Improving Open Language Models By Learning From Organic Interactions | Awesome LLM Papers Add your paper to Awesome LLM Papers

Improving Open Language Models By Learning From Organic Interactions

Jing Xu, da Ju, Joshua Lane, Mojtaba Komeili, Eric Michael Smith, Megan Ung, Morteza Behrooz, William Ngan, Rashel Moritz, Sainbayar Sukhbaatar, Y-Lan Boureau, Jason Weston, Kurt Shuster . Journal of Computer Science and Technology 2023 – 55 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Compositional Generalization Ethics & Fairness Interdisciplinary Approaches Multimodal Semantic Representation Security Training Techniques

We present BlenderBot 3x, an update on the conversational model BlenderBot 3, which is now trained using organic conversation and feedback data from participating users of the system in order to improve both its skills and safety. We are publicly releasing the participating de-identified interaction data for use by the research community, in order to spur further progress. Training models with organic data is challenging because interactions with people “in the wild” include both high quality conversations and feedback, as well as adversarial and toxic behavior. We study techniques that enable learning from helpful teachers while avoiding learning from people who are trying to trick the model into unhelpful or toxic responses. BlenderBot 3x is both preferred in conversation to BlenderBot 3, and is shown to produce safer responses in challenging situations. While our current models are still far from perfect, we believe further improvement can be achieved by continued use of the techniques explored in this work.

Similar Work