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Dr Slava Vaisman
Dr

Slava Vaisman

Email: 
Phone: 
+61 7 336 53264

Overview

Background

Radislav (Slava) Vaisman is a faculty member in the School of Mathematics and Physics at the University of Queensland. Radislav earned his Ph.D. in Information System Engineering from the Technion, Israel Institute of Technology in 2014. Radislav’s research interests lie at the intersection of applied probability, statistics, and computer science. Such a multidisciplinary combination allows him to handle both theoretical and real-life problems, in the fields of machine learning, optimization, safety, and system reliability research, and more. He has published in top-ranking journals such as Statistics and Computing, INFORMS, Journal on Computing, Structural Safety, and IEEE Transactions on Reliability. The Stochastic Enumeration algorithm, which was introduced and analyzed by Radislav Vaisman, had led to the efficient solution of several problems that were out of reach of state of the art methods. In addition, he is an author of 3 books with three of the most prestigious publishers in the field, Wiley, Springer, and CRC Press. Radislav serves on the editorial board of the Stochastic Models journal.

Availability

Dr Slava Vaisman is:
Available for supervision
Media expert

Qualifications

  • Bachelor of Science, Technion, Israel Institute of Technology
  • Doctor of Philosophy, Technion Israel Institute of Technology

Research interests

  • Data science

  • Statistics and Machine Learning

  • Rare Event Simulation and Modelling

  • System Reliability

  • Evolutionary Computation

  • Advanced Monte Carlo Methods and Randomized Algorithms

  • Stochastic Optimization and Counting

  • Graphical Models

  • Markov Decision Processes and Planning under uncertainty

Research impacts

Radislav Vaisman’s research interests lie at the intersection of applied probability and computer science where he has made key contributions to the theory and the practical usage of Sequential Monte Carlo methods. Specifically, his work led to the publication of a book by John Wiley & Sons: Fast Sequential Monte Carlo Methods for Counting and Optimization, which covers the state-of-the-art of modern simulation techniques for counting and optimization. In addition, his contribution to the field of System Reliability resulted in the book: Ternary Networks: Reliability and Monte Carlo, by Springer. In 2019, Radislav coauthored the book: Data Science and Machine Learning: Mathematical and Statistical Methods, which was published by CRC Press. Dr. Vaisman has published in top-ranking journals such as Statistics and Computing, INFORMS, Journal on Computing, Structural Safety, Networks, and IEEE Transactions on Reliability.

Radislav Vaisman's research in the field of Sequential Monte Carlo led to the development of the Stochastic Enumeration method for estimating the size of backtrack trees. The proposed method tackles this very general but difficult problem in computational sciences. Dr. Vaisman also developed a rigorous analysis of the Stochastic Enumeration procedure and showed that it results in significant variance reduction as compared to available alternatives. In addition, he applied the multilevel splitting ideas to many practical applications, such as optimization, counting, and network studies. Dr. Vaisman has produced insightful work in the field of systems reliability, both in theory and practice. In particular, he has developed Sequential Monte Carlo methods for estimating failure probability in highly reliable structures and new sampling plans for estimating network reliability based on a network’s structural invariants. This contribution has been recognized by top scientific journals in this field, namely Structural Safety and IEEE Transactions on Reliability.

Works

Search Professor Slava Vaisman’s works on UQ eSpace

35 works between 2010 and 2024

21 - 35 of 35 works

2016

Conference Publication

New sampling plans for estimating residual connectedness reliability

Shah, Rohan and Vaisman, Radislav (2016). New sampling plans for estimating residual connectedness reliability. 4th Annual International Conference on Operations Research and Statistics (ORS 2016), City of Singapore, Singapore, 18-19 January 2016. Singapore: Global Science and Technology Forum. doi: 10.5176/2251-1938_ORS16.18

New sampling plans for estimating residual connectedness reliability

2016

Conference Publication

D-spectra for networks with binary and ternary components

Gertsbakh, Ilya B. , Shpungin, Yoseph and Vaisman, Radislav (2016). D-spectra for networks with binary and ternary components. Second International Symposium on Stochastic Models in Reliability Engineering, Life Science and Operations Management (SMRLO’16), Beer Sheva, Israel, 15 -18 Febuary 2016. Piscataway, NJ, United States: Institute of Electrical and Electronics Engineers. doi: 10.1109/SMRLO.2016.44

D-spectra for networks with binary and ternary components

2015

Journal Article

D-spectrum and reliability of a binary system with ternary components

Gertsbakh, Ilya B, Shpungin, Yoseph and Vaisman, Radislav (2015). D-spectrum and reliability of a binary system with ternary components. Probability in the Engineering and Informational Sciences, 30 (1), 25-39. doi: 10.1017/S0269964815000261

