Within the last several years quantum machine learning (QML) has begun to mature; however,
many open questions remain. Rather than review open questions, in this perspective piece I will
discuss my view about how we should approach problems in QML. In particular I will list a series
of questions that I think we should ask ourselves when developing quantum algorithms for
machine learning. These questions focus on what the definition of quantum ML is, what is the
proper quantum analogue of QML algorithms is, how one should compare QML to traditional ML
and what fundamental limitations emerge when trying to build QML protocols. As an illustration
of this process I also provide information theoretic arguments that show that amplitude encoding
can require exponentially more queries to a quantum model to determine membership of a vector
in a concept class than classical bit-encodings would require; however, if the correct analogue is
chosen then both the quantum and classical complexities become polynomially equivalent. This
example underscores the importance of asking ourselves the right questions when developing and
benchmarking QML algorithms.
Published: March 7, 2025
Citation
Wiebe N.O. 2020.Key Questions for the Quantum Machine Learner to Ask Themselves.New Journal of Physics 22, no. 9:Article: 091001.PNNL-SA-165134.doi:10.1088/1367-2630/abac39