Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

SARCASM Classifier

View through CrossRef
Sarcasm is a form of verbal irony where the intended meaning of a statement differs from its literal meaning. Detecting sarcasm is crucial for understanding sentiments and opinions, especially in social media analysis. However, sarcasm detection is challenging due to its reliance on context and tone. In this paper, we propose a sarcasm detection model using a Long Short-Term Memory (LSTM) network, a deep learning-based Recurrent Neural Network (RNN) variant. Our model is trained on social media datasets containing sarcastic and non-sarcastic statements. We compare its performance with the Word2Vec algorithm, analyzing accuracy and effectiveness. The proposed system aims to improve sarcasm classification in text-based data
Title: SARCASM Classifier
Description:
Sarcasm is a form of verbal irony where the intended meaning of a statement differs from its literal meaning.
Detecting sarcasm is crucial for understanding sentiments and opinions, especially in social media analysis.
However, sarcasm detection is challenging due to its reliance on context and tone.
In this paper, we propose a sarcasm detection model using a Long Short-Term Memory (LSTM) network, a deep learning-based Recurrent Neural Network (RNN) variant.
Our model is trained on social media datasets containing sarcastic and non-sarcastic statements.
We compare its performance with the Word2Vec algorithm, analyzing accuracy and effectiveness.
The proposed system aims to improve sarcasm classification in text-based data.

Related Results

Sarcasm Types in Meghan Trainor’s Song Entitled “Mother”
Sarcasm Types in Meghan Trainor’s Song Entitled “Mother”
The research aim is to figure out types of sarcasm used in Meghan Trainor’s song entitled “Mother”. The descriptive qualitative method is used in this research. In analyzing the da...
Sarcasm in Iraqi Political Interviews
Sarcasm in Iraqi Political Interviews
Quintilian defined the standard view of sarcasm, or verbal irony, as speech in which we comprehend something that is the complete opposite of what is said. However, This study aime...
Assessing Sarcasm Dataset Quality
Assessing Sarcasm Dataset Quality
Abstract Artificial intelligence (AI) models depend on high-quality data to maintain accuracy and ensure safe deployment. However, the presence of sarcasm in sentiment anal...
Sarcasm Detection Algorithms
Sarcasm Detection Algorithms
In this paper, we want to review one of the challenging problems for the opinion mining task, which is sarcasm detection. To be able to do that, many researchers tried to explore s...
Automatic sarcasm detection in Arabic tweets: resources and approaches
Automatic sarcasm detection in Arabic tweets: resources and approaches
Sentiment analysis has become a prevalent issue in the research community, with researchers employing data mining and artificial intelligence approaches to extract insights from te...
Sarcasm Detection: A Comparative Analysis of RoBERTa-CNN vs RoBERTa-RNN Architectures
Sarcasm Detection: A Comparative Analysis of RoBERTa-CNN vs RoBERTa-RNN Architectures
Increasingly advanced technology and the creation of social media and the internet can become a forum for people to express things or opinions. However, comments or views from user...
Prediction of Coronary Artery Disease Using Urinary Proteomics
Prediction of Coronary Artery Disease Using Urinary Proteomics
AbstractAimsCoronary artery disease (CAD) is multifactorial, caused by complex pathophysiology, and contributes to a high burden of mortality worldwide. Urinary proteomic analyses ...
Sarcasm Detection in News Headline Dataset with Ensemble Deep Learning Method
Sarcasm Detection in News Headline Dataset with Ensemble Deep Learning Method
Sarcasm, a prevalent linguistic device, is frequently used in public discourse, often causing offence and distress to the listener. The complexity inherent in detecting sarcasm is ...

Back to Top