Evaluating the Robustness of Non-Credible Text Identification by Anticipating Adversarial Actions

MSCA (Marie Skłodowska-Curie)HORIZON-TMA-MSCA-PF-EFID: 101060930
EC Contribution
€1,653
Consortium Size
1 orgs
Start Year
2022
Summary

As challenges posed by misinformation become apparent in the modern digital society, state-of-the-art methods of Artificial Intelligence, especially Natural Language Processing (NLP) and Machine Learning, are considered as countermeasures. Indeed, previous research has shown that NLP solutions can detect phenomena such as fake news, social media bots or usage of propaganda techniques. However, little attention has been given to the robustness of these approaches, which is especially important in the case of deliberate misinformation, whose authors would likely attempt to deceive any automatic filtering algorithm to achieve their goals.The goal of the ERINIA project is to explore the robustness of text classifiers in this application area by investigating methods for detecting adversarial examples. Such methods aim to perform small perturbations to a given text piece, so that its meaning is preserved, but the output of the investigated classifier is reversed. To that end, previously unexplored directions will be pursued, including training reinforcement learning solutions and leveraging research on simplification and style transfer. Finally, the developed tools will be used to check the robustness of the current state-of-the-art misinformation detection solutions.The project includes a range of training activities for the researcher and a plan for dissemination of the obtained results to various research communities. It also takes into account the society at large, as the project outcomes can inform further discussion on whether automatic content filtering is a viable solution to the misinformation problem.

Consortium (1)

Project Results (13)

Source: CORDIS, the EU research results database.

Publications (10)
AffilGood: Building reliable institution name disambiguation tools to improve scientific literature analysis
Proceedings of the Fourth Workshop on Scholarly Document Processing (SDP 2024)· 2024
Nicolau Duran-Silva, Pablo Accuosto, Piotr Przybyła, Horacio Saggion
Attacking Misinformation Detection Using Adversarial Examples Generated by Language Models
arXiv preprint· 2024DOI
Piotr Przybyła
Know Thine Enemy: Adaptive Attacks on Misinformation Detection Using Reinforcement Learning
Proceedings of the 14th Workshop on Computational Approaches to Subjectivity, Sentiment, & Social Media Analysis· 2024
Piotr Przybyła, Euan McGill, Horacio Saggion
Overview of the CLEF-2024 CheckThat! Lab Task 6 on Robustness of Credibility Assessment with Adversarial Examples (InCrediblAE)
Working Notes of CLEF 2024 - Conference and Labs of the Evaluation Forum· 2024
Piotr Przybyła, Ben Wu, Alexander Shvets, Yida Mu, Kim Chaeng Sheang, Xingyi Song, Horacio Saggion
Overview of the CLEF-2024 CheckThat! Lab: Check-Worthiness, Subjectivity, Persuasion, Roles, Authorities, and Adversarial Robustness
Lecture Notes in Computer Science, Experimental IR Meets Multilinguality, Multimodality, and Interaction· 2024DOI
Alberto Barrón-Cedeño, Firoj Alam, Julia Maria Struß, Preslav Nakov, Tanmoy Chakraborty, Tamer Elsayed, Piotr Przybyła, Tommaso Caselli, Giovanni Da San Martino, Fatima Haouari, Maram Hasanain, Chengkai Li, Jakub Piskorski, Federico Ruggeri, Xingyi Song, Reem Suwaileh
The CLEF-2024 CheckThat! Lab: Check-Worthiness, Subjectivity, Persuasion, Roles, Authorities, and Adversarial Robustness
Lecture Notes in Computer Science, Advances in Information Retrieval· 2024DOI
Alberto Barrón-Cedeño, Firoj Alam, Tanmoy Chakraborty, Tamer Elsayed, Preslav Nakov, Piotr Przybyła, Julia Maria Struß, Fatima Haouari, Maram Hasanain, Federico Ruggeri, Xingyi Song, Reem Suwaileh
ERINIA: Evaluating the Robustness of Non-Credible Text Identification by Anticipating Adversarial Actions
Proceedings of the Workshop on NLP applied to Misinformation co-located with 39th International Conference of the Spanish Society for Natural Language Processing (SEPLN 2023)· 2023
Piotr Przybyła, Horacio Saggion
I've Seen Things You Machines Wouldn't Believe: Measuring Content Predictability to Identify Automatically-Generated Text
Proceedings of the 5th Workshop on Iberian Languages Evaluation Forum (IberLEF 2023)· 2023
Piotr Przybyła, Nicolau Duran-Silva, Santiago Egea-Gómez
Verifying the Robustness of Automatic Credibility Assessment
arXiv preprint· 2023DOI
Piotr Przybyła, Alexander Shvets, Horacio Saggion
Deanthropomorphising NLP: Can a Language Model Be Conscious?
arXiv preprint· 2022DOI
Piotr Przybyła, Matthew Shardlow
Deliverables (2)
Other Results (1)
Periodic Reporting for period 1 - ERINIA (Evaluating the Robustness of Non-Credible Text Identification by Anticipating Adversarial Actions)