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arxiv: 0911.1393 · v5 · pith:3GIW3H2Pnew · submitted 2009-11-07 · 💻 cs.CC · cs.NA· math.NA

Most tensor problems are NP-hard

classification 💻 cs.CC cs.NAmath.NA
keywords tensorproblemsnp-harddecidingdeterminingeigenvaluelinearnorm
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We prove that multilinear (tensor) analogues of many efficiently computable problems in numerical linear algebra are NP-hard. Our list here includes: determining the feasibility of a system of bilinear equations, deciding whether a 3-tensor possesses a given eigenvalue, singular value, or spectral norm; approximating an eigenvalue, eigenvector, singular vector, or the spectral norm; and determining the rank or best rank-1 approximation of a 3-tensor. Furthermore, we show that restricting these problems to symmetric tensors does not alleviate their NP-hardness. We also explain how deciding nonnegative definiteness of a symmetric 4-tensor is NP-hard and how computing the combinatorial hyperdeterminant of a 4-tensor is NP-, #P-, and VNP-hard. We shall argue that our results provide another view of the boundary separating the computational tractability of linear/convex problems from the intractability of nonlinear/nonconvex ones.

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