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Hauptverfasser: Hossen, Md Sakhawat, Borshon, Md. Zashid Iqbal, Badrudduza, A. S. M.
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2511.03107
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author Hossen, Md Sakhawat
Borshon, Md. Zashid Iqbal
Badrudduza, A. S. M.
author_facet Hossen, Md Sakhawat
Borshon, Md. Zashid Iqbal
Badrudduza, A. S. M.
contents The uprising of deep learning methodology and practice in recent years has brought about a severe consequence of increasing carbon footprint due to the insatiable demand for computational resources and power. The field of text analytics also experienced a massive transformation in this trend of monopolizing methodology. In this paper, the original TF-IDF algorithm has been modified, and Clement Term Frequency-Inverse Document Frequency (CTF-IDF) has been proposed for data preprocessing. This paper primarily discusses the effectiveness of classical machine learning techniques in text analytics with CTF-IDF and a faster IRLBA algorithm for dimensionality reduction. The introduction of both of these techniques in the conventional text analytics pipeline ensures a more efficient, faster, and less computationally intensive application when compared with deep learning methodology regarding carbon footprint, with minor compromise in accuracy. The experimental results also exhibit a manifold of reduction in time complexity and improvement of model accuracy for the classical machine learning methods discussed further in this paper.
format Preprint
id arxiv_https___arxiv_org_abs_2511_03107
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Efficient Classification Model for Cyber Text
Hossen, Md Sakhawat
Borshon, Md. Zashid Iqbal
Badrudduza, A. S. M.
Machine Learning
Information Theory
The uprising of deep learning methodology and practice in recent years has brought about a severe consequence of increasing carbon footprint due to the insatiable demand for computational resources and power. The field of text analytics also experienced a massive transformation in this trend of monopolizing methodology. In this paper, the original TF-IDF algorithm has been modified, and Clement Term Frequency-Inverse Document Frequency (CTF-IDF) has been proposed for data preprocessing. This paper primarily discusses the effectiveness of classical machine learning techniques in text analytics with CTF-IDF and a faster IRLBA algorithm for dimensionality reduction. The introduction of both of these techniques in the conventional text analytics pipeline ensures a more efficient, faster, and less computationally intensive application when compared with deep learning methodology regarding carbon footprint, with minor compromise in accuracy. The experimental results also exhibit a manifold of reduction in time complexity and improvement of model accuracy for the classical machine learning methods discussed further in this paper.
title An Efficient Classification Model for Cyber Text
topic Machine Learning
Information Theory
url https://arxiv.org/abs/2511.03107