D-spectrum and reliability of a binary system with ternary components

2015

Journal Article

Stochastic Enumeration Method for Counting Trees

Vaisman, Radislav and Kroese, Dirk P (2015). Stochastic Enumeration Method for Counting Trees. Methodology and Computing in Applied Probability, 19 (1), 31-73. doi: 10.1007/s11009-015-9457-4

Stochastic Enumeration Method for Counting Trees

2015

Journal Article

Model counting of monotone conjunctive normal form formulas with Spectra

Vaisman, Radislav, Strichman, Ofer and Gertsbakh, Ilya (2015). Model counting of monotone conjunctive normal form formulas with Spectra. INFORMS Journal On Computing, 27 (2), 406-415. doi: 10.1287/ijoc.2014.0633

Model counting of monotone conjunctive normal form formulas with Spectra

2014

Journal Article

Monte Carlo for estimating exponential convolution

Gertsbakh, Ilya, Neuman, Eyal and Vaisman, Radislav (2014). Monte Carlo for estimating exponential convolution. Communications in Statistics - Simulation and Computation, 44 (10), 2696-2704. doi: 10.1080/03610918.2013.842591

Monte Carlo for estimating exponential convolution

2014

Journal Article

Network reliability Monte Carlo with nodes subject to failure

Gertsbakh, Ilya, Shpungin, Yoseph and Vaisman, Radislav (2014). Network reliability Monte Carlo with nodes subject to failure. International Journal of Performability Engineering, 10 (2), 163-172.

Network reliability Monte Carlo with nodes subject to failure

2014

Conference Publication

Reliability of stochastic flow networks with continuous link capacities

Botev, Zdravko I., Vaisman, Slava, Rubinstein, Reuven Y. and L’Ecuyer, Pierre (2014). Reliability of stochastic flow networks with continuous link capacities. 2014 Winter Simulation Confernce, Savannah, GA, USA, 7-10 December 2014. Piscataway, NJ United States: Institute of Electrical and Electronics Engineers. doi: 10.1109/WSC.2014.7019919

Reliability of stochastic flow networks with continuous link capacities

2014

Journal Article

Permutational methods for performance analysis of stochastic flow networks

Gertsbach, Ilya, Rubinstein, Reuven, Shpungin, Yoseph and Vaisman, Radislav (2014). Permutational methods for performance analysis of stochastic flow networks. Probability In The Engineering And Informational Sciences, 28 (1), 21-38. doi: 10.1017/S0269964813000302

Permutational methods for performance analysis of stochastic flow networks

2014

Book

Fast sequential Monte Carlo methods for counting and optimization

Rubinstein, Reuven Y, Ridder, Ad and Vaisman, Radislav (2014). Fast sequential Monte Carlo methods for counting and optimization. Hoboken, NJ, United States: John Wiley & Sons. doi: 10.1002/9781118612323

Fast sequential Monte Carlo methods for counting and optimization

2014

Book

Ternary networks: reliability and Monte Carlo

Gertsbakh, Ilya, Shpungin, Yoseph and Vaisman, Radislav (2014). Ternary networks: reliability and Monte Carlo. Heidelberg, Berlin: Springer. doi: 10.1007/978-3-319-06440-6

Ternary networks: reliability and Monte Carlo

2012

Journal Article

Counting with combined splitting and capture-recapture methods

Dupuis, Paul, Kaynar, Baher, Ridder, Ad, Rubinstein, Reuven and Vaisman, Radislav (2012). Counting with combined splitting and capture-recapture methods. Stochastic Models, 28 (3), 478-502. doi: 10.1080/15326349.2012.699761

Counting with combined splitting and capture-recapture methods

2012

Journal Article

The splitting method for decision making

Rubinstein, Reuven, Dolgin, Andrey and Vaisman, Radislav (2012). The splitting method for decision making. Communications in Statistics: Simulation and Computation, 41 (6), 905-921. doi: 10.1080/03610918.2012.625339

The splitting method for decision making

2011

Journal Article

On the use of smoothing to improve the performance of the splitting method

C'erou, Frédéric, Guyader, Arnaud, Rubinstein, Reuven and Vaisman, Radislav (2011). On the use of smoothing to improve the performance of the splitting method. Stochastic Models, 27 (4), 629-650. doi: 10.1080/15326349.2011.614188

On the use of smoothing to improve the performance of the splitting method

2010

Journal Article

How to generate uniform samples on discrete sets using the splitting method

Glynn, Peter W., Dolgin, Andrey, Rubinstein, Reuven Y. and Vaisman, Radislav (2010). How to generate uniform samples on discrete sets using the splitting method. Probability in the Engineering and Informational Sciences, 24 (3), 405-422. doi: 10.1017/S0269964810000057

