Review of State-of-the-Art in Deep Learning Artificial Intelligence
- Авторы: Shakirov V.V.1,2, Solovyeva K.P.1,2, Dunin-Barkowski W.L.1,2
-
Учреждения:
- Scientific Research Institute of System Analysis
- Moscow Institute of Physics and Technology
- Выпуск: Том 27, № 2 (2018)
- Страницы: 65-80
- Раздел: Article
- URL: https://journals.rcsi.science/1060-992X/article/view/195069
- DOI: https://doi.org/10.3103/S1060992X18020066
- ID: 195069
Цитировать
Аннотация
The current state-of-the-art in Deep Learning (DL) based artificial intelligence (AI) is reviewed. A special emphasis is made to compare the level of a concrete AI system with human abilities to show what remains to be done to achieve human level AI. Several estimates are proposed for comparison of the current “intellectual level” of AI systems with the human level. Among them is relation of Shannon’s estimate for lower bound on human word perplexity to recent progress in natural language AI modeling. Relations between the operation of DL constructions and principles of live neural information processing are discussed. The problem of AI risks and benefits is also reviewed based on arguments from both sides.
Об авторах
V. Shakirov
Scientific Research Institute of System Analysis; Moscow Institute of Physics and Technology
Email: wldbar@gmail.com
Россия, Moscow; Moscow
K. Solovyeva
Scientific Research Institute of System Analysis; Moscow Institute of Physics and Technology
Email: wldbar@gmail.com
Россия, Moscow; Moscow
W. Dunin-Barkowski
Scientific Research Institute of System Analysis; Moscow Institute of Physics and Technology
Автор, ответственный за переписку.
Email: wldbar@gmail.com
Россия, Moscow; Moscow
Дополнительные файлы
