In recent years, several studies have proposed making use of the Twitter micro-blogging service to track various trends in online media and discussion. In this study, we specifically examine the use of Twitter to track discussions of food safety in the Korean language. Given the irregularity of keyword use in most tweets, we focus on optimistic machine-learning and feature set selection to classify collected tweets. We build the classifier model using Naive Bayes & Naive Bayes Multinomial, Support Vector Machine, and Decision Tree Algorithms, all of which show good performance. To select an optimum feature set, we construct a basic feature set as a standard for performance comparison, so that further test feature sets can be evaluated. Expe...
In this paper, sentiment analysis of two critical events is presented using machine learning (ML) te...
The evolution of the coronavirus (COVID-19) disease took a toll on the social, healthcare, economic,...
Identifying and classifying text extracted from social networks, following the traditional method, i...
This paper addresses the task of building a classifier that would categorise tweets in Twitter. Micr...
AbstractA social media is a mediator for communication among people. It allows user to exchange info...
Abstract Twitter and social media as a whole have great potential as a source of disease surveillanc...
A huge amount of data is generated every minute for social networking and content sharing via Social...
This study aims to identify tweets containing abusive or offensive content. To do this, we performed...
Covid-19 pandemic presents unprecedented challenges and enormously affects different aspects of indi...
With the rapid growth of web and mobile technology, Social networking services like Twitter are wide...
The spread of Covid-19 has resulted in worldwide health concerns. Social media is increasingly used ...
In recent years, there have been a huge growth in the use of social media. Despite the huge amount...
Nowadays people share their views and opinions in twitter and other social media platforms, the way ...
This repository contains: A deep learning model which distinguishes between Hostililty against Ea...
Public responses, posted on Twitter reacting to the Tokopedia data leak incident, were used as a dat...
In this paper, sentiment analysis of two critical events is presented using machine learning (ML) te...
The evolution of the coronavirus (COVID-19) disease took a toll on the social, healthcare, economic,...
Identifying and classifying text extracted from social networks, following the traditional method, i...
This paper addresses the task of building a classifier that would categorise tweets in Twitter. Micr...
AbstractA social media is a mediator for communication among people. It allows user to exchange info...
Abstract Twitter and social media as a whole have great potential as a source of disease surveillanc...
A huge amount of data is generated every minute for social networking and content sharing via Social...
This study aims to identify tweets containing abusive or offensive content. To do this, we performed...
Covid-19 pandemic presents unprecedented challenges and enormously affects different aspects of indi...
With the rapid growth of web and mobile technology, Social networking services like Twitter are wide...
The spread of Covid-19 has resulted in worldwide health concerns. Social media is increasingly used ...
In recent years, there have been a huge growth in the use of social media. Despite the huge amount...
Nowadays people share their views and opinions in twitter and other social media platforms, the way ...
This repository contains: A deep learning model which distinguishes between Hostililty against Ea...
Public responses, posted on Twitter reacting to the Tokopedia data leak incident, were used as a dat...
In this paper, sentiment analysis of two critical events is presented using machine learning (ML) te...
The evolution of the coronavirus (COVID-19) disease took a toll on the social, healthcare, economic,...
Identifying and classifying text extracted from social networks, following the traditional method, i...