• A
  • A
  • A
  • АБВ
  • АБВ
  • АБВ
  • A
  • A
  • A
  • A
  • A
Обычная версия сайта
  • RU
  • EN
  • HSE University
  • Publications
  • Articles
  • Randomized Machine Learning Algorithms to Forecast the Evolution of Thermokarst Lakes Area in Permafrost Zones
  • RU
  • EN
Расширенный поиск
Высшая школа экономики
Национальный исследовательский университет
Priority areas
  • business informatics
  • economics
  • engineering science
  • humanitarian
  • IT and mathematics
  • law
  • management
  • mathematics
  • sociology
  • state and public administration
by year
  • 2027
  • 2026
  • 2025
  • 2024
  • 2023
  • 2022
  • 2021
  • 2020
  • 2019
  • 2018
  • 2017
  • 2016
  • 2015
  • 2014
  • 2013
  • 2012
  • 2011
  • 2010
  • 2009
  • 2008
  • 2007
  • 2006
  • 2005
  • 2004
  • 2003
  • 2002
  • 2001
  • 2000
  • 1999
  • 1998
  • 1997
  • 1996
  • 1995
  • 1994
  • 1993
  • 1992
  • 1991
  • 1990
  • 1989
  • 1988
  • 1987
  • 1986
  • 1985
  • 1984
  • 1983
  • 1982
  • 1981
  • 1980
  • 1979
  • 1978
  • 1977
  • 1976
  • 1975
  • 1974
  • 1973
  • 1972
  • 1971
  • 1970
  • 1969
  • 1968
  • 1967
  • 1966
  • 1965
  • 1964
  • 1963
  • 1958
  • More
Subject
News
July 2, 2026
Researchers Discover How Spelling Errors Slow Down Reading in Russian
Psycholinguists from the Centre for Language and Brain at HSE University–St Petersburg have shown that words that are frequently misspelled are processed more slowly by readers, even when presented with the correct spelling. The researchers confirmed this effect for the first time using Russian-language materials and found that response speed is most strongly linked to how confidently individuals can distinguish the correct spelling of a word from an incorrect one. The study has been published in The Mental Lexicon.
July 2, 2026
HSE Develops App for Assessing Phonological Processing in Children
Researchers at the HSE Centre for Language and Brain have developed a new digital tool for assessing children's phonological processing skills—the ZARYA (Sound Analysis of the Russian Language) test battery. It is the first standardised application in Russia designed to provide a fast and reliable assessment of children's ability to distinguish speech sounds, retain them in working memory, and perform phonemic analysis. The app runs on Android tablets and smartphones and is available for download from RuStore. Details of the test validation have been published in the Journal of Speech, Language, and Hearing Research.
July 1, 2026
Scientists Discover Why Europium 'Misbehaves'
Europium is a rare-earth metal responsible for the pure red glow in displays and other luminescent materials. For a long time, however, it refused to emit light when surrounded by certain organic molecules known as acylpyrazolone ligands. Chemists have now uncovered the reason: in europium complexes with these ligands, a 'black window' appears—a charge-transfer state in which the energy absorbed by the ligand is dissipated as heat rather than emitted as light. Understanding this mechanism opens the way to designing more efficient red-emitting materials for displays, fluorescent thermometers, and chemical sensors. The results have been published in Dalton Transactions.

 

Have you spotted a typo?
Highlight it, click Ctrl+Enter and send us a message. Thank you for your help!

Publications
  • Books
  • Articles
  • Chapters of books
  • Working papers
  • Report a publication
  • Research at HSE

?

Randomized Machine Learning Algorithms to Forecast the Evolution of Thermokarst Lakes Area in Permafrost Zones

Automation and Remote Control. 2023. Vol. 84. No. 1. P. 64–81.
