News
Paper list is online
Written on 25.04.2023 10:05 by Xinyue Shen
Dear all,
The paper list is online, please select three papers (ranked by preference) and send them to Xinyue Shen (xinyue.shen@cispa.de) by today (25.04.2023) 23:59.
Note that the assignment will be based on the first-come, first-served principle.
The assignment will be informed tomorrow 1 pm.
Best,
Xinyue
Paper list
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On Xing Tian and the Perseverance of Anti-China Sentiment Online.
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SoK: Hate, Harassment, and the Changing Landscape of Online Abuse.
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On the Evolution of (Hateful) Memes by Means of Multimodal Contrastive Learning.
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Understanding and Detecting Hateful Content using Contrastive Learning.
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The Evolution of the Manosphere Across the Web.
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(Mis) information dissemination in WhatsApp: Gathering, analyzing and countermeasures.
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"It is just a flu": Assessing the Effect of Watch History on YouTube's Pseudoscientific Video Recommendations.
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Understanding the Use of Fauxtography on Social Media.
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Fact-Checking Meets Fauxtography: Verifying Claims About Images.
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Why So Toxic? Measuring and Triggering Toxic Behavior in Open-Domain Chatbots.
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Challenges in Detoxifying Language Models.
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Anticipating Safety Issues in e2e Conversational AI: Framework and Tooling.
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Towards Understanding and Mitigating Social Biases in Language Models.
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Automatically Auditing Large Language Models via Discrete Optimization.
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Red Teaming Language Models to Reduce Harms: Methods, Scaling Behaviors, and Lessons Learned.
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Self-Diagnosis and Self-Debiasing: A Proposal for Reducing Corpus-Based Bias in NLP.
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Synthetic Lies: Understanding AI-Generated Misinformation and Evaluating Algorithmic and Human Solutions
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Understanding and Evaluating Racial Biases in Image Captioning.
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DALL-Eval: Probing the Reasoning Skills and Social Biases of Text-to-Image Generative Transformers.
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Safe Latent Diffusion: Mitigating Inappropriate Degeneration in Diffusion Models.
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DE-FAKE: Detection and Attribution of Fake Images Generated by Text-to-Image Diffusion Models.
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DeepPhish: Understanding User Trust Towards Artificially Generated Profiles in Online Social Networks.