GTT: Guiding the Tensor Train Decomposition

The demand for searching, querying multimedia data such as image, video and audio is omnipresent, how to effectively access data for various applications is a critical task. Nevertheless, these data usually are encoded as multi-dimensional arrays, or Tensor, and traditional data mining techniques mi...

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Bibliographic Details
Published inLecture notes in computer science Vol. 12440; pp. 187 - 202
Main Authors Li, Mao-Lin, Candan, K. Selçuk, Sapino, Maria Luisa
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2020
Springer International Publishing
SeriesLecture Notes in Computer Science
Subjects
Online AccessGet full text
ISBN3030609359
9783030609351
ISSN0302-9743
1611-3349
1611-3349
DOI10.1007/978-3-030-60936-8_15

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Summary:The demand for searching, querying multimedia data such as image, video and audio is omnipresent, how to effectively access data for various applications is a critical task. Nevertheless, these data usually are encoded as multi-dimensional arrays, or Tensor, and traditional data mining techniques might be limited due to the curse of dimensionality. Tensor decomposition is proposed to alleviate this issue, commonly used tensor decomposition algorithms include CP-decomposition (which seeks a diagonal core) and Tucker-decomposition (which seeks a dense core). Naturally, Tucker maintains more information, but due to the denseness of the core, it also is subject to exponential memory growth with the number of tensor modes. Tensor train (TT) decomposition addresses this problem by seeking a sequence of three-mode cores: but unfortunately, currently, there are no guidelines to select the decomposition sequence. In this paper, we propose a GTT method for guiding the tensor train in selecting the decomposition sequence. GTT leverages the data characteristics (including number of modes, length of the individual modes, density, distribution of mutual information, and distribution of entropy) as well as the target decomposition rank to pick a decomposition order that will preserve information. Experiments with various data sets demonstrate that GTT effectively guides the TT-decomposition process towards decomposition sequences that better preserve accuracy.
Bibliography:This work has been supported by: NSF grants #1633381, #1909555, #1629888, #2026860, #1827757, DOD grant W81XWH-19-1-0514, a DOE CYDRES grant, and a European Commission grant #690817. Experiments for the paper were conducted using NSF testbed: “Chameleon: A Large-Scale Re-configurable Experimental Environment for Cloud Research”.
ISBN:3030609359
9783030609351
ISSN:0302-9743
1611-3349
1611-3349
DOI:10.1007/978-3-030-60936-8_15