Yu. A. Dubnov, A. Yu. Popkov, Polishchuk V. Y., Sokol E. S., Melnikov A. V., Polishchuk Y. M., Yu. S. Popkov

Randomized machine learning focuses on problems with considerable uncertainty in data and models. Machine learning algorithms are formulated in terms of a functional entropylinear programming problem. We adapt these algorithms to forecasting problems on an example of the evolution of thermokarst lakes area in permafrost zones. Thermokarst lakes generate methane, a greenhouse gas affecting climate change. We propose randomized machine learning procedures using dynamic regression models with random parameters and retrospective data (climatic parameters and remote sensing of the Earth’s surface). The randomized machine learning algorithm developed below estimates the probability density functions of model parameters and measurement noises. Randomized forecasting is implemented as algorithms transforming the optimal distributions into the corresponding random sequences (sampling algorithms). The randomized forecasting procedures and technologies are trained, tested, and then applied to forecast the evolution of thermokarst lakes area in Western Siberia.

Research target: Mathematics Computer Science
Language: English
Full text
DOI
Text on another site
Keywords: информационная энтропиядистанционное зондированиеRemote Sensing information entropyrandomized forecastingthermokarst lakesрандомизированное машинное обучениерандомизированное прогнозирование randomized machine learning термокарстовые озера
Similar publications
Журнал Телекоммуникации №1 за 2026
М.: Наука и технологии, 2026.
«Телекоммуникации» ежемесячный рецензируемый производственный, информационно-аналитический и учебно-методический журнал выходит в свет с июля 2000 г. Для руководителей и работников промышленности, научно-исследовательских и проектно-конструкторских институтов, высших учебных заведений, аспирантов и студентов, а также для специалистов, разрабатывающих, выпускающих и эксплуатирующих средства телекоммуникаций. Новости разработок и производства, прогнозы развития, защита информации, Нормативные, справочные, аналитические и учебно-методические материалы. Переход к глобальному информационному ...
Added: July 4, 2026
"Труды МФТИ" Том 17, № 4 (68) (2025)
МФТИ, 2025.
абота  редакции  научного журнала «Труды Московского физико-технического института» (кратко «Труды МФТИ»), редакционной коллегии и редакционного совета осуществляется в соответствии с Положением, утвержденным ректором института. В состав редакционной коллегии входят руководители института, факультетов, институтских и факультетских кафедр. Главный редактор журнала —президент МФТИ, член-корр. РАН Кудрявцев Н.Н.   Журнал «Труды МФТИ» входит в базу данных РИНЦ (Российский Индекс Научного Цитирования) и доступен в электронной ...
Added: July 4, 2026
Modulation Recognition for Industrial Internet of Things Communication Signals Under Few-Shot Conditions Based on Attention Mechanism and Relation Network
Hualin M., Jie Z., Jerome Y. et al., Journal of Internet Technology 2026 Vol. 27 No. 3 P. 367–382
In open, interference-prone scenarios, the scarcity of precisely annotated signal samples limits the application of deep learning–based modulation identification, which generally relies on extensive labeled data for stability. Relation Networks, as an emerging class of deep learning models, exhibit rapid convergence in few-shot learning tasks. Motivated by the fast convergence property of relation-based learning and ...
Added: July 3, 2026
Кодовые конструкции на базе обобщенных каскадных кодов для систем связи, использующих прием на основе порядковых статистик
Osipov D., Информационно-управляющие системы 2026 № 3 С. 49–62
Introduction: In many communication systems under construction and those to be created power control and channel estimation techniques developed for the previous generation communication systems fail to provide desired precision. One way to solve this problem is to use order-statistics-based reception techniques that do not need channel estimation or power control. To ensure the desired ...
Added: July 3, 2026
Graph Games and Logic Design
Springer, 2026.
This book presents established and new research on the close connections between graph games and systems of logic, particularly existing and newly designed modal logics. The volume utilizes two graph games – the sabotage game and the hide-and-seek game – to demonstrate the natural interplay between designing new graph games and exploring new kinds of ...
