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July 9, 2026
HSE Economists Use Search Queries to Forecast Birth Rates
Researchers from the HSE Faculty of Economic Sciences have shown that the accuracy of birth rate forecasts for Russia can be improved by almost 50% by incorporating the dynamics of online search queries related to pregnancy and childbirth into forecasting models. In the best-performing models, the forecasting error fell from 4.6% to 3.2%. The findings have been published in Populations and Economics.
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?

Going Beyond LoRA Fine-Tuning with Hebb Learning: Blazingly Fast and Accurate

P. 2426–2433.
Demidovskij A., Igor Salnikov, Olga Frolova, Aleksei Trutnev, Artyom Tugaryov, Ignatiev Y., Vasilisa Blyudova, Egor Zharikov, Irina Novikova

Modern Multimodal Large Language Models have increased demands on computational resources required for both pretraining and fine-tuning procedures. This challenge is primarily attributed to the backpropagation step because the computation of gradients is time-consuming and memory-intensive. This paper aims to alleviate the presented issues, and introduces novel fine-tuning strategy. Low-Rank Adaptation with Hebb Rapid Optimization (LoRA-HeRO) effectively combines the gradient-based method of LoRA fine-tuning with a local learning rule. An extra feature of the proposed algorithm is weight importance analysis, that identifies Transformer blocks for vanilla LoRA update. Additionally, it is possible to perform the analysis of model convergence during the fine-tuning process. LoRA-HeRO achieves lossless fine-tuning acceleration for InternVL-1B model by up to 48% and StableDiffusionV1-4 fine-tuning acceleration by 50% compared to conventional LoRA fine-tuning.

Language: English
DOI
Text on another site
Keywords: ARTIFICIAL NEURAL NETWORKSlocalized learningfine-tuning acceleration

In book

Frontiers in Artificial Intelligence and Applications: 28th European Conference on Artificial Intelligence, 25-30 October 2025, Bologna, Italy
Vol. 413. , IOS Press Ebooks, 2025.
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