• A
  • A
  • A
  • АБВ
  • АБВ
  • АБВ
  • A
  • A
  • A
  • A
  • A
Обычная версия сайта
  • RU
  • EN
  • HSE University
  • Publications
  • Book chapter
  • Truth-O-Meter: Handling Multiple Inconsistent Sources Repairing LLM Hallucinations
  • 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
June 5, 2026
Neural Network Maps as a Method for Constructing Mathematical Models
Scientists from HSE University–Nizhny Novgorod and the Institute of Physics Belgrade, Serbia, are jointly exploring the application of machine learning techniques and neural networks to the study of nonlinear dynamics. Natalya Stankevich, Leading Research Fellow at the Laboratory of Topological Methods in Dynamics of the Faculty of Informatics, Mathematics, and Computer Science at HSE University–Nizhny Novgorod, spoke to the HSE News Service about this international project.
June 5, 2026
‘In the Age of Technology, It Is Interesting to Look into the Past and Think about What We Can Take from It
Polina Tabakova decided to apply for a Philology degree at HSE in Nizhny Novgorod because she grew up in Mari El and did not want to move far away from the Russian forests. In an interview for the Young Scientists of HSE University project, she spoke about the genre of the campus novel, the existential drama of Kolobok, and a blackout version of Eugene Onegin.
June 5, 2026
HSE Scientists Develop Method to Compress Large Language Models Without Losing Quality
Researchers from the AI and Digital Science Institute at the HSE Faculty of Computer Science have developed a new compression method for large language models such as GPT and LLaMA that reduces their size by 25–36% without additional training or significant loss of accuracy. This is the first approach to use mathematical transformations—specifically, rotations of model weights—to make models more amenable to compression with structured matrices. The study results have been published in ACL Findings 2025. The code is available on GitHub.

 

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

?

Truth-O-Meter: Handling Multiple Inconsistent Sources Repairing LLM Hallucinations

P. 2817–2821.
Galitsky B., Chernyavskiy A., Ilvovsky D.

Large Language Models (LLM) often produce text with incorrect facts and hallucinations. To address this issue, we developed a fact-checking system Truth-O-Meter which verifies LLM results on the Internet and other sources of information to detect wrong claims/facts and proposes corrections for them. NLP and reasoning techniques such as Abstract Meaning Representation and syntactic alignment are applied to match hallucinating sentences with truthful ones. To handle inconsistent sources while fact-checking, we rely on argumentation analysis in the form of defeasible logic programming, selecting the most authoritative source. Our evaluation shows that LLM content can be substantially improved for factual correctness and meaningfulness on an industrial scale.

Language: English
DOI
Text on another site
Keywords: fact-checkingHallucinations detectionevidence retrievalLLMs
Publication based on the results of:
Building knowledge systems and data analysis based on textual information (2024)

