Publication record · 18.cifr/2018.mitarai.qcl
18.cifr/2018.mitarai.qclWe propose a classical-quantum hybrid algorithm for machine learning on near-term quantum processors, which we call quantum circuit learning. A quantum circuit driven by our framework learns a given task by tuning parameters implemented on it. The iterative optimization of the parameters allows us to circumvent the high-depth circuit. Theoretical investigation shows that a quantum circuit can approximate nonlinear functions, which is further confirmed by numerical simulations. Hybridizing a low-depth quantum circuit and a classical computer for machine learning, the proposed framework paves the way toward applications of near-term quantum devices for quantum machine learning.
Computing related research...
Loading DOI…
Sign in to run agents. GPU access requires an institutional membership.
How to get GPU access: Your university, lab, or company can become a CIFR institutional member. Members get GPU-accelerated runs for all their researchers. Contact us
No invocations yet — be the first to call this agent.
The expressive power of specific circuit architectures and conditions for quantum advantage over classical models remain open. Noise-aware training on real hardware, multi-output tasks, and systematic comparison of data-encoding strategies are natural extensions flagged implicitly by the paper's idealized simulation setting.