Suggestion System
Suggestion systems aim to proactively offer relevant information or actions to users, improving efficiency and user experience across diverse applications. Current research focuses on leveraging large language models (LLMs) and other deep learning architectures to generate contextually appropriate suggestions, often incorporating techniques like chain-of-thought prompting and reinforcement learning for improved accuracy and efficiency. These systems are being deployed in various fields, including e-commerce, code authoring, and incident management, demonstrating their potential to enhance human-computer interaction and automate complex tasks. Ongoing work emphasizes improving the quality, relevance, and user acceptance of suggestions, as well as addressing challenges related to computational cost and potential biases in the underlying models.
Papers
Suggestion Lists vs. Continuous Generation: Interaction Design for Writing with Generative Models on Mobile Devices Affect Text Length, Wording and Perceived Authorship
Florian Lehmann, Niklas Markert, Hai Dang, Daniel Buschek
Interacting with next-phrase suggestions: How suggestion systems aid and influence the cognitive processes of writing
Advait Bhat, Saaket Agashe, Niharika Mohile, Parth Oberoi, Ravi Jangir, Anirudha Joshi