SOTAVerified

Sarcasm Detection

The goal of Sarcasm Detection is to determine whether a sentence is sarcastic or non-sarcastic. Sarcasm is a type of phenomenon with specific perlocutionary effects on the hearer, such as to break their pattern of expectation. Consequently, correct understanding of sarcasm often requires a deep understanding of multiple sources of information, including the utterance, the conversational context, and, frequently some real world facts.

Source: Attentional Multi-Reading Sarcasm Detection

Papers

Showing 201250 of 266 papers

TitleStatusHype
Multi-Modal Sarcasm Detection in Twitter with Hierarchical Fusion Model0
Towards Multimodal Sarcasm Detection (An \_Obviously\_ Perfect Paper)Code0
Towards Multimodal Sarcasm Detection (An _Obviously_ Perfect Paper)Code0
``When Numbers Matter!'': Detecting Sarcasm in Numerical Portions of Text0
Effectiveness of Data-Driven Induction of Semantic Spaces and Traditional Classifiers for Sarcasm DetectionCode0
Sentiment and Sarcasm Classification with Multitask Learning0
Identifying Affective Events and the Reasons for their Polarity0
Attentional Multi-Reading Sarcasm Detection0
Representing Social Media Users for Sarcasm DetectionCode0
Sarcasm Analysis using Conversation Context0
Will it Blend? Blending Weak and Strong Labeled Data in a Neural Network for Argumentation Mining0
#SarcasmDetection is soooo general! Towards a Domain-Independent Approach for Detecting Sarcasm0
YNU-HPCC at SemEval-2018 Task 3: Ensemble Neural Network Models for Irony Detection on Twitter0
Random Decision Syntax Trees at SemEval-2018 Task 3: LSTMs and Sentiment Scores for Irony Detection0
Detecting Sarcasm is Extremely Easy ;-)0
KLUEnicorn at SemEval-2018 Task 3: A Naive Approach to Irony Detection0
NLPRL-IITBHU at SemEval-2018 Task 3: Combining Linguistic Features and Emoji pre-trained CNN for Irony Detection in Tweets0
SSN MLRG1 at SemEval-2018 Task 3: Irony Detection in English Tweets Using MultiLayer Perceptron0
A Corpus of English-Hindi Code-Mixed Tweets for Sarcasm DetectionCode0
CASCADE: Contextual Sarcasm Detection in Online Discussion ForumsCode0
Reasoning with Sarcasm by Reading In-between0
Facebook Reaction-Based Emotion Classifier as Cue for Sarcasm Detection0
Sarcasm Target Identification: Dataset and An Introductory ApproachCode0
SentiNLP at IJCNLP-2017 Task 4: Customer Feedback Analysis Using a Bi-LSTM-CNN Model0
Towards Lower Bounds on Number of Dimensions for Word Embeddings0
"Having 2 hours to write a paper is fun!": Detecting Sarcasm in Numerical Portions of Text0
Magnets for Sarcasm: Making Sarcasm Detection Timely, Contextual and Very PersonalCode0
Detecting Sarcasm Using Different Forms Of Incongruity0
The Impact of Figurative Language on Sentiment Analysis0
Computational Sarcasm0
Cross-lingual Flames Detection in News Discussions0
Human Centered NLP with User-Factor Adaptation0
Using millions of emoji occurrences to learn any-domain representations for detecting sentiment, emotion and sarcasmCode0
CrystalNest at SemEval-2017 Task 4: Using Sarcasm Detection for Enhancing Sentiment Classification and Quantification0
Expect the unexpected: Harnessing Sentence Completion for Sarcasm Detection0
Learning Cognitive Features from Gaze Data for Sentiment and Sarcasm Classification using Convolutional Neural Network0
Context-Dependent Sentiment Analysis in User-Generated VideosCode0
A Large Self-Annotated Corpus for SarcasmCode0
Leveraging Cognitive Features for Sentiment Analysis0
Harnessing Cognitive Features for Sarcasm Detection0
Tweet Sarcasm Detection Using Deep Neural NetworkCode0
Quantifying sentence complexity based on eye-tracking measures0
CNN- and LSTM-based Claim Classification in Online User Comments0
Sarcasm Detection : Building a Contextual Hierarchy0
How Challenging is Sarcasm versus Irony Classification?: A Study With a Dataset from English Literature0
`Who would have thought of that!': A Hierarchical Topic Model for Extraction of Sarcasm-prevalent Topics and Sarcasm Detection0
Robust Gram EmbeddingsCode0
A Deeper Look into Sarcastic Tweets Using Deep Convolutional Neural NetworksCode0
Automatic Identification of Sarcasm Target: An Introductory Approach0
Are Word Embedding-based Features Useful for Sarcasm Detection?0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1PaLM 2(few-shot, k=3, CoT)Accuracy84.8Unverified
2PaLM 2 (few-shot, k=3, Direct)Accuracy78.7Unverified
3PaLM 540B (few-shot, k=3)Accuracy78.1Unverified
4BLOOM 176B (few-shot, k=3)Accuracy72.47Unverified
5Bloomberg GPT (few-shot, k=3)Accuracy69.66Unverified
6GPT-NeoX (few-shot, k=3)Accuracy62.36Unverified
7Chinchilla-70B (few-shot, k=5)Accuracy58.6Unverified
8Gopher-280B (few-shot, k=5)Accuracy48.3Unverified
#ModelMetricClaimedVerifiedStatus
1BERT+Aspect-based approachesF10.74Unverified
2RoBERTa_large - (Separated Context-Response)F10.72Unverified
#ModelMetricClaimedVerifiedStatus
1RoBERTa_large (Context-Response)F10.77Unverified
2BERTF10.73Unverified
#ModelMetricClaimedVerifiedStatus
1CASCADEAccuracy77Unverified
2Bag-of-BigramsAccuracy75.8Unverified
#ModelMetricClaimedVerifiedStatus
1Bag-of-BigramsAccuracy76.5Unverified
2CASCADEAccuracy74Unverified
#ModelMetricClaimedVerifiedStatus
1RoBERTa + Mutation Data AugmentationF1-Score0.41Unverified
#ModelMetricClaimedVerifiedStatus
1MUStARD++Precision70.2Unverified
#ModelMetricClaimedVerifiedStatus
1Bag-of-WordsAvg F127Unverified
#ModelMetricClaimedVerifiedStatus
1BARTR136.88Unverified