Text classification techniques: A literature review

M Thangaraj, M Sivakami - Interdisciplinary journal of …, 2018 - search.proquest.com
Text Classification Techniques: A Literature Review Page 1 Volume 13, 2018 Accepted by
Editor Maureen Tanner│ Received: July 7 3, 2017│ Revised: October 31, 2017, January …

Feature weighting methods: A review

I Niño-Adan, D Manjarres, I Landa-Torres… - Expert Systems with …, 2021 - Elsevier
In the last decades, a wide portfolio of Feature Weighting (FW) methods have been
proposed in the literature. Their main potential is the capability to transform the features in …

[HTML][HTML] Big Data sources and methods for social and economic analyses

D Blazquez, J Domenech - Technological Forecasting and Social Change, 2018 - Elsevier
Abstract The Data Big Bang that the development of the ICTs has raised is providing us with
a stream of fresh and digitized data related to how people, companies and other …

Feature weighting and SVM parameters optimization based on genetic algorithms for classification problems

AV Phan, ML Nguyen, LT Bui - Applied Intelligence, 2017 - Springer
Abstract Support Vector Machines (SVMs) are widely known as an efficient supervised
learning model for classification problems. However, the success of an SVM classifier …

[HTML][HTML] Detecting flooding DDoS attacks in software defined networks using supervised learning techniques

S Wang, JF Balarezo, KG Chavez, A Al-Hourani… - … science and technology …, 2022 - Elsevier
For the easy and flexible management of large scale networks, Software-Defined
Networking (SDN) is a strong candidate technology that offers centralisation and …

[PDF][PDF] A novel classification approach based on Naïve Bayes for Twitter sentiment analysis

J Song, KT Kim, B Lee, S Kim… - KSII Transactions on …, 2017 - koreascience.kr
With rapid growth of web technology and dissemination of smart devices, social networking
service (SNS) is widely used. As a result, huge amount of data are generated from SNS such …

A feature selection method based on hybrid improved binary quantum particle swarm optimization

Q Wu, Z Ma, J Fan, G Xu, Y Shen - IEEE access, 2019 - ieeexplore.ieee.org
As the volume of data available for analysis grows, feature selection is becoming a vital part
of ensuring accurate classification results. In classification problems, selecting a small …

Rule-based back propagation neural networks for various precision rough set presented KANSEI knowledge prediction: a case study on shoe product form features …

Z Li, K Shi, N Dey, AS Ashour, D Wang… - Neural Computing and …, 2017 - Springer
Nonlinear operators for KANSEI evaluation dataset were significantly developed such as
uncertainty reason techniques including rough set, fuzzy set and neural networks. In order to …

Memetic extreme learning machine

Y Zhang, J Wu, Z Cai, P Zhang, L Chen - Pattern Recognition, 2016 - Elsevier
Abstract Extreme Learning Machine (ELM) is a promising model for training single-hidden
layer feedforward networks (SLFNs) and has been widely used for classification. However …

A greedy belief rule base generation and learning method for classification problem

F Gao, A Zhang, W Bi, J Ma - Applied Soft Computing, 2021 - Elsevier
Among many rule-based systems employed in classification problems, the belief rule-based
(BRB) system has been significant for its ability to deal with both quantitative and qualitative …