We compare discrete-time quantum walks on graphs to their natural classical equivalents, which we argue are lifted Markov chains (LMCs), that is, classical Markov chains with added memory. We show that LMCs can simulate the mixing behavior of any quantum walk, under a commonly satisfied invariance condition. This allows us to answer an open question on how the graph topology ultimately bounds a quantum walk's mixing performance, and that of any stochastic local evolution. The results highlight that speedups in mixing and transport phenomena are not necessarily diagnostic of quantum effects, although superdiffusive spreading is more prominent with quantum walks. The general simulating LMC construction may lead to large memory, yet we show th...
Markov chain methods are remarkably successful in computational physics, machine learning, and combi...
Random walks are fundamental models of stochastic processes with applications in various fields, inc...
In this paper we isolate the combinatorial property responsible (at least in part) for the computati...
We compare discrete-time quantum walks on graphs to their natural classical equivalents, which we ar...
International audienceQuantum walks have been linked to acceleration in various information processi...
We introduce a new tool for quantum algorithms called quantum fast-forwarding (QFF). The tool uses q...
We introduce a new tool for quantum algorithms called quantum fast-forwarding (QFF). The tool uses q...
The exponential speed-up of quantum walks on certain graphs, relative to classical particles diffusi...
Since the appearance of Shor's factoring algorithm in 1994, the search for novel quantum computer al...
The problem of sampling from the stationary distribution of a Markov chain finds widespread applicat...
International audienceA new model of quantum random walks is introduced, on lattices as well as on n...
Funding Information: The authors acknowledge the Academy of Finland for support (Grant No. 331094). ...
International audienceThe convergence time of a random walk on a graph towards its stationary distri...
For a continuous-time quantum walk on a line the variance of the position observable grows quadratic...
Quantum versions of random walks on the line and the cycle show a quadratic improvement over classic...
Markov chain methods are remarkably successful in computational physics, machine learning, and combi...
Random walks are fundamental models of stochastic processes with applications in various fields, inc...
In this paper we isolate the combinatorial property responsible (at least in part) for the computati...
We compare discrete-time quantum walks on graphs to their natural classical equivalents, which we ar...
International audienceQuantum walks have been linked to acceleration in various information processi...
We introduce a new tool for quantum algorithms called quantum fast-forwarding (QFF). The tool uses q...
We introduce a new tool for quantum algorithms called quantum fast-forwarding (QFF). The tool uses q...
The exponential speed-up of quantum walks on certain graphs, relative to classical particles diffusi...
Since the appearance of Shor's factoring algorithm in 1994, the search for novel quantum computer al...
The problem of sampling from the stationary distribution of a Markov chain finds widespread applicat...
International audienceA new model of quantum random walks is introduced, on lattices as well as on n...
Funding Information: The authors acknowledge the Academy of Finland for support (Grant No. 331094). ...
International audienceThe convergence time of a random walk on a graph towards its stationary distri...
For a continuous-time quantum walk on a line the variance of the position observable grows quadratic...
Quantum versions of random walks on the line and the cycle show a quadratic improvement over classic...
Markov chain methods are remarkably successful in computational physics, machine learning, and combi...
Random walks are fundamental models of stochastic processes with applications in various fields, inc...
In this paper we isolate the combinatorial property responsible (at least in part) for the computati...