학술논문

An Exploration of the Effectiveness of Machine Learning Algorithms for Text Classification
Document Type
Conference
Source
2023 IEEE International Conference on Paradigm Shift in Information Technologies with Innovative Applications in Global Scenario (ICPSITIAGS) Paradigm Shift in Information Technologies with Innovative Applications in Global Scenario (ICPSITIAGS), 2023 IEEE International Conference on. :35-41 Dec, 2023
Subject
Computing and Processing
Robotics and Control Systems
Support vector machines
Machine learning algorithms
Recurrent neural networks
Statistical analysis
Text categorization
Prediction algorithms
Natural language processing
Managing
Information
Consisting
Promising
Categorization
Language
Abstract
Text type is an important project in natural language processing (NLP), with programs in facts retrieval, sentiment evaluation, and report categorization. With the exponential increase of virtual information, the call for automatic text category has multiplied. Conventional text category techniques along with rule-based totally structures and statistical methods have obstacles in managing complex and massive datasets. System studying (ML) has emerged as a promising technique to text type, leveraging algorithms which can automatically learn from information and make correct predictions. This paper gives an exploration of the effectiveness of different machine getting to know algorithms for text category responsibilities. We evaluate and compare the performance of famous algorithms consisting of decision bushes, aid vector machines (SVM), ok-nearest pals (KNN), and deep learning fashions which include convolutional neural networks (CNN) and recurrent neural networks (RNN).