EVOTS: Evolutionary Transformer Search for Time Series Forecasting
arXiv:2607.00154v1 Announce Type: new Abstract: Evolutionary neural architecture design for multivariate time-series forecasting remains underexplored, with most approaches relying on fixed Transformer architectures despite substantial variation across tasks and forecasting settings. This paper introduces an evolutionary neural architecture search framework for discovering task-adaptive Transformer-like models for time-series forecasting (EVOTS). Architectures are encoded using a modular genome ...
arXiv cs.LG
·AbdElRahman ElSaid, Damir Pulatov
·
// relacionados
Leia também
Editorial
Claude Sonnet 5: a Anthropic aposta que o modelo do meio faz o trabalho do topo
Blog
Google’s AI buildout drove 37% increase in electricity use in 2025
Blog
OpenAI reportedly offers the Trump administration a five percent stake in the company
Blog