Quantum Speedup for Active Learning Agents
Abstract
Can quantum mechanics help us build intelligent learning agents? A defining signature of intelligent behavior is the capacity to learn from experience. However, a major bottleneck for agents to learn in real-life situations is the size and complexity of the corresponding task environment. Even in a moderately realistic environment, it may simply take too long to rationally respond to a given situation. If the environment is impatient, allowing only a certain time for a response, an agent may then be unable to cope with the situation and to learn at all. Here, we show that quantum physics can help and provide a quadratic speedup for active learning as a genuine problem of artificial intelligence. This result will be particularly relevant for applications involving complex task environments.
- Publication:
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Physical Review X
- Pub Date:
- July 2014
- DOI:
- Bibcode:
- 2014PhRvX...4c1002P
- Keywords:
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- 03.67.Ac;
- 03.67.Lx;
- 07.05.Mh;
- Quantum algorithms protocols and simulations;
- Quantum computation;
- Neural networks fuzzy logic artificial intelligence