Abstract

A novel semi-supervised learning method is proposed to better utilize labeled and unlabeled samples to improve classification performance. However, there is exists the limitation that Laplace regularization in a semi-supervised extreme learning machine (SSELM) tends to lead to poor generalization ability and it ignores the role of labeled information. To solve the above problems, a Joint Regularized Semi-Supervised Extreme Learning Machine (JRSSELM) is proposed, which uses Hessian regularization instead of Laplace regularization and adds supervised information regularization. In order to solve the problem of slow convergence speed and the easy to fall into local optimum of marine predator algorithm (MPA), a multi-strategy marine predator algorithm (MSMPA) is proposed, which first uses a chaotic opposition learning strategy to generate high-quality initial population, then uses adaptive inertia weights and adaptive step control factor to improve the exploration, utilization, and convergence speed, and then uses neighborhood dimensional learning strategy to maintain population diversity. The parameters in JRSSELM are then optimized using MSMPA. The MSMPA-JRSSELM is applied to logging oil formation identification. The experimental results show that MSMPA shows obvious superiority and strong competitiveness in terms of convergence accuracy and convergence speed. Also, the classification performance of MSMPA-JRSSELM is better than other classification methods, and the practical application is remarkable.

Highlights

  • Swarm intelligence algorithms [1] mainly simulate the behavior of a group of animals in search of food in a cooperative manner, where each member of the group learns from his or her own experience and the experience of the whole group, and changes the direction of the prey search [2]

  • The convergence curve is a visual representation of the ability to evaluate the development and speed of convergence of the algorithm to find the best, and the convergence curves of multi-strategy marine predator algorithm (MSMPA) and seven other comparison algorithms on 18 benchmark functions are shown in Figure A1 in Appendix A

  • In the high-dimensional multimode function, MSMPA shows obvious superiority, except for the standard deviation on F8, where Sine Cosine Algorithm (SCA) is the best performer, MSMPA is the best performer in other performance indexes, especially on F9 and F11, where MSMPA

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Summary

Introduction

Swarm intelligence algorithms [1] mainly simulate the behavior of a group of animals in search of food in a cooperative manner, where each member of the group learns from his or her own experience and the experience of the whole group, and changes the direction of the prey search [2]. Swarm intelligence algorithms can effectively solve many complex and challenging optimization problems in the field of artificial intelligence [3], and are mainly applied to combinatorial optimization [4], feature selection [5], image processing [6], data mining [7], and other fields. New meta-heuristic algorithms have been proposed to mimic the natural behavior of birds, bees, fish, and other groups of organisms, including Particle Swarm. In 2020, Faramarzi et al [17] proposed novel meta-heuristic algorithms that mimic marine hunting behavior, and they believe that the Lévy flight strategy and the Brownian motion strategy that balance the movement of marine organisms can effectively solve the optimization problem. The first stage is the high-speed movement of the prey; the predator keeps a low-speed movement, and the second stage high-speed movement is carried out for both the prey and the predator

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