Generative Language Model
Generative language models (GLMs) are artificial intelligence systems designed to produce human-like text, aiming to improve tasks like text summarization, question answering, and creative writing. Current research focuses on enhancing GLMs' accuracy, addressing biases and hallucinations, and improving efficiency through techniques like retrieval-augmented generation (RAG), fine-tuning with smaller, specialized models, and optimizing model architectures (e.g., transformers). These advancements have significant implications for various fields, including education (automated scoring), scientific discovery (catalyst design), and addressing societal challenges (mitigating harmful outputs), but also raise concerns about ethical implications and potential biases.
Papers
Generative Language Models on Nucleotide Sequences of Human Genes
Musa Nuri Ihtiyar, Arzucan Ozgur
The Extractive-Abstractive Axis: Measuring Content "Borrowing" in Generative Language Models
Nedelina Teneva
Building Socio-culturally Inclusive Stereotype Resources with Community Engagement
Sunipa Dev, Jaya Goyal, Dinesh Tewari, Shachi Dave, Vinodkumar Prabhakaran