Sequential minimum optimization algorithm with small sample size
estimators
- URL: http://arxiv.org/abs/2303.00992v1
- Date: Thu, 2 Mar 2023 06:02:46 GMT
- Title: Sequential minimum optimization algorithm with small sample size
estimators
- Authors: Wojciech Roga, Takafumi Ono, Masahiro Takeoka
- Abstract summary: Sequential minimum optimization is a machine-learning global search training algorithm.
We apply it to photonics circuits where the additional challenge appears: low frequency of coincidence events lowers the speed of the algorithm.
- Score: 0.06445605125467573
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Sequential minimum optimization is a machine-learning global search training
algorithm. It is applicable when the functional dependence of the cost function
on a tunable parameter given the other parameters can be cheaply determined.
This assumption is satisfied by quantum circuits built of known gates. We apply
it to photonics circuits where the additional challenge appears: low frequency
of coincidence events lowers the speed of the algorithm. We propose to modify
the algorithm such that small sample size estimators are enough to successfully
run the machine learning task. We demonstrate the effectiveness of the modified
algorithm applying it to a quantum optics classifier with data reuploading.
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