Added: June 30, 2026
On Ω-stable 3-diffeomorphism with a solid or thickened surfaced basic set
Pochinka O., Barinova M., Journal of Geometry and Physics 2026 Vol. 228 P. 1–8
In the present paper we consider an Ω-stable 3-diffeomorphism with a solid or thickened surfaced non-trivial basic set. Such basic sets include, for instance, all one-dimensional expanding attractors and those two-dimensional basic sets that are not expanding. We prove that the chain recurrent set of every such a diffeomorphism necessarily contains at least two non-trivial ...
Added: June 30, 2026
Почти пустые симплексы и полиэдры Клейна
German O., Illarionov A., Известия РАН. Серия математическая 2026 Т. 90 № 3 С. 3–18
Пусть симплекс с целочисленными вершинами - содержащий ровно одну целочисленную точку, отличную от своих вершин. В работе доказывается, что если точка находится во внутренности симплекса или в относительной внутренности некоторой гиперграни симплекса, то объем симплекса ограничен величиной, зависящей только от размерности, в противном случае объем симплекса может быть сколь угодно большим. Этот результат применяется для вывода асимптотической формулы для среднего числа вершин полиэдров ...
Added: June 29, 2026
The 12th International Conference on Information Technology and Quantitative Management (ITQM 2025)
Netherlands: ScienceDirect, 2025.
No ...
Added: June 28, 2026
City-Agglomeration: Production and representation of the boundaries of spatial influence of Krasnodar
O. I. Vendina, A. V. Sheludkov, Gritsenko A. A., Regional Research of Russia 2024 Vol. 14 No. Suppl 1 P. S10–S30
The article is based on the materials of the field research conducted in Krasnodar krai in the summer–autumn of 2023, as well as on the analysis of articles and projects devoted to the substantiation of spatial forms and borders of Russian urban agglomerations. The Krasnodar urban agglomeration was chosen for several reasons: (a) the intensive ...
Added: October 10, 2025
Operationalization of the theory of meaning in inter-social communications and its applications
Ivanova I., Scientometrics 2025 Vol. 130 No. 6 P. 3109–3126
This paper reviews research topics that I have had the fortune to explore with Loet Leydesdorff over the past decade. What initially seemed to be different areas of research have eventually been brought together into a unified framework for a theory of meaning in inter-social communication. The sociology of communication laid the foundations for a ...
Added: September 2, 2025
Green infrastructure dynamics in the urban areas of subarctic Western Siberia
Moskovchenko D., Roman Fedorov, Fakhretdinov A., Urban Ecosystems 2025 No. 28 Article 155
The northern part of western Siberia, which comprises the Khanty-Mansiysk and Yamalo-Nenets Autonomous Districts of Tyumen Oblast, Russia, is one of the most urbanized areas exposed to the subarctic climate. Here, we study the specifc socio-natural interactions afected by the development of urban green infrastructure in such climatic zones as middle and northern taiga, as ...
Added: August 4, 2025
Об информационном профиле трех случайных величин с двумя исходами
Аллеманд А. О., Чебышевский сборник 2024 Т. 25 № 4 С. 27–41
In this paper we consider mutual information for a pair of random variables and find a third variable (condition) that maximise conditional mutual information of three of them. ...
Added: April 29, 2025
Пространственно-временной анализ эволюции площади термокарстовых озер с использованием космического зондирования земной поверхности и процедур рандомизированного машинного обучения и прогнозирования
Dubnov Y. A., Popkov A., Popkov Y. et al., Russian Journal of Earth Sciences 2024 Т. 24 № 5 С. 1–20
Работа посвящена проблеме прогнозирования эволюции площади термокарстовых озер в зоне вечной мерзлоты Арктики на примере анализа тестовых участков из нескольких географических регионов. Предлагаемый в работе подход основан на методе рандомизированного машинного обучения (РМО) для построения математических моделей динамики площади озер в условиях климатических изменений, ее обучения на реальных данных и дальнейшего прогнозирования. Приводятся и сравниваются результаты моделирования динамики площадей озер ...
