Challenge: a new system extracts supporting and refuting claims from COVID-19 related news . the system is publicly available at GitHub and DockerHub, with complete documentation.
Approach: They propose a COVID-19 Claim Radar system that extracts supporting and refuting claims . the system leverages Wikidata as the hub to consolidate coreferential knowledge elements .
Outcome: The system extracts supporting and refuting claims from COVID-19 pandemic information . it leverages Wikidata as the hub to merge coreferential knowledge elements .

Similar Papers

Claim Extraction and Law Matching for COVID-19-related Legislation (2022.lrec-1)

Copied to clipboard

Challenge: Existing approaches to extract legal claims from news articles and match them with applicable laws are difficult for laypersons to learn since news articles do not refer to underlying laws.
Approach: They propose an automated approach to extract legal claims from news articles and match the claims with applicable laws.
Outcome: The proposed model achieves 46.7 F1 for claim extraction and 91.4 F1 law matching, despite conceptual limitations.
COVID-Fact: Fact Extraction and Verification of Real-World Claims on COVID-19 Pandemic (2021.acl-long)

Copied to clipboard

Challenge: a new method for fact-checking is needed to detect disinformation on the web . a dataset COVID-Fact contains 4,086 claims concerning the COVId-19 pandemic .
Approach: They propose a FEVER-like dataset COVID-Fact of 4,086 claims concerning the COVId-19 pandemic . they automatically detect true claims and their source articles and generate counter-claims using automatic methods .
Outcome: The proposed method reduces the cost of building domain-specific datasets for detecting misinformation . the proposed dataset contains 4,086 claims concerning the COVID-19 pandemic .
Extracting a Knowledge Base of COVID-19 Events from Social Media (2022.coling-1)

Copied to clipboard

Challenge: a flood of COVID-19 related information has appeared on social media since December 2019 . this includes reports on public figures who have tested positive/negative for the virus .
Approach: They construct a corpus of 10,000 tweets with annotated public reports of five COVID-19 events, using slot-filling questions to fill in slots.
Outcome: The proposed method can be quickly applied to develop knowledge bases for new domains in response to emerging crises, including natural disasters or future disease outbreaks.
Fighting the COVID-19 Infodemic: Modeling the Perspective of Journalists, Fact-Checkers, Social Media Platforms, Policy Makers, and the Society (2021.findings-emnlp)

Copied to clipboard

Challenge: a dataset of 16K manually annotated tweets is used to analyze disinformation . the democratic nature of social media has raised questions about the quality and the factuality of the information that is shared on these platforms.
Approach: They use a dataset of manually annotated tweets to analyze COVID-19 disinformation . they show that tweets contain fake cures, rumors, conspiracy theories and xenophobia .
Outcome: The proposed dataset shows that it is useful in monolingual vs. multilingual settings.
PANACEA: An Automated Misinformation Detection System on COVID-19 (2023.eacl-demo)

Copied to clipboard

Challenge: Using social media and fact-checking to detect misinformation is not enough to prevent the spread of false information.
Approach: They propose a web-based misinformation detection system PANACEA which has two modules, fact-checking and rumour detection.
Outcome: The system outperforms state-of-the-art methods and adapts graph convolutional networks model to detect rumours based on tweets rather than knowledge bases.
Empowering the Fact-checkers! Automatic Identification of Claim Spans on Twitter (2022.emnlp-main)

Copied to clipboard

Challenge: Current vogue is to employ manual fact-checkers to efficiently classify and verify such data to combat this avalanche of misinformation and fake news.
Approach: They propose a large-scale Twitter corpus with token-level claim spans on more than 7.5k tweets and a model that automatically detects and extracts the snippets of misinformation.
Outcome: The proposed model outperforms baseline systems on several evaluation metrics, improving by 1.5 points.
Automatic Identification of COVID-19-Related Conspiracy Narratives in German Telegram Channels and Chats (2024.lrec-main)

Copied to clipboard

Challenge: Existing methods to identify and track conspiracy narratives are difficult to track and use because of their short-lived nature.
Approach: They analysed 1,000 German Telegram posts tagged with 14 fine-grained conspiracy narrative labels by three independent annotators.
Outcome: The proposed methods compare well with off-the-shelf methods and human performance.
Stance Detection in COVID-19 Tweets (2021.acl-long)

Copied to clipboard

Challenge: a global pandemic of COVID-19 has forced major changes in our daily lives . a new stance detection dataset is being used to track the stances of Twitter users .
Approach: They use Twitter stance data to collect stances on topics related to the pandemic . they train models to take advantage of large amounts of unlabeled data .
Outcome: The proposed model improves on existing stance detection datasets and unlabeled data.
MM-Claims: A Dataset for Multimodal Claim Detection in Social Media (2022.findings-naacl)

Copied to clipboard

Challenge: Using image and text, we investigate the role of image and texts in fake news detection . claim detection is a step in fighting misinformation and as a precursor to prioritize potentially false information for fact-checking.
Approach: They propose a dataset that consists of tweets and corresponding images for claim detection . they evaluate strong unimodal and multimodal baselines and analyze drawbacks of current models .
Outcome: The proposed dataset evaluates strong unimodal and multimodal baselines and examines drawbacks of existing models.
Natural Language Inference with Self-Attention for Veracity Assessment of Pandemic Claims (2022.naacl-main)

Copied to clipboard

Challenge: Existing datasets focus on a single medium, information domain or specific application . authors propose novel methods for automated veracity assessment based on Natural Language Inference .
Approach: They propose to build a PANACEA dataset that combines different data sources with different foci to ensure a unique set of claims.
Outcome: The proposed methods are competitive with SOTA methods and provide a detailed discussion.

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