Publication | Open Access
Estimation of effective temperatures in quantum annealers for sampling applications: A case study with possible applications in deep learning
210
Citations
41
References
2016
Year
EngineeringMachine LearningQuantum SensingQuantum AnnealerQuantum ComputingData ScienceQuantum Optimization AlgorithmQuantum Machine LearningQuantum SimulationEmbedded Machine LearningThermodynamicsQuantum SciencePhysicsEffective TemperaturesQuantum AlgorithmComputer ScienceDeep LearningQuantum AnnealersQuantum Devices
An increase in the efficiency of sampling from Boltzmann distributions would have a significant impact on deep learning and other machine-learning applications. Recently, quantum annealers have been proposed as a potential candidate to speed up this task, but several limitations still bar these state-of-the-art technologies from being used effectively. One of the main limitations is that, while the device may indeed sample from a Boltzmann-like distribution, quantum dynamical arguments suggest it will do so with an instance-dependent effective temperature, different from its physical temperature. Unless this unknown temperature can be unveiled, it might not be possible to effectively use a quantum annealer for Boltzmann sampling. In this work, we propose a strategy to overcome this challenge with a simple effective-temperature estimation algorithm. We provide a systematic study assessing the impact of the effective temperatures in the learning of a special class of a restricted Boltzmann machine embedded on quantum hardware, which can serve as a building block for deep-learning architectures. We also provide a comparison to $k$-step contrastive divergence (CD-$k$) with $k$ up to 100. Although assuming a suitable fixed effective temperature also allows us to outperform one-step contrastive divergence (CD-1), only when using an instance-dependent effective temperature do we find a performance close to that of CD-100 for the case studied here.
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