We present a technique for optimizing hundreds of thousands of variational parameters in variational quantum Monte Carlo. By introducing iterative Krylov subspace solvers and by multiplying by the Hamiltonian and overlap matrices as they are sampled, we remove the need to construct and store these matrices and thus bypass the most expensive steps of the stochastic reconfiguration and linear method optimization techniques. We demonstrate the effectiveness of this approach by using stochastic reconfiguration to optimize a correlator product state wave function with a Pfaffian reference for four example systems. In two examples on the two dimensional Fermionic Hubbard model, we study 16 and 64 site lattices, recovering energies accurate to 1% ...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We show that the standard Lanczos algorithm can be efficiently implemented statistically and self-co...
Optimization of wave functions in quantum Monte Carlo is a difficult task because the statistical u...
After reviewing previously published techniques, a new algorithm is presented for optimising variabl...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We show that the formalism of tensor-network states, such as the matrix-product states (MPS), can be...
mVMC (many-variable Variational Monte Carlo) is an open-source software based on the variational Mon...
mVMC (many-variable Variational Monte Carlo) is an open-source software based on the variational Mon...
We analyze the accuracy and sample complexity of variational Monte Carlo approaches to simulate the ...
We present a new method for the optimization of large configuration interaction (CI) expansions in t...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We study three wave function optimization methods based on energy minimization in a variational Mont...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We show that the standard Lanczos algorithm can be efficiently implemented statistically and self-co...
Optimization of wave functions in quantum Monte Carlo is a difficult task because the statistical u...
After reviewing previously published techniques, a new algorithm is presented for optimising variabl...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We present a modification to variational Monte Carlo's linear method optimization scheme that addres...
We show that the formalism of tensor-network states, such as the matrix-product states (MPS), can be...
mVMC (many-variable Variational Monte Carlo) is an open-source software based on the variational Mon...
mVMC (many-variable Variational Monte Carlo) is an open-source software based on the variational Mon...
We analyze the accuracy and sample complexity of variational Monte Carlo approaches to simulate the ...
We present a new method for the optimization of large configuration interaction (CI) expansions in t...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We study three wave function optimization methods based on energy minimization in a variational Mont...
We investigate the use of variational wave functions that mimic stochastic recurrent neural networks...
We show that the standard Lanczos algorithm can be efficiently implemented statistically and self-co...
Optimization of wave functions in quantum Monte Carlo is a difficult task because the statistical u...