Learning with Optimized Random Features - Hayata Yamasaki (AQIS 2020)
Автор: Hayata Yamasaki
Загружено: 2020-12-03
Просмотров: 153
Описание:
Learning with Optimized Random Features: Exponential Speedup by Quantum Machine Learning without Sparsity and Low-Rank Assumptions
Hayata Yamasaki, Sathyawageeswar Subramanian, Sho Sonoda, Masato Koashi
https://arxiv.org/abs/2004.10756
https://proceedings.neurips.cc/paper/...
Contributed talk at AQIS 2020
http://aqis-conf.org/2020/accepted-pa...
Kernel methods augmented with random features give scalable algorithms for learning from big data. But it has been computationally hard to sample random features according to a probability distribution that is optimized for the data, so as to minimize the required number of features for achieving the learning to a desired accuracy. Here, we develop a quantum algorithm for sampling from this optimized distribution over features, in runtime O(D) that is linear in the dimension D of the input data. Our algorithm achieves an exponential speedup in D compared to any known classical algorithm for this sampling task. In contrast to existing quantum machine learning algorithms, our algorithm circumvents sparsity and low-rank assumptions and thus has wide applicability. We also show that the sampled features can be combined with regression by stochastic gradient descent to achieve the learning without canceling out our exponential speedup. Our algorithm based on sampling optimized random features leads to an accelerated framework for machine learning that takes advantage of quantum computers.
If you have any question, feel free to email me (Hayata Yamasaki)!
Also on SNS.
/ hayatayamasaki
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