Second HSE-Yandex autumn school on generative models

Europe/Moscow
R602 (NRU HSE, Moscow)

R602

NRU HSE, Moscow

Moscow, 109028, 11, Pokrovsky blvrd
Alexey Naumov (HSE), Dmitriy Vetrov (HSE), Andrey Ustyuzhanin (Yandex School of Data Analysis (RU)), Natalia Talaikova
Description

HSE University and Yandex invite you to the joint second autumn school on generative models aimed at young undergraduate/graduate students planning to develop research career. This intense four-day workshop will consist of 3 interdisciplinary mini-courses, list of invited talks and round table discussion with the leading researchers. Key topics of this school are:

  • Introduction to Deep Learning
  • Generative Models for fun and profit
  • Introduction to bandit problems

Due to pandemic, the school is going to run in the mixed format: in addition to a zoom meeting room, there is a physical room booked that would allow participants to follow the event from HSE Pokrovsky campus.

The school is organised by three HSE laboratories:

  • LAMBDA (Laboratory of Methods for Big Data Analysis)
  • DeepBayes (Centre of Deep Learning and Bayesian Methods)
  • HDI Lab (International laboratory of stochastic algorithms and high-dimensional inference)

Yandex is an industry partner of the school.

Mini-courses:

Invited talks:

  • Alexey Artemov (Skoltech)
  • Evgeny Burnaev (Skoltech)
  • Anton Konushin (MSU, HSE, YSDA)
  • Stanislav Morozov (Yandex)
  • Maxim Panov (Skoltech)
  • Evgenii Stepanov (PDMI RAS, HSE)
  • Alexandra Suvorikova (WIAS, HSE)
  • Nikita Zhivotovsky (Google, HSE)

Live discussion with leading researchers:

On the 27th afternoon, we plan to have a live panel discussion with leading scientists on the future of AI and research career.

School materials:

All materials of the school is available via this page timetable. It contains slides of the lectures and talks. All seminar materials are available via github repository: https://github.com/HSE-LAMBDA/GenModels-2020

This school is supported by the RSF grant N19-71-30020 "Applications of probabilistic artificial neural generative models to development of digital twin technology for Non-linear stochastic systems".

For any questions, please feel free to contact Natalia Talaikova
    • Organization: Welcome R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • DeepBayes lab: Introduction to machine learning R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Ekaterina Lobacheva (HSE University)
    • 11:00
      Coffee Break S812

      S812

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • DeepBayes lab: Introduction to machine learning. Practice R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Ms Nadia Chirkova (HSE)
    • 12:30
      Lunch
    • DeepBayes lab: Introduction to neural networks R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Ms Nadia Chirkova (HSE)
    • 15:00
      Tea Break S812

      S812

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • DeepBayes lab: Introduction to neural networks. Practice R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Ms Nadia Chirkova (HSE)
    • 1
      Unusual Effects in Modern Deep Neural Networks R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Speaker: Prof. Dmitriy Vetrov (HSE)
    • LAMBDA lab: Introduction, the metrics for the generative models R608

      R608

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Denis Derkach (National Research University Higher School of Economics (RU))
    • 11:00
      Coffee Break S812 (NRU HSE)

      S812

      NRU HSE

      Moscow, 109028, 11, Pokrovsky blvrd
    • 2
      Generative adversarial networks R608 (NRU HSE)

      R608

      NRU HSE

      Russia, Moscow, Pokrovsky boulevard, 11
      Speaker: Mr Artem Maevskiy (HSE University)
    • Organization: Group Photo R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • 12:40
      Lunch
    • LAMBDA lab: Generative Adversarial Networks. Practice R608

      R608

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Artem Ryzhikov (National Research University Higher School of Economics (RU))
      • 3
        Generative adversarial networks R608 (NRU HSE)

        R608

        NRU HSE

        Moscow, 109028, 11, Pokrovsky blvrd
        Speaker: Mr Artem Maevskiy (HSE University)
    • 15:00
      Tea Break S812

      S812

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • LAMBDA lab: Introduction to the normalizing flows. Lecture R608

      R608

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Artem Ryzhikov (National Research University Higher School of Economics (RU))
    • 16:30
      Tea Break R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • LAMBDA lab: Normalizing flows, practice R608 (NRU HSE)

      R608

      NRU HSE

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Artem Ryzhikov (National Research University Higher School of Economics (RU))
    • HDI lab: An introduction to bandit problems R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Quentin Paris (Higher School of Economics)
    • 11:00
      Coffee Break S812

