradient-free Hamiltonian Monte Carlo with efficient Kernel exponential families. In Advances in Neural Information Processing Systems Vol. 2015-January (pp. 955-963).
    Scopus45
    2015 Vukobratovic, D., Sejdinovic, D., & Pizurica, A. (2015). Compressed Sensing using sparse binary measurements: A rateless coding perspective. In IEEE Workshop on Signal Processing Advances in Wireless Communications, SPAWC Vol. 2015-August (pp. 86-90). Stockholm, SWEDEN: IEEE.
    DOI
    2014 Chwialkowski, K., Sejdinovic, D., & Gretton, A. (2014). A wild bootstrap for degenerate kernel tests. In Advances in Neural Information Processing Systems Vol. 4 (pp. 3608-3616).
    Scopus39
    2014 Sejdinovic, D., Strathmann, H., Garcia, M. L., Andrieu, C., & Gretton, A. (2014). Kernel Adaptive Metropolis-Hastings. In 31st International Conference on Machine Learning, ICML 2014 Vol. 32 (pp. 1665-1673). Bejing, PEOPLES R CHINA: JMLR-JOURNAL MACHINE LEARNING RESEARCH.
    Scopus9 WoS12
    2013 Sejdinovic, D., Gretton, A., & Bergsma, W. (2013). A kernel test for three-variable interactions. In Advances in Neural Information Processing Systems.
    Scopus27
    2012 Gretton, A., Sriperumbudur, B., Sejdinovic, D., Strathmann, H., Balakrishnan, S., Pontil, M., & Fukumizu, K. (2012). Optimal kernel choice for large-scale two-sample tests. In Advances in Neural Information Processing Systems Vol. 2 (pp. 1205-1213).
    Scopus455
    2012 Piechocki, R. J., & Sejdinovic, D. (2012). Combinatorial channel signature modulation for wireless ad-hoc networks. In IEEE International Conference on Communications (pp. 4684-4689). IEEE.
    DOI Scopus1
    2012 Müller, A., Sejdinovic, D., & Piechocki, R. (2012). Approximate message passing under finite alphabet constraints. In ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing - Proceedings (pp. 3177-3180). Kyoto, JAPAN: IEEE.
    DOI Scopus3 WoS3
    2012 Sejdinovic, D., Gretton, A., Sriperumbudur, B., & Fukumizu, K. (2012). Hypothesis testing using pairwise distances and associated kernels. In Proceedings of the 29th International Conference on Machine Learning, ICML 2012 Vol. 2 (pp. 1111-1118).
    Scopus17
    2010 Sejdinovic, D., & Johnson, O. (2010). Note on noisy group testing: Asymptotic bounds and belief propagation reconstruction. In 2010 48th Annual Allerton Conference on Communication, Control, and Computing, Allerton 2010 (pp. 998-1003). IEEE.
    DOI Scopus68
    2010 Sejdinović, D., Andrieu, C., & Piechocki, R. (2010). Bayesian sequential compressed sensing in sparse dynamical systems. In 2010 48th Annual Allerton Conference on Communication, Control, and Computing, Allerton 2010 (pp. 1730-1736). IEEE.
    DOI Scopus26
    2009 Sejdinović, D., Piechocki, R. J., & Doufexi, A. (2009). AND-OR tree analysis of distributed LT codes. In Proceedings - 2009 IEEE Information Theory Workshop on Networking and Information Theory, ITW 2009 (pp. 261-265). Volos, GREECE: IEEE.
    DOI Scopus62 WoS39
    2009 Vukobratovic, D., Stankovic, V., Stankovic, L., & Sejdinovic, D. (2009). Precoded EWF codes for unequal error protection of scalable video. In Proceedings of the 5th International Conference on Mobile Multimedia Communications, MobiMedia 2009. ICST.
    DOI Scopus6
    2009 Sejdinović, D., Piechocki, R. J., & Doufexi, A. (2009). Rateless distributed source code design. In Proceedings of the 5th International Conference on Mobile Multimedia Communications, MobiMedia 2009. ICST.
    DOI Scopus3
    2008 Sejdinović, D., Piechocki, R. J., Doufexi, A., & Ismail, M. (2008). Rate adaptive binary erasure quantization with dual fountain codes. In GLOBECOM - IEEE Global Telecommunications Conference (pp. 1203-1207). New Orleans, LA: IEEE.
    DOI Scopus1 WoS1
    2008 Sejdinović, D., Ponnampalam, V., Piechocki, R. J., & Doufexi, A. (2008). The throughput analysis of different IR-HARQ schemes based on fountain codes. In IEEE Wireless Communications and Networking Conference, WCNC (pp. 267-272). Las Vegas, NV: IEEE.
    DOI Scopus5 WoS3
    2008 Sejdinović, D., Piechocki, R. J., Doufexi, A., & Ismail, M. (2008). Fountain coding with decoder side information. In IEEE International Conference on Communications (pp. 4477-4482). Beijing, PEOPLES R CHINA: IEEE.
    DOI Scopus4
    2008 Vukobratovic, D., Stankovic, V., Sejdinovic, D., Stankovic, L., & Xiong, Z. (2008). Expanding Window Fountain codes for scalable video multicast. In 2008 IEEE International Conference on Multimedia and Expo, ICME 2008 - Proceedings (pp. 77-80). Hannover, GERMANY: IEEE.
    DOI Scopus19 WoS6
    2007 Sejdinović, D., Vukobratović, D., Doufexi, A., Šenk, V., & Piechocki, R. J. (2007). Expanding Window Fountain codes for unequal error protection. In M. B. Matthews (Ed.), Conference Record - Asilomar Conference on Signals, Systems and Computers (pp. 1020-1024). Pacific Grove, CA: IEEE.
    DOI Scopus33 WoS13
    2007 Vukobratović, D., Stanković, V., Sejdinović, D., Fagoonee, L., & Xiong, Z. (2007). Scalable bata multicast using expanding window fountain codes. In 45th Annual Allerton Conference on Communication, Control, and Computing 2007 Vol. 1 (pp. 344-351).
    Scopus7
  • Preprint

