Araştırma Makalesi

A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification

Cilt: 5 Sayı: 4 30 Aralık 2022
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A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification

Abstract

In this paper, we propose a new proximal gradient method for a convex minimization problem in real Hilbert spaces. We suggest a new linesearch which does not require the condition of Lipschitz constant and improve conditions of inertial term which speed up performance of convergence. Moreover, we prove the weak convergence of the proposed method under some suitable conditions. The numerical implementations in data classification are reported to show its efficiency.

Keywords

Kaynakça

  1. Ansari, Q.H., Rehan, A. (2014). Split feasibility and fixed point problems. In: Ansari, Q.H. (ed) Nonlinear Analysis: Approximation Theory, Optimization and Applications (pp. 281-322). Birkh¨auser, Springer.
  2. Bauschke, H.H., Combettes, P.L. (2011). Convex analysis and monotone operator theory in Hilbert spaces (Vol. 408). New York: Springer.
  3. Beck, A., Teboulle, M. (2009). A fast iterative shrinkage-thresholding algorithm for linear inverse problems. SIAM Journal on Imaging Science, 2(1), 183-202.
  4. Bello Cruz, J.Y., Nghia, T.T. (2016). On the convergence of the forward-backward splitting method with linesearches. Optimization Methods and Software, 31(6), 1209-1238.
  5. Burachik, R.S., Iusem, A.N. (2008). Enlargements of Monotone Operators. In Set-Valued Mappings and Enlargements of Monotone Operators (pp. 161-220). Springer, Boston, MA.
  6. Byrne, C. (2002). Iterative oblique projection onto convex sets and the split feasibility problem. Inverse Problems, 18(2), 441.
  7. Byrne, C. (2003). A unified treatment of some iterative algorithms in signal processing and image reconstruction. Inverse Problems, 20(1), 103.
  8. Ceng, L.C., Ansari, Q.H., Yao, J.C. (2012). An extragradient method for solving split feasibility and fixed point problems. Computers and Mathematics with Applications, 64(4), 633-642.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Matematik

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

30 Aralık 2022

Gönderilme Tarihi

13 Temmuz 2022

Kabul Tarihi

4 Eylül 2022

Yayımlandığı Sayı

Yıl 2022 Cilt: 5 Sayı: 4

Kaynak Göster

APA
Kesornprom, S., & Cholamjiak, P. (2022). A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification. Results in Nonlinear Analysis, 5(4), 412-422. https://doi.org/10.53006/rna.1143531
AMA
1.Kesornprom S, Cholamjiak P. A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification. RNA. 2022;5(4):412-422. doi:10.53006/rna.1143531
Chicago
Kesornprom, Suparat, ve Prasit Cholamjiak. 2022. “A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification”. Results in Nonlinear Analysis 5 (4): 412-22. https://doi.org/10.53006/rna.1143531.
EndNote
Kesornprom S, Cholamjiak P (01 Aralık 2022) A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification. Results in Nonlinear Analysis 5 4 412–422.
IEEE
[1]S. Kesornprom ve P. Cholamjiak, “A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification”, RNA, c. 5, sy 4, ss. 412–422, Ara. 2022, doi: 10.53006/rna.1143531.
ISNAD
Kesornprom, Suparat - Cholamjiak, Prasit. “A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification”. Results in Nonlinear Analysis 5/4 (01 Aralık 2022): 412-422. https://doi.org/10.53006/rna.1143531.
JAMA
1.Kesornprom S, Cholamjiak P. A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification. RNA. 2022;5:412–422.
MLA
Kesornprom, Suparat, ve Prasit Cholamjiak. “A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification”. Results in Nonlinear Analysis, c. 5, sy 4, Aralık 2022, ss. 412-2, doi:10.53006/rna.1143531.
Vancouver
1.Suparat Kesornprom, Prasit Cholamjiak. A double proximal gradient method with new linesearch for solving convex minimization problem with application to data classification. RNA. 01 Aralık 2022;5(4):412-2. doi:10.53006/rna.1143531

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