Added: January 27, 2025
ЭНТРОПИЙНО-РАНДОМИЗИРОВАННОЕ ОЦЕНИВАНИЕ ПАРАМЕТРОВ НЕЛИНЕЙНОЙ ДИНАМИЧЕСКОЙ МОДЕЛИ ПО НАБЛЮДЕНИЯМ ЗАВИСИМОГО ПРОЦЕССА
Popkov A., Dubnov Y. A., Popkov Y., Челябинский физико-математический журнал 2024 Т. 9 № 1 С. 144–159
Работа посвящена развитию метода рандомизированного машинного обучения в направлении оценивания динамических моделей связанных процессов с использованием реальных данных, один из которых рассматривается в качестве основного, а другой в качестве зависимого. Модель основного процесса в этой концепции реализуется динамической моделью на основе дифференциальных уравнений с параметрами, которые в свою очередь реализуются статической моделью в другой временной ...
Added: January 27, 2025
Информационная энтропия и гетерогенное поведение инвесторов на российском фондовом рынке
Fayzulin M., Финансы и бизнес 2024 Т. 20 № 2 С. 27–52
В работе исследуется взаимосвязь между разнородным поведением частных инвесторов и динамикой цен наиболее обсуждаемых акций российский акций, включая также динамику российского фондового рынка. На основе текстового анализа были разработаны метрики сентимента, учитывающие мнения пользователей инвестиционных онлайн-платформ и поведение биржевых характеристик рыночных активов. Такой подход позволил обнаружить ряд взаимосвязей между гетерогенным сентиментом участников рынка и отрицательной ...
Added: August 27, 2024
Reinforcement Procedure for Randomized Machine Learning
Yuri S. Popkov, Dubnov Y. A., Alexey Yu. Popkov, Mathematics 2023 Vol. 11 No. 17 Article 3651
This paper is devoted to problem-oriented reinforcement methods for the numerical implementation of Randomized Machine Learning. We have developed a scheme of the reinforcement procedure based on the agent approach and Bellman’s optimality principle. This procedure ensures strictly monotonic properties of a sequence of local records in the iterative computational procedure of the learning process. ...
Added: February 5, 2024
Прогнозирование распространения COVID-19 в ЕС с использованием рандомизированного машинного обучения динамических моделей
Popkov A., Dubnov Y. A., Popkov Y., Информационные технологии и вычислительные системы 2022 № 3 С. 67–78
The work is devoted to application of the theory of Randomized Machine Learning to forecasting of the COVID-19 pandemic based on SIR epidemiological model. We propose two modelling variants, the first is based on estimation of SIR model using real case data, the second is based on the idea of modelling transmission coefficient and its prediction. Comparative study ...
Added: February 5, 2024
Рандомизированное машинное обучение и прогнозирование нелинейных динамических моделей c применением к эпидемиологической модели SIR
А. Ю. Попков, Ю. А. Дубнов, Ю. С. Попков, Информатика и автоматизация (Труды СПИИРАН) 2022 Т. 4 № 21 С. 659–677
We propose an approach to estimation of the parameters of non-linear dynamic models using the concept of Randomized Machine Learning (RML), based on the transition from deterministic models to random ones (with random parameters), followed by estimation of the probability distributions of parameters and noises on real data. The main feature of this method is ...
Added: February 5, 2024
Geomorphology of the Central Kamchatka Depression, the Kamchatka Peninsula, NE Pacific
Zelenin E., Gurinov A., Garipova S. et al., Journal of Maps 2023 Vol. 19 No. 1 Article 2252006
The Kamchatka Peninsula lies on the eastern active margin of Eurasia, adjacent to the Kuril-Kamchatka subduction zone. In this study, we provide a geomorphological map of the Central Kamchatka Depression – the largest sedimentary basin in Kamchatka and also in all the island arcs of the North Pacific. The depression extends along Kamchatka at latitudes ...
