tensornoodl
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Provable Online CP/PARAF AC Decomposition of a Structured Tensor via Dictionary Learning
We consider the problem of factorizing a structured 3-way tensor into its constituent Canonical Polyadic (CP) factors. This decomposition, which can be viewed as a generalization of singular value decomposition (SVD) for tensors, reveals how the tensor dimensions (features) interact with each other. However, since the factors are a priori unknown, the corresponding optimization problems are inherently non-convex. The existing guaranteed algorithms which handle this non-convexity incur an irreducible error (bias), and only apply to cases where all factors have the same structure. To this end, we develop a provable algorithm for online structured tensor factorization, wherein one of the factors obeys some incoherence conditions, and the others are sparse. Specifically we show that, under some relatively mild conditions on initialization, rank, and sparsity, our algorithm recovers the factors exactly (up to scaling and permutation) at a linear rate. Complementary to our theoretical results, our synthetic and real-world data evaluations showcase superior performance compared to related techniques.
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85b42dd8aae56e01379be5736db5b496-AuthorFeedback.pdf
We would like to thank all the reviewers for their comprehensive reviews. We clarify the major comments below. As noted in Sec.6 (and suggested by As discussed in Sec.1, 1.1, 2-4, and Figure 1, TensorNOODL accomplishes Therefore, it seems that leveraging tensor structure may increase the computational complexity. Thank you for this insight. Further, TensorNOODL requires the initial dictionary estimate to follow A.2. for exact recovery at a linear Initializations which do not meet these conditions may still converge, albeit not at a linear rate.
Provable Online CP/PARAFAC Decomposition of a Structured Tensor via Dictionary Learning
Rambhatla, Sirisha, Li, Xingguo, Haupt, Jarvis
We consider the problem of factorizing a structured 3-way tensor into its constituent Canonical Polyadic (CP) factors. This decomposition, which can be viewed as a generalization of singular value decomposition (SVD) for tensors, reveals how the tensor dimensions (features) interact with each other. However, since the factors are a priori unknown, the corresponding optimization problems are inherently non-convex. The existing guaranteed algorithms which handle this non-convexity incur an irreducible error (bias), and only apply to cases where all factors have the same structure. To this end, we develop a provable algorithm for online structured tensor factorization, wherein one of the factors obeys some incoherence conditions, and the others are sparse. Specifically we show that, under some relatively mild conditions on initialization, rank, and sparsity, our algorithm recovers the factors exactly (up to scaling and permutation) at a linear rate. Complementary to our theoretical results, our synthetic and real-world data evaluations showcase superior performance compared to related techniques. Moreover, its scalability and ability to learn on-the-fly makes it suitable for real-world tasks.
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