    Year Citation
    2024 Doan, B. G., Shamsi, A., Guo, X. -Y., Mohammadi, A., Alinejad-Rokny, H., Sejdinovic, D., . . . Abbasnejad, E. (2024). Bayesian Low-Rank LeArning (Bella): A Practical Approach to Bayesian
    Neural Networks.
    2024 Sejdinovic, D. (2024). An Overview of Causal Inference using Kernel Embeddings.
    2021 Hu, R., Sejdinovic, D., & Evans, R. J. (2021). A Kernel Test for Causal Association via Noise Contrastive Backdoor
    Adjustment.
  • Current Higher Degree by Research Supervision (University of Adelaide)

    Date Role Research Topic Program Degree Type Student Load Student Name
    2024 Principal Supervisor Uncertainty Calibration of Probabilistic Machine Learning Models Master of Philosophy Master Full Time Mr Peter Moskvichev
    2024 Principal Supervisor Multi-Agent Machine Learning for Object-Tracking Doctor of Philosophy Doctorate Full Time Mr Vinh Thanh Nguyen
    2023 Principal Supervisor Kalman Filtering and Optimization Methods for Object Tracking Master of Philosophy Master Full Time Miss Vivienne Mei-Larn Niejalke
  • Other Supervision Activities

    Date Role Research Topic Location Program Supervision Type Student Load Student Name
    2020 - ongoing Principal Supervisor Uncertainty quantification in large scale machine learning University of Oxford DPhil Doctorate Full Time Veit David Wild
    2020 - ongoing Principal Supervisor Scalable and Expressive Spatio-Temporal Modelling University of Oxford DPhil Doctorate Full Time Shahine Bouabid
    2020 - ongoing Co-Supervisor On the Achievability of Causal Fairness University of Oxford DPhil Doctorate Full Time Jake Fawkes
    2019 - ongoing Principal Supervisor Quantifying and mitigating selection bias in probability and nonprobability samples University of Oxford DPhil Doctorate Full Time Valerie C. Bradley
  • Position: Professor
  • Phone: 83133797
  • Email: dino.sejdinovic@adelaide.edu.au
  • Campus: North Terrace
  • Building: Ingkarni Wardli, floor Level Six
  • Org Unit: Mathematical Sciences

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