Contracting tensor networks is often computationally demanding. Well-designed contraction sequences can dramatically reduce the contraction cost. We explore the performance of simulated annealing and genetic algorithms, two common discrete optimization techniques, to this ordering problem. We benchmark their performance as well as that of the commonly-used greedy search on physically relevant tensor networks. Where computationally feasible, we also compare them with the optimal contraction sequence obtained by an exhaustive search. Furthermore, we present a systematic comparison with state-of-the-art tree decomposition and graph partitioning algorithms in the context of random regular graph tensor networks. We find that the algorithms we co...
Tensor networks have been an important concept and technique in many research areas, such as quantum...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Modern applications in engineering and data science are increasingly based on multidimensional data ...
Tensor network contraction is central to problems ranging from many-body physics to computer science...
The computational cost of contracting a tensor network depends on the sequence of contractions, but ...
The computational cost of contracting a tensor network depends on the sequence of contractions, but ...
Tensor networks are powerful factorization techniques which reduce resource requirements for numeric...
For each tensor network, the number of tensors (|V|), edges (|E|), and optimal contraction complexit...
Tensor networks represent the state-of-the-art in computational methods across many disciplines, inc...
We present a conceptually clear and algorithmically useful framework for parameterizing the costs of...
Abstract—Tensor decompositions and tensor networks are emerging and promising tools for data analysi...
The efficient evaluation of tensor expressions involving sums over multiple indices is of significan...
The efficient evaluation of tensor expressions involving sums over multiple indices is of significan...
The number of edges (or wires) connecting to a tensor is equal to that tensor’s rank. When an index ...
Classical simulation of quantum computation is necessary for studying the numerical behavior of quan...
Tensor networks have been an important concept and technique in many research areas, such as quantum...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Modern applications in engineering and data science are increasingly based on multidimensional data ...
Tensor network contraction is central to problems ranging from many-body physics to computer science...
The computational cost of contracting a tensor network depends on the sequence of contractions, but ...
The computational cost of contracting a tensor network depends on the sequence of contractions, but ...
Tensor networks are powerful factorization techniques which reduce resource requirements for numeric...
For each tensor network, the number of tensors (|V|), edges (|E|), and optimal contraction complexit...
Tensor networks represent the state-of-the-art in computational methods across many disciplines, inc...
We present a conceptually clear and algorithmically useful framework for parameterizing the costs of...
Abstract—Tensor decompositions and tensor networks are emerging and promising tools for data analysi...
The efficient evaluation of tensor expressions involving sums over multiple indices is of significan...
The efficient evaluation of tensor expressions involving sums over multiple indices is of significan...
The number of edges (or wires) connecting to a tensor is equal to that tensor’s rank. When an index ...
Classical simulation of quantum computation is necessary for studying the numerical behavior of quan...
Tensor networks have been an important concept and technique in many research areas, such as quantum...
Tensor network is a fundamental mathematical tool with a huge range of applications in physics, such...
Modern applications in engineering and data science are increasingly based on multidimensional data ...