Publication detail

A Game for Crowdsourcing Adversarial Examples for False Information Detection

ČEGIŇ, J.

Original Title

A Game for Crowdsourcing Adversarial Examples for False Information Detection

Type

conference paper

Language

English

Original Abstract

False information detection models are susceptible to adversarial attacks. Such susceptibility is a critical weakness of detection models. Automated creation of adversarial samples can ultimately help to augment training sets and create more robust detection models. However, automatically generated adversarial samples often do not preserve the meaning contained in the original text, leading to information loss. There is a need for adversarial sample generators that can preserve the original meaning. To explore the properties such generators should have and to inform their future design, we conducted a study to collect adversarial samples from human agents using a Game with a purpose (GWAP). Players goal is to modify a given tweet until a detection model is tricked thus creating an adversarial sample. We qualitatively analysed the collected adversarial samples and identified desired properties/strategies that an adversarial meaning-preserving generator should exhibit. These strategies are validated on detection models based on a transformer and LSTM models to confirm their applicability on different models. Based on these findings, we propose a novel generator approach that will exhibit the desired properties in order to generate high-quality information-preserving adversarial samples.

Keywords

adversarial data generation, false information detection, game with a purpose, human interaction task, machine learning

Authors

ČEGIŇ, J.

Released

1. 12. 2022

Publisher

CEUR-WS.org

Location

Vídeň

ISBN

1613-0073

Periodical

CEUR Workshop Proceedings

Year of study

2022

Number

2022

State

Federal Republic of Germany

Pages from

13

Pages to

25

Pages count

17

URL

BibTex

@inproceedings{BUT182948,
  author="Ján {Čegiň}",
  title="A Game for Crowdsourcing Adversarial Examples for False Information Detection",
  booktitle="CEUR Workshop Proceedings",
  year="2022",
  journal="CEUR Workshop Proceedings",
  volume="2022",
  number="2022",
  pages="13--25",
  publisher="CEUR-WS.org",
  address="Vídeň",
  issn="1613-0073",
  url="https://ceur-ws.org/Vol-3275/paper2.pdf"
}