Open Access
Rider weed deep residual network-based incremental model for text classification using multidimensional features and MapReduce
Author(s) -
Hemn Barzan Abdalla,
Awder Mohammed Ahmed,
Subhi R. M. Zeebaree,
Ahmed Alkhayyat,
Baha Ihnaini
Publication year - 2022
Publication title -
peerj. computer science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.806
H-Index - 24
ISSN - 2376-5992
DOI - 10.7717/peerj-cs.937
Subject(s) - residual , computer science , artificial intelligence , deep learning , similarity (geometry) , big data , pattern recognition (psychology) , weed , selection (genetic algorithm) , data mining , machine learning , algorithm , image (mathematics) , biology , agronomy
Increasing demands for information and the rapid growth of big data have dramatically increased the amount of textual data. In order to obtain useful text information, the classification of texts is considered an imperative task. Accordingly, this article will describe the development of a hybrid optimization algorithm for classifying text. Here, pre-processing was done using the stemming process and stop word removal. Additionally, we performed the extraction of imperative features and the selection of optimal features using the Tanimoto similarity, which estimates the similarity between features and selects the relevant features with higher feature selection accuracy. Following that, a deep residual network trained by the Adam algorithm was utilized for dynamic text classification. Dynamic learning was performed using the proposed Rider invasive weed optimization (RIWO)-based deep residual network along with fuzzy theory. The proposed RIWO algorithm combines invasive weed optimization (IWO) and the Rider optimization algorithm (ROA). These processes are carried out under the MapReduce framework. Our analysis revealed that the proposed RIWO-based deep residual network outperformed other techniques with the highest true positive rate (TPR) of 85%, true negative rate (TNR) of 94%, and accuracy of 88.7%.