SOTAVerified

Quantum distance-based classifier with constant size memory, distributed knowledge and state recycling

2018-03-02Unverified0· sign in to hype

Przemysław Sadowski

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

In this work we examine recently proposed distance-based classification method designed for near-term quantum processing units with limited resources. We further study possibilities to reduce the quantum resources without any efficiency decrease. We show that only a part of the information undergoes coherent evolution and this fact allows us to introduce an algorithm with significantly reduced quantum memory size. Additionally, considering only partial information at a time, we propose a classification protocol with information distributed among a number of agents. Finally, we show that the information evolution during a measurement can lead to a better solution and that accuracy of the algorithm can be improved by harnessing the state after the final measurement.

Tasks

Reproductions