Javascript must be enabled to continue!
Monarch Butterfly Optimization Based Convolutional Neural Network Design
View through CrossRef
Convolutional neural networks have a broad spectrum of practical applications in computer vision. Currently, much of the data come from images, and it is crucial to have an efficient technique for processing these large amounts of data. Convolutional neural networks have proven to be very successful in tackling image processing tasks. However, the design of a network structure for a given problem entails a fine-tuning of the hyperparameters in order to achieve better accuracy. This process takes much time and requires effort and expertise from the domain. Designing convolutional neural networks’ architecture represents a typical NP-hard optimization problem, and some frameworks for generating network structures for a specific image classification tasks have been proposed. To address this issue, in this paper, we propose the hybridized monarch butterfly optimization algorithm. Based on the observed deficiencies of the original monarch butterfly optimization approach, we performed hybridization with two other state-of-the-art swarm intelligence algorithms. The proposed hybrid algorithm was firstly tested on a set of standard unconstrained benchmark instances, and later on, it was adapted for a convolutional neural network design problem. Comparative analysis with other state-of-the-art methods and algorithms, as well as with the original monarch butterfly optimization implementation was performed for both groups of simulations. Experimental results proved that our proposed method managed to obtain higher classification accuracy than other approaches, the results of which were published in the modern computer science literature.
Title: Monarch Butterfly Optimization Based Convolutional Neural Network Design
Description:
Convolutional neural networks have a broad spectrum of practical applications in computer vision.
Currently, much of the data come from images, and it is crucial to have an efficient technique for processing these large amounts of data.
Convolutional neural networks have proven to be very successful in tackling image processing tasks.
However, the design of a network structure for a given problem entails a fine-tuning of the hyperparameters in order to achieve better accuracy.
This process takes much time and requires effort and expertise from the domain.
Designing convolutional neural networks’ architecture represents a typical NP-hard optimization problem, and some frameworks for generating network structures for a specific image classification tasks have been proposed.
To address this issue, in this paper, we propose the hybridized monarch butterfly optimization algorithm.
Based on the observed deficiencies of the original monarch butterfly optimization approach, we performed hybridization with two other state-of-the-art swarm intelligence algorithms.
The proposed hybrid algorithm was firstly tested on a set of standard unconstrained benchmark instances, and later on, it was adapted for a convolutional neural network design problem.
Comparative analysis with other state-of-the-art methods and algorithms, as well as with the original monarch butterfly optimization implementation was performed for both groups of simulations.
Experimental results proved that our proposed method managed to obtain higher classification accuracy than other approaches, the results of which were published in the modern computer science literature.
Related Results
Cloudlet Scheduling by Hybridized Monarch Butterfly Optimization Algorithm
Cloudlet Scheduling by Hybridized Monarch Butterfly Optimization Algorithm
Cloud computing technology enables efficient utilization of available physical resources through the virtualization where different clients share the same underlying physical hardw...
Novel WSN Coverage Optimization Strategy via Monarch Butterfly Algorithm and Particle Swarm Optimization
Novel WSN Coverage Optimization Strategy via Monarch Butterfly Algorithm and Particle Swarm Optimization
Abstract
Wireless sensor networks (WSNs) show disadvantages of redundancy and relatively high network cost. Aiming at the problems of redundancy and increased network cost ...
Konsep Butterfly Effect dalam Psikologi Positif
Konsep Butterfly Effect dalam Psikologi Positif
The butterfly effect is a term used in various studies, including psychology. Not too down to earth; however, some figures use this term. In this case, the writing of this article ...
Sample-efficient Optimization Using Neural Networks
Sample-efficient Optimization Using Neural Networks
<p>The solution to many science and engineering problems includes identifying the minimum or maximum of an unknown continuous function whose evaluation inflicts non-negligibl...
Revisiting the flight dynamics of take-off of a butterfly: experiments and CFD simulations for a cabbage white butterfly
Revisiting the flight dynamics of take-off of a butterfly: experiments and CFD simulations for a cabbage white butterfly
ABSTRACT
We conducted measurements of the taking-off motion of a butterfly (Pieris rapae) and numerical simulations using a computational model reflecting its motion...
Performance of a Monarch Butterfly for Various Flapping Angle
Performance of a Monarch Butterfly for Various Flapping Angle
The butterfly is an insect highly evolved to perform various flight regimes. From gliding flight to manoeuvers involving spontaneous changes in direction, the butterfly is consider...
Penerapan Metode Convolutional Neural Network untuk Diagnosa Penyakit Alzheimer
Penerapan Metode Convolutional Neural Network untuk Diagnosa Penyakit Alzheimer
Abstract— Alzheimer's disease is a neurodegenerative disease that develops gradually, and is associated with cardiovascular and cerebrovascular problems. Alzheimer's is a serious d...

