학술논문

A Hybrid Regularized Multilayer Perceptron for Input Noise Immunity
Document Type
Periodical
Source
IEEE Transactions on Artificial Intelligence IEEE Trans. Artif. Intell. Artificial Intelligence, IEEE Transactions on. 5(1):115-126 Jan, 2024
Subject
Computing and Processing
Neurons
Robustness
Artificial intelligence
Noise measurement
Multilayer perceptrons
Feature extraction
Additive noise
++%24l%5F{2}%24<%2Ftex-math>+<%2Finline-formula>+<%2Fnamed-content>+regularizer%22"> $l_{2}$ regularizer
additive noise
DropConnect
dropout
multilayer perceptron (MLP)
multiplicative noise
noise immunity
noise injection
outliers
robustness
Language
ISSN
2691-4581
Abstract
The immunity of multilayer perceptron (MLP) is less effective toward input noise. In this article, we have focused on the robustness of MLP with respect to input noise where noise can be additive or multiplicative. Here, we have proposed a DropConnect-based regularized MLP to reduce the coadaptation among the neurons of the hidden layer. At first, we have empirically and statistically shown that by reducing coadaptation among the hidden neurons, an MLP can achieve better noise immunity. We have also empirically shown that an MLP with input noise injection and $l_{2}$ regularizer is an effective approach to improve its noise immunity. However, the results indicate that it does not adjust the coadaptation among the hidden neurons. Therefore, for further improvement, we have proposed a hybrid regularized MLP (HRMLP), where DropConnect is combined with the noise injection and $l_{2}$ regularizer. In addition to input noise, we have also verified the robustness of HRMLP with respect to $\mathbf {20\%}$ outliers in the dataset. To justify the effectiveness of the proposed HRMLP, we have compared it with MLP, MLP with noise injection, MLP with $l_{2}$ regularizer, MLP with noise injection and $l_{2}$ regularizer, and MLP with DropConnect along with two state-of-the-art works based on $\mathbf {20}$ standard datasets. The experimental results for both noisy inputs and outliers confirm that the performance of HRMLP is significant compared to other methods.