Towards a Very Fast Feedforward Multilayer Neural Networks Training Algorithm

Author:

Bilski Jarosław1,Kowalczyk Bartosz1,Kisiel-Dorohinicki Marek2,Siwocha Agnieszka3,Żurada Jacek4

Affiliation:

1. Department of Computer Engineering , Częstochowa University of Technology , al. Armii Krajowej 36 , Częstochowa , Poland

2. Institute of Computer Science , AGH University of Science and Technology , Kraków , Poland

3. Information Technology Institute , University of Social Sciences , , Łódź , Poland

4. Department of Computer and Electrical Engineering , University of Louisville , , USA

Abstract

Abstract **This paper presents a novel fast algorithm for feedforward neural networks training. It is based on the Recursive Least Squares (RLS) method commonly used for designing adaptive filters. Besides, it utilizes two techniques of linear algebra, namely the orthogonal transformation method, called the Givens Rotations (GR), and the QR decomposition, creating the GQR (symbolically we write GR + QR = GQR) procedure for solving the normal equations in the weight update process. In this paper, a novel approach to the GQR algorithm is presented. The main idea revolves around reducing the computational cost of a single rotation by eliminating the square root calculation and reducing the number of multiplications. The proposed modification is based on the scaled version of the Givens rotations, denoted as SGQR. This modification is expected to bring a significant training time reduction comparing to the classic GQR algorithm. The paper begins with the introduction and the classic Givens rotation description. Then, the scaled rotation and its usage in the QR decomposition is discussed. The main section of the article presents the neural network training algorithm which utilizes scaled Givens rotations and QR decomposition in the weight update process. Next, the experiment results of the proposed algorithm are presented and discussed. The experiment utilizes several benchmarks combined with neural networks of various topologies. It is shown that the proposed algorithm outperforms several other commonly used methods, including well known Adam optimizer.

Publisher

Walter de Gruyter GmbH

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Hardware and Architecture,Modeling and Simulation,Information Systems

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