Quantum Error Mitigation Driven by Classical Simulations and Evolution Equations
De Oleg Kaikov
Paradigms for the algorithms on different technologies - lecture 1
De Thomas Ayral
De Aram Harrow
Apparaît dans la collection : 2024 - PC2 - Random tensors and related topics
Given a vector v, what is the closest k-sparse vector? The answer to this question is usually that we should take the largest k entries of v. It turns out that we can do better with randomized approximations. When approximating pure bipartite entangled states with states of low Schmidt rank, this means that mixed approximations outperform pure approximations. This fact has application to classical algorithms for matrix product states by improving the truncation step, and to quantum algorithms for Hamiltonian simulation.