Machine Generated Text: A Comprehensive Survey of Threat Models and Detection Methods

Advances in natural language generation (NLG) have resulted in machine generated text that is increasingly difficult to distinguish from human authored text. Powerful open-source models are freely available, and user-friendly tools democratizing access to generative models are proliferating. The great potential of state-of-the-art NLG systems is tempered by the multitude of avenues for abuse. Detection of machine generated text is a key countermeasure for reducing abuse of NLG models, with significant technical challenges and numerous open problems. We provide a survey that includes both 1) an extensive analysis of threat models posed by contemporary NLG systems, and 2) the most complete review of machine generated text detection methods to date. This survey places machine generated text within its cybersecurity and social context, and provides strong guidance for future work addressing the most critical threat models, and ensuring detection systems themselves demonstrate trustworthiness through fairness, robustness, and accountability. Read More

#adversarial, #chatbots, #nlp

I’m Bill Gates, and I’m back for my 11th AMA. Ask Me Anything.

I recently found out that I’m going to become a grandfather this year and spent some time thinking about what matters as we head into 2023.

Feel free to ask what I’m excited about in the year ahead, our work at the foundation, or anything else.

DWright_5: Hi Bill. Many years ago, I think around 2000, I heard you say something on TV like, “people are vastly overestimating what the internet will be like in 5 years, and vastly underestimating what it will be like in 10 years.”

Is any mammoth technology shift at a similar stage right now? Any tech shift – not necessarily the Internet

thisisbillgates: AI is the big one. I don’t think Web3 was that big or that metaverse stuff alone was revolutionary but AI is quite revolutionary. Read More

#artificial-intelligence