An Improvement of Data Classification Using Random Multimodel Deep Learning (RMDL)
This addresses the problem of enhancing classification performance for researchers and practitioners dealing with complex datasets, though it appears incremental as it builds on existing ensemble and deep learning methods.
The paper tackles the challenge of finding optimal deep learning structures by introducing Random Multimodel Deep Learning (RMDL), an ensemble approach that trains multiple random DNN, CNN, and RNN models in parallel, achieving improved robustness and accuracy in classification tasks.
The exponential growth in the number of complex datasets every year requires more enhancement in machine learning methods to provide robust and accurate data classification. Lately, deep learning approaches have achieved surpassing results in comparison to previous machine learning algorithms. However, finding the suitable structure for these models has been a challenge for researchers. This paper introduces Random Multimodel Deep Learning (RMDL): a new ensemble, deep learning approach for classification. RMDL solves the problem of finding the best deep learning structure and architecture while simultaneously improving robustness and accuracy through ensembles of deep learning architectures. In short, RMDL trains multiple randomly generated models of Deep Neural Network (DNN), Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) in parallel and combines their results to produce better result of any of those models individually. In this paper, we describe RMDL model and compare the results for image and text classification as well as face recognition. We used MNIST and CIFAR-10 datasets as ground truth datasets for image classification and WOS, Reuters, IMDB, and 20newsgroup datasets for text classification. Lastly, we used ORL dataset to compare the model performance on face recognition task.