How to generate uniform samples on discrete sets using the splitting method

Funding

Current funding

  • 2023 - 2027
    Analytics for the Australian Grains Industry (AAGI)
    Grains Research & Development Corporation
    Open grant

Past funding

  • 2020 - 2021
    Finding minimum label spanning trees using cross-entropy method
    University of Melbourne
    Open grant
  • 2020 - 2021
    Improved algorithms for environmental monitoring network design problems
    University of Melbourne
    Open grant

Supervision

Availability

Dr Slava Vaisman is:
Available for supervision

Before you email them, read our advice on how to contact a supervisor.

Available projects

  • Available projects

    I am always looking for prospective Ph.D. students. If you wish to know more about available projects, feel free to send me an email with your CV and a few lines regarding your research background and interests.

    For details, please see: https://people.smp.uq.edu.au/RadislavVaisman/Research.html

  • Advances in Sequential Monte Carlo Methods with Applications to Degradation Data Analysis (PhD)

    The majority of complex systems and products that empower our daily activities are subject to degradation. This affects the system lifetime, the quality of the service, and the corresponding safety of usage. Thus, a development of reliability management and prognostic programs is of overwhelming importance. In this project, you will investigate methods for understanding and managing of degradation processes. Specifically, the broad objective of this project is to develop new mathematical techniques and fast computational algorithms for inference in complex statistical models by building on recent advances in Monte Carlo methods, stochastic optimisation, and rare-event sampling techniques.

  • Approximate Computations in Complex Bayesian Models: Theory and Applications (PhD)

    Statistical inference is one of the most important tools used for scientific investigation. When dealing with data, the Bayesian paradigm is very appealing since it allows to incorporate prior knowledge into a proposed model, provides a well-structured inference method (conditional on the newly observed information), does not rely on asymptotic approximation, provides interpretable answers, and implements a straight-forward framework for model comparison and hypothesis testing. While these merits often come with high computational costs, a continuing progress in the available computing resources allowed Bayesian statistics to rise to greater eminence in many scientific fields such as natural science, econometrics, social science, and engineering. However, despite recent advances, many real-life inference problems are still beyond the reach for classical Bayesian methods. Specifically, for many practical models, the evaluation of the likelihood function, a critical component of the Bayesian analysis, is either intractable or computationally prohibitive. In this project, you will investigate a number of methods such as the Pseudo-Marginal, the Integrated Nested Laplace, the Bayesian Synthetic Likelihood, the Variational Bayes, and the Approximate Bayesian Computation.

  • Advances in Sequential Monte Carlo Methods (Honours/Phd)

    A series of interesting projects in the field of advanced Monte Carlo methods is available. In this project, you can expect to encounter various problems in the domains of Bayesian inference, time-series analysis, and modern machine learning.

  • Advanced inference and machine learning with applications to crop yield (Honours/PhD)

    In this project you will investigate a series of advanced statistical inference methods with application to crop yield. The methods range from time-series analysis and forecasting to artificial deep neural networks.

  • Efficient methods for spatial micro-simulation. (Honours/Masters)

    Spatial micro-simulation aims to generate a synthetic population from an anonymous sample data at the individual level, which matches the observed population in a geographical zone for a given set of criteria in the most realistic manner. A good micro-simulation method will allow to create estimated populations at a range of spatial scales where data may be otherwise unavailable. This project focuses on exploring efficient algorithms for spatial micro-simulation.

Supervision history

Current supervision

  • Doctor Philosophy

    An integrative modelling approach to understanding human responses to hydrogen energy technologies

    Principal Advisor

  • Master Philosophy

    Forecasting and optimising decisions with machine learing

    Principal Advisor

    Other advisors: Associate Professor Marcus Gallagher

  • Doctor Philosophy

    New Algorithms for Sub-path Formulations of Vehicle Routing Problems

    Associate Advisor

    Other advisors: Dr Michael Forbes

  • Doctor Philosophy

    Rare event estimation for stochastic differential equations

    Associate Advisor

    Other advisors: Dr Thomas Taimre

  • Doctor Philosophy

    Image Generation from Texts

    Associate Advisor

    Other advisors: Dr Thomas Taimre, Professor Hongzhi Yin

Completed supervision

Media

Enquiries

Contact Dr Slava Vaisman directly for media enquiries about:

  • Applied probability
  • Data science
  • Machine learning
  • Operational research
  • Stochastic Simulation Monte Carlo Methods
  • System reliability

Need help?

For help with finding experts, story ideas and media enquiries, contact our Media team:

communications@uq.edu.au