      S812

      NRU HSE, Moscow

    • HDI lab: An introduction to bandit problems R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Quentin Paris (Higher School of Economics)
    • 12:30
      Lunch
    • HDI lab: An introduction to bandit problems R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Mr Sergey Samsonov (HSE)
    • 15:00
      Tea Break S812

      S812

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • HDI lab: An introduction to bandit problems R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Convener: Mr Sergey Samsonov (HSE)
    • 4
      Robust mean estimation R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Speaker: Nikita Zhivotovskiy (Google, Higher School of Economics)
    • 5
      Synthetic data and generative models in road sign recognition and other computer vision problems R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Speaker: Anton Konushin (Higher School of Economics)
    • 6
      Latent-Space Laplacian Pyramids for Adversarial Representation Learning with 3D Point Clouds R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd

      Constructing high-quality generative models for 3D shapes is a fundamental task in computer vision with diverse applications in geometry processing, engineering, and design. Despite the recent progress in deep generative modelling, synthesis of finely detailed 3D surfaces, such as high-resolution point clouds, from scratch has not been achieved with existing approaches. In this work, we propose to employ the latent-space Laplacian pyramid representation within a hierarchical generative model for 3D point clouds. We combine the recently proposed latent-space GAN and Laplacian GAN architectures to form a multi-scale model capable of generating 3D point clouds at increasing levels of detail. Our evaluation demonstrates that our model outperforms the existing generative models for 3D point clouds.

      Speaker: Alexey Artemov (Yandex)
    • 11:20
      Coffee Break S813 (NRU HSE)

      S813

      NRU HSE

      Moscow, 109028, 11, Pokrovsky blvrd
    • 7
      Deep Generative Models for Knowledge Transfer R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Speaker: Prof. Evgeny Burnaev (Skoltech)
    • 8
      Optimal transport and its application in bioinformatics R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Speaker: Alexandra Suvorikova (Higher School of Economics)
    • 13:00
      Lunch
    • 9
      How to reveal hidden geometric structures in data R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      Speaker: Prof. Evgeny Stepanov (Higher School of Economics)
    • 10
      Variational Inference: Mean Field, Normalizing Flows and beyond R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd

      In this talk we are going to discuss Variational approach to Bayesian Inference. We will start by reviewing standard mean-field approximations to the posterior as well as more powerful methods such as normalizing flows. Then we will discuss a new computationally efficient method to combine Variational Inference (VI) with Markov Chain Monte Carlo (MCMC). This approach can be used with generic MCMC kernels, but is especially well suited to MetFlow, a novel family of MCMC algorithms we introduce, in which proposals are obtained using Normalizing Flows. The marginal distribution produced by such MCMC algorithms is a mixture of flow-based distributions, thus drastically increasing the expressivity of the variational family. Unlike previous methods following this direction, our approach is amenable to the reparametrization trick and does not rely on computationally expensive reverse kernels

      Speaker: Prof. Maxim Panov (Skoltech, HSE)
    • 11
      Big GANs Are Watching You: Towards Unsupervised Object Segmentation with Off-the-Shelf Generative Models R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd

      Since collecting pixel-level groundtruth data is expensive, unsupervised visual understanding problems are currently an active research topic. In particular, several recent methods based on generative models have achieved promising results for object segmentation and saliency detection. However, since generative models are known to be unstable and sensitive to hyperparameters, the training of these methods can be challenging and time-consuming.
      In this work, we introduce an alternative, much simpler way to exploit generative models for unsupervised object segmentation. First, we explore the latent space of the BigBiGAN -- the state-of-the-art unsupervised GAN, which parameters are publicly available. We demonstrate that object saliency masks for GAN-produced images can be obtained automatically with BigBiGAN. These masks then are used to train a discriminative segmentation model. Being very simple and easy-to-reproduce, our approach provides competitive performance on common benchmarks in the unsupervised scenario.

      Speaker: Mr Stanislav Morozov (Yandex)
    • 16:10
      Tea Break R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • Panel discussion R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
      • 12
        How to reveal hidden geometric structures in data
        Speaker: Prof. Evgeny Stepanov (Higher School of Economics)
    • Organization: The end R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd
    • Evening session: Evening session -- Cancelled R602

      R602

      NRU HSE, Moscow

      Moscow, 109028, 11, Pokrovsky blvrd