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AI tracks a beating heart's function over time 期刊论文
NATURE, 2020, 580 (7802)
作者:  Ball, Philip
收藏  |  浏览/下载:8/0  |  提交时间:2020/07/03

Clinicians use ultrasound videos of heartbeats to assess subtle changes in the heart'  s pumping function. A method that uses artificial intelligence might simplify these complex assessments when heartbeats are out of rhythm.


  
A distributional code for value in dopamine-based reinforcement learning 期刊论文
NATURE, 2020, 577 (7792) : 671-+
作者:  House, Robert A.;  Maitra, Urmimala;  Perez-Osorio, Miguel A.;  Lozano, Juan G.;  Jin, Liyu;  Somerville, James W.;  Duda, Laurent C.;  Nag, Abhishek;  Walters, Andrew;  Zhou, Ke-Jin;  Roberts, Matthew R.;  Bruce, Peter G.
收藏  |  浏览/下载:61/0  |  提交时间:2020/07/03

Since its introduction, the reward prediction error theory of dopamine has explained a wealth of empirical phenomena, providing a unifying framework for understanding the representation of reward and value in the brain(1-3). According to the now canonical theory, reward predictions are represented as a single scalar quantity, which supports learning about the expectation, or mean, of stochastic outcomes. Here we propose an account of dopamine-based reinforcement learning inspired by recent artificial intelligence research on distributional reinforcement learning(4-6). We hypothesized that the brain represents possible future rewards not as a single mean, but instead as a probability distribution, effectively representing multiple future outcomes simultaneously and in parallel. This idea implies a set of empirical predictions, which we tested using single-unit recordings from mouse ventral tegmental area. Our findings provide strong evidence for a neural realization of distributional reinforcement learning.


Analyses of single-cell recordings from mouse ventral tegmental area are consistent with a model of reinforcement learning in which the brain represents possible future rewards not as a single mean of stochastic outcomes, as in the canonical model, but instead as a probability distribution.


  
Deep learning takes on tumours 期刊论文
NATURE, 2020, 580 (7804) : 551-553
作者:  Dance, Amber
收藏  |  浏览/下载:0/0  |  提交时间:2020/07/03

Artificial-intelligence methods are moving into cancer research.


Artificial-intelligence methods are moving into cancer research.


  
Human-level performance in 3D multiplayer games with population-based reinforcement learning 期刊论文
SCIENCE, 2019, 364 (6443) : 859-+
作者:  Jaderberg, Max;  Czarnecki, Wojciech M.;  Dunning, Iain;  Marris, Luke;  Lever, Guy;  Castaneda, Antonio Garcia;  Beattie, Charles;  Rabinowitz, Neil C.;  Morcos, Ari S.;  Ruderman, Avraham;  Sonnerat, Nicolas;  Green, Tim;  Deason, Louise;  Leibo, Joel Z.;  Silver, David;  Hassabis, Demis;  Kavukcuoglu, Koray;  Graepel, Thore
收藏  |  浏览/下载:9/0  |  提交时间:2019/11/27
A role for optics in AI hardware 期刊论文
NATURE, 2019, 569 (7755) : 199-200
作者:  Burr, Geoffrey W.
收藏  |  浏览/下载:0/0  |  提交时间:2019/11/27
Using neuroscience to develop artificial intelligence 期刊论文
SCIENCE, 2019, 363 (6428) : 692-693
作者:  Ullman, Shimon
收藏  |  浏览/下载:0/0  |  提交时间:2019/11/27
How AI can be a force for good 期刊论文
SCIENCE, 2018, 361 (6404) : 751-752
作者:  Taddeo, Mariarosaria;  Floridi, Luciano
收藏  |  浏览/下载:6/0  |  提交时间:2019/11/27
Life 3.0: Being Human in the Age of Artificial Intelligence 期刊论文
NATURE, 2017, 548 (7669) : 520-521
作者:  Russell, Stuart
收藏  |  浏览/下载:0/0  |  提交时间:2019/11/27
ARTIFICIAL INTELLIGENCE A social spin on language analysis 期刊论文
NATURE, 2017, 545 (7653) : 166-167
作者:  Rose, Carolyn Penstein
收藏  |  浏览/下载:0/0  |  提交时间:2019/11/27
Semantics derived automatically from language corpora contain human-like biases 期刊论文
SCIENCE, 2017, 356 (6334) : 183-186
作者:  Caliskan, Aylin;  Bryson, Joanna J.;  Narayanan, Arvind
收藏  |  浏览/下载:5/0  |  提交时间:2019/11/27