Added: October 27, 2023
A Semi-empirical Approach for Decomposition of Remotely Sensed Leaf Area Index into Overstory and Understory Components over Russian Forests
Shabanov N., Sergey A. Bartalev, Kobayashi H. et al., IEEE Transactions on Geoscience and Remote Sensing 2023 Vol. 61 Article 4405717
Forest is a multi-layered canopy, where overstory and understory implement different biogeochemical cycles, phenology and functional role. Remote sensing products typically estimate forest total Leaf Area Index (LAI), while few quantify its components. The theoretical understanding of foliage distribution between layers is still quite limited. In this study we’ve developed a semi-empirical model for decomposition ...
Added: July 5, 2023
Data-Driven Short-Term Daily Operational Sea Ice Regional Forecasting
Grigoryev T., Verezemskaya P., Krinitskiy M. et al., Remote Sensing 2022 Vol. 14 No. 22 Article 5837
Global warming has made the Arctic increasingly available for marine operations and created a demand for reliable operational sea ice forecasts to increase safety. Because ocean-ice numerical models are highly computationally intensive, relatively lightweight ML-based methods may be more efficient for sea ice forecasting. Many studies have exploited different deep learning models alongside classical approaches ...
Added: June 19, 2023
Приближенное оценивание с помощью ускоренного метода наибольшей энтропии. Часть 2. исследование свойств оценок часть
Dubnov Y. A., Bulychev A., Информационные технологии и вычислительные системы 2023 № 1 С. 71–81
In this paper, we investigate a method of approximate entropy estimation, designed to speed up the classical method of maximum entropy estimation due to the use of regularization in the optimization problem. This method is compared with the method of maximum likelihood and Bayesian estimation, both experimentally and in terms of theoretical calculations for some ...
Added: June 16, 2023
Приближенное оценивание с помощью ускоренного метода наибольшей энтропии. Часть 1. постановка задачи и реализация для задачи регрессии
Dubnov Y. A., Bulychev A., Информационные технологии и вычислительные системы 2022 № 4 С. 69–80
The work is devoted to the development of an entropy estimation method with “soft” randomization for restoring the parameters of probabilistic mathematical models from the available observations. Soft randomization refers to the technique of adding regularization to the information entropy functional to simplify the optimization problem and speed up learning process compared to the traditional ...
Added: June 16, 2023
Теоретико-информационные аспекты защиты информации
Los A., Mironkin V., М.: Издательская группа URSS, 2023.
This book is a textbook combining two related disciplines — "Information Theory" and "Coding Theory", describing the main stages of information transformation: from its formation using a message source and primary transformation — coding procedures — to its transmission over a communication channel and final conversion by the addressee into the required format — decoding ...
Added: April 11, 2023
  • About
  • About
  • Key Figures & Facts
  • Sustainability at HSE University
  • Faculties & Departments
  • International Partnerships
  • Faculty & Staff
  • HSE Buildings
  • HSE University for Persons with Disabilities
  • Public Enquiries
  • Studies
  • Admissions
  • Programme Catalogue
  • Undergraduate
  • Graduate
  • Exchange Programmes
  • Summer University
  • Summer Schools
  • Semester in Moscow
  • Business Internship
  • Research
  • International Laboratories
  • Research Centres
  • Research Projects
  • Monitoring Studies
  • Conferences & Seminars
  • Academic Jobs
  • Yasin (April) International Academic Conference on Economic and Social Development
  • Media & Resources
  • Publications by staff
  • HSE Journals
  • Publishing House
  • iq.hse.ru: commentary by HSE experts
  • Library
  • Economic & Social Data Archive
  • Video
  • HSE Repository of Socio-Economic Information
  • HSE1993–2026
  • Contacts
  • Copyright
  • Privacy Policy
  • Site Map
Edit