Back to Search Start Over

Quantum Go Machine

Authors :
Qiao, Lu-Feng
Gao, Jun
Jiao, Zhi-Qiang
Zhang, Zhe-Yong
Cao, Zhu
Ren, Ruo-Jing
Zhang, Chao-Ni
Hu, Cheng-Qiu
Xu, Xiao-Yun
Tang, Hao
Ma, Zhi-Hao
Jin, Xian-Min
Publication Year :
2020

Abstract

Go has long been considered as a testbed for artificial intelligence. By introducing certain quantum features, such as superposition and collapse of wavefunction, we experimentally demonstrate a quantum version of Go by using correlated photon pairs entangled in polarization degree of freedom. The total dimension of Hilbert space of the generated states grows exponentially as two players take turns to place the stones in time series. As nondeterministic and imperfect information games are more difficult to solve using nowadays technology, we excitedly find that the inherent randomness in quantum physics can bring the game nondeterministic trait, which does not exist in the classical counterpart. Some quantum resources, like coherence or entanglement, can also be encoded to represent the state of quantum stones. Adjusting the quantum resource may vary the average imperfect information (as comparison classical Go is a perfect information game) of a single game. We further verify its non-deterministic feature by showing the unpredictability of the time series data obtained from different classes of quantum state. Finally, by comparing quantum Go with a few typical games that are widely studied in artificial intelligence, we find that quantum Go can cover a wide range of game difficulties rather than a single point. Our results establish a paradigm of inventing new games with quantum-enabled difficulties by harnessing inherent quantum features and resources, and provide a versatile platform for the test of new algorithms to both classical and quantum machine learning.<br />Comment: 16 pages, 5 figures, 3 extended data figures, 3 supplementary figures

Subjects

Subjects :
Quantum Physics
Physics - Optics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2007.12186
Document Type :
Working Paper