Redirigiendo al acceso original de articulo en 22 segundos...
ARTÍCULO
TITULO

Accuracy analysis of machine learning models using vectorization methods for heterogeneous text data classification tasks

A.N. Alpatov    
K.S. Popov    
A.N. Chesalin    

Resumen

This paper investigates the problem of natural language processing using machine learning techniques, in particular, classification of unstructured heterogeneous text data sets. The paper presents a comparative analysis of some relevant and widely used methods and teacher-assisted machine learning models used for multi-class classification on heterogeneous textual data sources using different feature extraction methods. The dependence of the accuracy of class prediction by classifier models on the quality of the text data corpora used in this paper, applying different vectorization methods on the processed set of source data, is considered. Based on this analysis, a generalized scheme of the software functioning, which implements the algorithm for constructing a model of classification of unstructured texts, in the form of a pipeline for processing text corpus and control of machine learning models is proposed. During the experiment, it was demonstrated that for corpora with different quality of initial text data, the accuracy of classifier predictions differed. This circumstance manifested itself in the fact that the classifiers have lower performance on the corpus of texts of musical compositions and high on the texts of news summaries. It is shown that under certain conditions, the use of solutions to improve the quality of classification, such as stacking and adding additional features of classification, can lead not to improvement, but on the contrary to the deterioration of the results of class prediction, which, ultimately, can have a negative impact on the final accuracy of the obtained model results.

 Artículos similares

       
 
Bahaa Yamany, Mahmoud Said Elsayed, Anca D. Jurcut, Nashwa Abdelbaki and Marianne A. Azer    
Ransomware is a type of malicious software that encrypts a victim?s files and demands payment in exchange for the decryption key. It is a rapidly growing and evolving threat that has caused significant damage and disruption to individuals and organizatio... ver más
Revista: Information

 
Kichan Sim and Kangsu Lee    
A digital twin is a virtual model of a real-world structure (such as a device or equipment) which supports various problems or operations that occur throughout the life cycle of the structure through linkage with the actual structure. Digital twins have ... ver más

 
Shweta More, Moad Idrissi, Haitham Mahmoud and A. Taufiq Asyhari    
The rapid proliferation of new technologies such as Internet of Things (IoT), cloud computing, virtualization, and smart devices has led to a massive annual production of over 400 zettabytes of network traffic data. As a result, it is crucial for compani... ver más
Revista: Algorithms

 
Pedro Celard, Adrián Seara Vieira, José Manuel Sorribes-Fdez, Eva Lorenzo Iglesias and Lourdes Borrajo    
In this study, we propose a novel Temporal Development Generative Adversarial Network (TD-GAN) for the generation and analysis of videos, with a particular focus on biological and medical applications. Inspired by Progressive Growing GAN (PG-GAN) and Tem... ver más
Revista: Information

 
Wen Tian, Xuefang Zhou, Jianan Yin, Yuchen Li and Yining Zhang    
The complex layout of the airport surface, coupled with interrelated vehicle behaviors and densely mixed traffic flows, frequently leads to operational conflict risks. To address this issue, research was conducted on the recognition of characteristics an... ver más
Revista: Aerospace