In book

SIGIR '24: Proceedings of the 47th International ACM SIGIR Conference on Research and Development in Information Retrieval
Association for Computing Machinery (ACM), 2024.
Similar publications
Тактики противостояния фейковой информации и факторы проведения фактчекинга в России
Kuzina L., Popov E., Мониторинг общественного мнения: Экономические и социальные перемены 2026 № 2 С. 170–191
The article examines internet users' tactics for verifying false (fake) information and the factors associated with fact-checking. Working within the framework of the theory of prosumerism and everyday tactics (Michel de Certeau), the authors of the study aim at identifying and describing the arsenal of fact-checking tactics used by the Russian internet audience, and to ...
Added: May 16, 2026
RuCLEVR: A Russian Diagnostic Dataset for Compositional Language and Elementary Visual Reasoning
Biryukova K., Chelnokova D., Erkenova J. et al., Communications in Computer and Information Science 2024 Vol. 2364 CCIS P. 109 – 121
Added: February 25, 2026
Mechanistic Permutability: Match Features Across Layers
Balagansky N., Maximov I., Gavrilov D., , in: Proceedings of the 13th International Conference on Learning Representations (ICLR 2025).: ICLR, 2025. P. 57940–57957.
Understanding how features evolve across layers in deep neural networks is a fundamental challenge in mechanistic interpretability, particularly due to polysemanticity and feature superposition. While Sparse Autoencoders (SAEs) have been used to extract interpretable features from individual layers, aligning these features across layers has remained an open problem. In this paper, we introduce SAE Match, ...
Added: February 25, 2026
Применение больших языковых моделей для анализа ценностно-патриотического дискурса русскоязычных пользователей
Balakina Y. V., Григорьева М. В., Соколова Е. Н., Вестник Российского фонда фундаментальных исследований. Гуманитарные и общественные науки 2025 Т. 123 № 4 С. 56–69
The article examines the potential of large language models (LLMs) for automated analysis of value-laden and patriotic discourse in Russian-language social media. Using a corpus of posts from VK, Odnoklassniki and Telegram (2023–2025), it investigates the extent to which automatic coding results align with expert annotation based on a specially developed categorical scheme. The codebook ...
Added: November 26, 2025
Cultural Evaluation of LLMs in Russian: Catchphrases and Cultural Types
Громенко Е. С., Калачева Д. С., Klokova K. et al., , in: Компьютерная лингвистика и интеллектуальные технологии: по материалам ежегодной международной конференции «Диалог» (2025).: [б.и.], 2025.
This study addresses the gap in evaluating large language models' (LLMs) cultural awareness and alignment within the Russian sociocultural context by introducing a structured framework comprising 8 Cultural Types (e.g., Spiritual Practitioner, Soviet Intellectual) and 5 catchphrase groups (e.g., memes, proverbs). A 400-question evalua tion dataset was developed to probe 10 multilingual LLMs, including GPT-4o, ...
Added: May 10, 2025
Aschern at CheckThat! 2021: Lambda-Calculus of Fact-Checked Claims
Chernyavskiy A., Ilvovsky D., Nakov P., , in: CLEF 2021 Working Notes.: CEUR Workshop Proceedings, 2021. P. 484–493.
We describe our system for the CLEF 2021 CheckThat! Lab Task 2 Subtask A on detecting previously fact-checked claims. We developed a pipeline using TF.IDF, sentence-BERT fine-tuned on the training data, and reranking using LambdaMART and the predicted similarity scores and positions in the ranked list as features. We examined the quality of each model ...
Added: May 9, 2024
CrowdChecked: Detecting Previously Fact-Checked Claims in Social Media
Hardalov M., Chernyavskiy A., Koychev I. et al., , in: Proceedings of the 2nd Conference of the Asia-Pacific Chapter of the Association for Computational Linguistics and the 12th International Joint Conference on Natural Language Processing (Volume 1: Long Papers).: Association for Computational Linguistics, 2022. P. 266–285.
While there has been substantial progress in developing systems to automate fact-checking, they still lack credibility in the eyes of the users. Thus, an interesting approach has emerged: to perform automatic fact-checking by verifying whether an input claim has been previously fact-checked by professional fact-checkers and to return back an article that explains their decision. ...
Added: May 21, 2023
К вопросу об исследовании спорных истин в американском политическом дискурсе
Казаков И. В., В кн.: Апрельские тезисы: материалы междисциплинарной научно-исследовательской конференции (г. Пермь, 2–3 апреля 2021 г.).: Пермь: Пермский государственный национальный исследовательский университет, 2021. С. 129–135.
Because of growing public concerns about the quality of the information presented by various entities as factual, the practice of fact-checking has spread in the United States. Fact-checking has had a limited effect because its methodology ignores the performative functions of  political text. The article proposes to apply a post-structuralist discursive historical approach to answer to ...
Added: May 17, 2022
Recursive Neural Text Classification Using Discourse Tree Structure for Argumentation Mining and Sentiment Analysis Tasks
Chernyavskiy A., Ilvovsky D., , in: Foundations of Intelligent Systems. 25th International Symposium on Methodologies for Intelligent Systems: ISMIS 2020Vol. 12117.: Springer, 2020. P. 90–101.
This paper considers sentiment classification of movie reviews and two argument mining tasks: verification of political statements and categorization of quotes from an Internet forum corresponding to argumentation (factual or emotional). In the case of the fact-checking problem, justifications can be used additionally in one of its sub-tasks. A strong model for solving these and ...
Added: October 4, 2020
  • 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