Challenge: Existing humor computing research focuses on content while neglecting interaction relationships in social media.
Approach: They propose a dataset which introduces social context information from social media . they propose 'humor recognition' task and 'horror evaluation task'
Outcome: The proposed model incorporates social context information from social media . it shows that it is efficient and can be used to evaluate humor in real life .

Similar Papers

Recognizing Humour using Word Associations and Humour Anchor Extraction (C18-1)

Copied to clipboard

Challenge: Using humour anchors to improve the performance of humor recognition and interpretation is difficult for computers.
Approach: They propose to use word associations to improve humour recognition models by using humor anchors to improve the performance of semantic features.
Outcome: The proposed models improve the performance of humour recognition and interpretation tasks.
Humor Recognition Using Deep Learning (N18-2)

Copied to clipboard

Challenge: Humor is an essential but most fascinating element in personal communication.
Approach: They propose a convolutional neural network with extensive filter size and filter number to increase the depth of networks.
Outcome: The proposed model outperforms existing models on accuracy, precision and recall . the proposed model can learn to distinguish between humorous and nonhumorous texts .
Large Dataset and Language Model Fun-Tuning for Humor Recognition (P19-1)

Copied to clipboard

Challenge: Humor recognition datasets contain only English texts and focus on puns.
Approach: They collected a dataset of jokes and funny dialogues in Russian and complemented them carefully with unfunny texts with similar lexical properties.
Outcome: The proposed method is based on the universal language model finetuning and has an F1 score of 0.91 on a test set.
UR-FUNNY: A Multimodal Language Dataset for Understanding Humor (D19-1)

Copied to clipboard

Challenge: Humor is a unique and creative communicative behavior often displayed during social interactions.
Approach: They present a dataset that allows to model multimodal language used in expressing humor using text, visual and acoustic communication.
Outcome: The proposed framework opens the door to understanding multimodal language used in expressing humor.
Development and Validation of a Corpus for Machine Humor Comprehension (2020.lrec-1)

Copied to clipboard

Challenge: a Chinese humor corpus was labeled with five levels of funniness, eight skill sets of humor, and six dimensions of intent by only one annotator.
Approach: They develop a Chinese humor corpus with 3,365 jokes labeled with five levels of funniness, eight skill sets of humor, and six dimensions of intent by only one annotator.
Outcome: The proposed corpus contains 3,365 jokes from over 40 sources.
Telling the Whole Story: A Manually Annotated Chinese Dataset for the Analysis of Humor in Jokes (D19-1)

Copied to clipboard

Challenge: Humor plays important role in human communication, which makes it important problem for natural language processing.
Approach: They propose a novel annotation scheme to give scenarios of how humor arises in text . they report reasonable agreement between annotators and analyze the dataset .
Outcome: The proposed scheme gives scenarios of how humor arises in text . it contains key words that trigger humor, character relationship, scene, and humor categories .
Can Language Models Laugh at YouTube Short-form Videos? (2023.emnlp-main)

Copied to clipboard

Challenge: Existing datasets that focus on verbal cues and focus on short-form funny videos focus on focusing on verbs and visual cue.
Approach: They curate a user-generated dataset of 10K multimodal funny videos from YouTube and annotate each video with timestamps and explanations for funny moments.
Outcome: The proposed dataset improves the ability of large language models to understand humor.
Humor Detection in English-Hindi Code-Mixed Social Media Content : Corpus and Baseline System (L18-1)

Copied to clipboard

Challenge: a growing number of social media users are using code-mixing to detect humor . linguistics researchers are looking for methods to detect humorous content in text .
Approach: They analyze a corpus of English-Hindi code-mixed tweets annotated with humorous(H) tags.
Outcome: The proposed method detects humor in code-mixed tweets in English-Hindi.
MUCH: A Multimodal Corpus Construction for Conversational Humor Recognition Based on Chinese Sitcom (2024.lrec-main)

Copied to clipboard

Challenge: Existing multimodal corpora for conversational humor are coarse-grained and insufficient to support the conversational comprehension task.
Approach: They constructed a multimodal humor corpus based on a Chinese sitcom and used both unimodal and multimodal methods to test the corpus.
Outcome: The proposed method outperforms unimodal and multimodal methods in the evaluation of a Chinese sitcom for conversational humor recognition.
CHoRaL: Collecting Humor Reaction Labels from Millions of Social Media Users (2021.emnlp-main)

Copied to clipboard

Challenge: Humor detection is difficult due to individualistic and cultural differences in humor perception . authors propose a framework to generate perceived humor labels on Facebook posts .
Approach: They propose a framework to generate perceived humor labels on Facebook posts . they use the naturally available user reactions to these posts to generate the labels .
Outcome: The proposed framework generates perceived humor labels on Facebook posts with no manual annotation needed.

What is GenGO?

GenGO is an NLP powered publication search system. It currenctly indexes 30k+ papers from ACL Anthology, and implements multi-aspect summarization, semantic search, and more!

Information

About
Limitations