作者
Muhammad Anwaar, Ghulam Gilanie, Faizan Ahmad, Wareesa Sharif, Momina Shaheen, Muhammad Ashraf, Rafaqat Ali
发表日期
2024/4/4
简介
The internet is teeming with an ever-increasing amount of text information, which can come in various forms such as words, phrases, terms, patterns, concepts, sentences, paragraphs, and documents. The vast quantity of data can pose a difficulty in terms of organizing and structuring textual data effectively. In existing research work, imbalance in counting the terms hampers the classification results. We prioritize the data that precisely fits into the correct class to reduce the imbalances in the dataset and improve the overall result quality. Significant improvements are noticed in accurately classifying text by maintaining an adequate ratio of text data and using efficient text classification approaches. To improve the generalized ability of ELM, feature Selection and optimization of Deep Learning algorithms produced a great influence on classification. In this paper, the Enhanced Relative Discriminative Criterion (ERDC …