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Subject
News
June 19, 2026
HSE Researchers Determine Which Internet Users Are More Likely to Fact-Check
Researchers at HSE University examined the strategies employed by Russian internet users to verify unreliable information and the factors that motivate them to do so. The study found that more than half of users who encounter potentially false information online attempt to verify it by locating the original source. The likelihood of fact-checking is influenced by several factors, including age, place of residence, social status, information literacy skills, and the use of AI. The findings have been published in Monitoring of Public Opinion: Economic and Social Changes.
June 5, 2026
'Im Used to Producing Distilled Knowledge'
Ivan Rubachev works in a HSE University laboratory established jointly with Yandex Research, where he focuses on machine learning with tabular data. In this interview with the HSE Young Scientists project, he discusses why following a vibe can be better than goal-setting, explains the concept of the Neural Turing Machine, and argues why withholding scientific knowledge is counterproductive.
June 17, 2026
Population Lifespan Is Governed by Mathematical Laws
Researchers at HSE University and MSU have established a universal law governing the time to extinction of a population in a random environment. Their analysis of the evolution of branching processes—complex probabilistic systems—shows that, regardless of the initial population size, extinction follows strict mathematical laws. The results have been published in the Journal of Applied Probability.

 

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Enhancing Emotion Recognition in Speech Based on Self-Supervised Learning: Cross-Attention Fusion of Acoustic and Semantic Features

IEEE Access. 2026. Vol. 13. P. 56283–56295.
Deeb B., Andrey V. Savchenko, Makarov I.

Speech Emotion Recognition has gained considerable attention in speech processing and machine learning due to its potential applications in human-computer interaction, mental health monitoring, and customer service. However, state-of-the-art models for speech emotion recognition use many parameters, which leads to computational complexity. In this paper, we introduce a novel deep-learning model to enhance the accuracy of emotional content detection in speech signals while maintaining a lightweight architecture compared to state-of-the-art models. The proposed model incorporates a feature encoder that significantly improves the emotional representation of acoustic features and a cross-attention mechanism to fuse acoustic features, such as Spectrograms, with semantic features extracted from the pre-trained self-supervised learning framework, enriching the emotional representation of speech. An extensive experimental study demonstrates that the proposed model achieves a weighted accuracy of 74.6% on the IEMOCAP dataset, competitive with the state-of-the-art baselines. In addition, our proposed model achieves a latency of 24 milliseconds on moderate devices while containing up to three times fewer parameters.

Research target: Computer Science
Language: English
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Text on another site
Keywords: распознавание эмоцийspeech emotion recognitioncross-attention mechanismмеханизм внимания feature fusionобъединение признаков
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