With the exponential growth in the daily publication of scientific articles, automatic classification and categorization can assist in assigning articles to a predefined category. Article titles are concise descriptions of the articles’ content with valuable information that can be useful in document classification and categorization. However, shortness, data sparseness, limited word occurrences, and the inadequate contextual information of scientific document titles hinder the direct application of conventional text mining and machine learning algorithms on these short texts, making their classification a challenging task. This study firstly explores the performance of our earlier study, TextNetTopics on the short text. Secondly, here we p...
Traditional unsupervised topic modeling approaches like Latent Dirichlet Allocation (LDA) lack the a...
Very short texts, such as tweets and invoices, present challenges in classification. Such texts abou...
In the information age, short texts are being encountered at numerous instances and in large quantit...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
Short texts are a common source of knowledge, and the extraction of such valuable information is ben...
The use of background knowledge is largely unexploited in text classification tasks. This paper expl...
AbstractIn this paper, we propose a novel approach to classify short texts by combining both their l...
In the context of TV and social media surveillance, constructing models to automate topic identifica...
Introduction: Scientific articles serve as vital sources of biomedical information, but with the yea...
Massive amount of short texts such as tweets, reviews, and social media posts are available on the i...
Text classification typically performs best with large training sets, but short texts are very commo...
Text classification has become a standard component of automated systematic literature review (SLR) ...
Traditional unsupervised topic modeling approaches like Latent Dirichlet Allocation (LDA) lack the a...
Very short texts, such as tweets and invoices, present challenges in classification. Such texts abou...
In the information age, short texts are being encountered at numerous instances and in large quantit...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
With the exponential growth in the daily publication of scientific articles, automatic classificatio...
Short texts are a common source of knowledge, and the extraction of such valuable information is ben...
The use of background knowledge is largely unexploited in text classification tasks. This paper expl...
AbstractIn this paper, we propose a novel approach to classify short texts by combining both their l...
In the context of TV and social media surveillance, constructing models to automate topic identifica...
Introduction: Scientific articles serve as vital sources of biomedical information, but with the yea...
Massive amount of short texts such as tweets, reviews, and social media posts are available on the i...
Text classification typically performs best with large training sets, but short texts are very commo...
Text classification has become a standard component of automated systematic literature review (SLR) ...
Traditional unsupervised topic modeling approaches like Latent Dirichlet Allocation (LDA) lack the a...
Very short texts, such as tweets and invoices, present challenges in classification. Such texts abou...
In the information age, short texts are being encountered at numerous instances and in large quantit...