Publication | Open Access
Reformulation of the No-Free-Lunch Theorem for Entangled Datasets
62
Citations
56
References
2022
Year
Quantum ScienceQuantum SecurityEngineeringQuantum ComputingData ScienceQuantum Optimization AlgorithmAutomated ReasoningQuantum Machine LearningQuantum AlgorithmQuantum InformationNfl TheoremEntangled DatasetsComputer ScienceQuantum EntanglementAlgorithmic Information TheoryQuantum Nfl TheoremsQuantum AlgorithmsMeasurement Problem
The no-free-lunch (NFL) theorem is a celebrated result in learning theory that limits one's ability to learn a function with a training dataset. With the recent rise of quantum machine learning, it is natural to ask whether there is a quantum analog of the NFL theorem, which would restrict a quantum computer's ability to learn a unitary process with quantum training data. However, in the quantum setting, the training data can possess entanglement, a strong correlation with no classical analog. In this Letter, we show that entangled datasets lead to an apparent violation of the (classical) NFL theorem. This motivates a reformulation that accounts for the degree of entanglement in the training set. As our main result, we prove a quantum NFL theorem whereby the fundamental limit on the learnability of a unitary is reduced by entanglement. We employ Rigetti's quantum computer to test both the classical and quantum NFL theorems. Our Letter establishes that entanglement is a commodity in quantum machine learning.
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