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Subject
News
May 15, 2026
Preserving Rationality in a Period of Turbulence
The HSE International Laboratory for Logic, Linguistics and Formal Philosophy studies logic and rationality in a transformed world characterised by a diversity of logical systems and rational agents. The laboratory supports and develops academic ties with Russian and international partners. The HSE News Service spoke with the head of the laboratory, Prof. Elena Dragalina-Chernaya, about its work.
May 15, 2026
‘All My Time Is Devoted to My Dissertation
Ilya Venediktov graduated from the Master’s programme at the HSE Tikhonov Moscow Institute of Electronics and Mathematics through the combined Master’s–PhD track and is currently studying at the HSE Doctoral School of Engineering Sciences. At present, he is undertaking a long-term research internship at the University of Science and Technology of China in Hefei, where he is preparing his dissertation. In this interview, he explains how an internship differs from an academic mobility programme, discusses his research topic, and describes the daily life of a Russian doctoral student in China.
May 15, 2026
‘What Matters Is Not What You Study, but Who You Study with
Katerina Koloskova began studying Arabic expecting to give it up after a year—now she cannot imagine her life without it. In an interview for the Young Scientists of HSE University project, she spoke about two translated books, an expedition to Socotra, and her love for Bethlehem.

 

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?

Research Papers Recommendation

P. 1–14.
Gerasimova O., Makarov I., Лапидус А. А.

The work is devoted to academic papers recommendation task considered as link prediction on a static citation network. We compare several graph embeddings, text-based and fusion models in the link prediction problem on academic papers citation dataset. We showed that fusion models of graph and text information outperform other approaches based on graph or text information alone. We prove this via an extensive set of experiments with different train/test splits that our fusion models are robust and retain superior performance even with a reduced train set.

Language: English
Full text
Keywords: рекомендательная системаcitation networkGraph Embeddingграфовые эмбеддингиrecommendation systemsграф цитирования
Publication based on the results of:
Синтез логических и статистических методов машинного обучения для междисциплинарных приложений (2021)

In book

Analysis of Images, Social Networks and Texts. 10th International Conference, AIST 2021, Tbilisi, Georgia, December 16–18, 2021, Revised Selected Papers
Cham: Springer, 2022.
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he article explores modern technologies employed in content recommendation systems (CRS) using Big Data. It examines data processing and analysis methods that significantly enhance the personalization of recommendations to meet individual needs. The advantages associated with the integration of artificial intelligence (AI) and machine learning (ML) into Big Data processing to improve CRS efficiency are ...
Added: March 10, 2025
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Graph neural networks (GNNs) have shown great promise in a variety of tasks involving graph data, including recommendation systems. However, as GNNs become more widely adopted in practical applications, concerns have arisen about their vulnerability to adversarial attacks. These attacks can lead to biased recommendations, potentially causing economic losses and safety risks. In this work, ...
Added: February 3, 2025
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The study discusses the integration of technological solutions based on social media data for vocational guidance in education. It focuses on educational guidance services like «Career Guidance Robot», «Wizard», and «IOT Navigator». The analysis explores reasons for unsuccessful launches of career guidance services, emphasizing the challenge of achieving sufficient prediction accuracy and its impact on ...
Added: September 9, 2024
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Graphs, such as social networks, emerge naturally from various real-world situations. Recently, graph embedding methods have gained traction in data science research. The graph and community embedding algorithm ComE aims to preserve first-, second- and higher-order proximity. ComE requires prior knowledge of the number of communities K. In this paper, ComE is extended to utilize ...
Added: December 6, 2022
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Added: November 18, 2022
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Graph visualization is an effective and efficient way to discover complex inter-connections between elements within the nested structure of data. To accomplish this type of representation machine learning algorithms use a technique called graph embedding and node embedding in particular. However, in this paper, we will compare well-known techniques to yet largely under-explored setting of ...
Added: January 19, 2022
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While the exchange of cross-border students in Europe has increased significantly in recent years, a growing number of these students face obstacles in selecting courses for exchange. This poster describes the first iteration of creating a course recommendation system for exchange students to select courses that fit their preferences. We implemented a combination of embedding ...
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Educational systems are in serious need of personalized platforms, that could help to build students’ multidisciplinary skills. A recommendation system focused on multidisciplinary learning objects could be a solution to the issue. Moscow electronic school repository is analyzed and patterns of its users’ behaviors are described. Those patterns are observed based on the character and ...
Added: November 23, 2020
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Added: November 16, 2019
iMetrics: the development of the discipline with many names
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Added: October 23, 2019
МАШИННОЕ ОБУЧЕНИЕ МОДЕЛИ ИНФОРМАЦИОННОЙ РЕКОМЕНДАТЕЛЬНОЙ СИСТЕМЫ ПО ВОПРОСАМ ИНДИВИДУАЛИЗАЦИИ ОБРАЗОВАНИЯ
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Added: September 30, 2019
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Added: January 21, 2019
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Added: October 19, 2018
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Development of linguistic technologies gave rise to a new type of tools for academic writing, which use natural language processing and heuristics to help authors write scientific papers. In our contribution we present a new function “advise a paper to read” and the way it could be implemented. We discuss a possibility of using different ...
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Makarov I., Gerasimova O., Sulimov P. et al., , in: Proceedings of Analysis of Images, Social Networks and Texts – 7th International Conference, AIST 2018, Moscow, Russia, July 5-7, 2018, Revised Selected Papers. Lecture Notes in Computer ScienceVol. 11179.: Berlin: Springer, 2018. P. 32–38.
Co-authorship networks contain invisible patterns of collaboration among researchers. The process of writing joint paper can depend of different factors, such as friendship, common interests, and policy of university. We show that, having a temporal co-authorship network, it is possible to predict future publications. We solve the problem of recommending collaborators from the point of ...
Added: September 5, 2018
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Lyadova L. N., Малькова К. М., Тимофеев М. В., В кн.: ТЕХНОЛОГИИ РАЗРАБОТКИ ИНФОРМАЦИОННЫХ СИСТЕМ (ТРИС-2017): Материалы VIII Международной научно-технической конференции.: Ростов н/Д: Южный федеральный университет, 2017. С. 98–108.
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Preobrazhenskaya A., В кн.: Русская филология. 27: Сборник научных работ молодых филологов.: Тарту: Tartu University Press, 2016. С. 25–35.
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Added: April 16, 2016
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