TY - JOUR
T1 - Modes of homogeneous gradient flows
AU - Cohen, Ido
AU - Azencot, Omri
AU - Lifshits, Pavel
AU - Gilboa, Guy
N1 - Funding Information:
\ast Received by the editors December 28, 2020; accepted for publication (in revised form) April 9, 2021; published electronically July 9, 2021. https://doi.org/10.1137/20M1388577 Funding: The work of the authors was supported by the European Union Horizon 2020 research and innovation program under Marie Sklodowska-Curie grant 777826 (NoMADS). The work of the fourth author was supported by Israel Science Foundation grant 534/19 and by the Ollendorff Minerva Center. \dagger Electrical Engineering Department at the Technion, Israel Institute of Technology, Haifa, 3200003 Israel (idoc@campus.technion.ac.il, pavel@ee.technion.ac.il, guy.gilboa@ee.technion.ac.il). \ddagger Department of Computer Science, Ben-Gurion University of the Negev, Beer Sheva, 8410501 Israel (azencot@ cs.bgu.ac.il).
Publisher Copyright:
© by SIAM. Unauthorized reproduction of this article is prohibited.
PY - 2021/1/1
Y1 - 2021/1/1
N2 - Finding latent structures in data is drawing increasing attention in diverse fields such as image and signal processing, fluid dynamics, and machine learning. In this work we examine the problem of finding the main modes of gradient flows. Gradient descent is a fundamental process in optimization where its stochastic version is prominent in training of neural networks. Here our aim is to establish a consistent theory for gradient flows ψt = P(ψ), where P is a nonlinear homogeneous operator. Our proposed framework stems from analytic solutions of homogeneous flows, previously formalized by Cohen and Gilboa, where the initial condition ψ0 admits the nonlinear eigenvalue problem P(ψ0) =λψ0.We first present an analytic solution for dynamic mode decomposition (DMD) in such cases. We show an inherent flaw of DMD, which is unable to recover the essential dynamics of the flow. It is evident that DMD is best suited for homogeneous flows of degree one. We propose an adaptive time sampling scheme and show its dynamics are analogue to homogeneous flows of degree one with a fixed step size. Moreover, we adapt DMD to yield a real spectrum, using symmetric matrices. Our analytic solution of the proposed scheme recovers the dynamics perfectly and yields zero error. We then proceed to show the relation between the orthogonal modes {ϕi} and their decay profiles under the gradient flow. We formulate orthogonal nonlinear spectral decomposition (OrthoNS), which recovers the essential latent structures of the gradient descent process. Definitions for spectrum and filtering are given, and a Parseval-type identity is shown. Experimental results on images show the resemblance to direct computations of nonlinear spectral decomposition. A significant speedup (by about two orders of magnitude) is achieved for this application using the proposed method.
AB - Finding latent structures in data is drawing increasing attention in diverse fields such as image and signal processing, fluid dynamics, and machine learning. In this work we examine the problem of finding the main modes of gradient flows. Gradient descent is a fundamental process in optimization where its stochastic version is prominent in training of neural networks. Here our aim is to establish a consistent theory for gradient flows ψt = P(ψ), where P is a nonlinear homogeneous operator. Our proposed framework stems from analytic solutions of homogeneous flows, previously formalized by Cohen and Gilboa, where the initial condition ψ0 admits the nonlinear eigenvalue problem P(ψ0) =λψ0.We first present an analytic solution for dynamic mode decomposition (DMD) in such cases. We show an inherent flaw of DMD, which is unable to recover the essential dynamics of the flow. It is evident that DMD is best suited for homogeneous flows of degree one. We propose an adaptive time sampling scheme and show its dynamics are analogue to homogeneous flows of degree one with a fixed step size. Moreover, we adapt DMD to yield a real spectrum, using symmetric matrices. Our analytic solution of the proposed scheme recovers the dynamics perfectly and yields zero error. We then proceed to show the relation between the orthogonal modes {ϕi} and their decay profiles under the gradient flow. We formulate orthogonal nonlinear spectral decomposition (OrthoNS), which recovers the essential latent structures of the gradient descent process. Definitions for spectrum and filtering are given, and a Parseval-type identity is shown. Experimental results on images show the resemblance to direct computations of nonlinear spectral decomposition. A significant speedup (by about two orders of magnitude) is achieved for this application using the proposed method.
KW - Dynamic mode decomposition
KW - Gradient flows
KW - Homogeneous operators
KW - Nonlinear decomposition
KW - Nonlinear spectral theory
UR - http://www.scopus.com/inward/record.url?scp=85122508706&partnerID=8YFLogxK
U2 - 10.1137/20M1388577
DO - 10.1137/20M1388577
M3 - Article
AN - SCOPUS:85122508706
SN - 1936-4954
VL - 14
SP - 913
EP - 945
JO - SIAM Journal on Imaging Sciences
JF - SIAM Journal on Imaging Sciences
IS - 3
ER -