In this study, researchers leverage gaming to enhance knowledge graphs for explainable generative AI applications.
This preliminary research introduces the GAME-KG framework, standing for “Gaming for Augmenting Metadata and Enhancing Knowledge Graphs.” GAME-KG is a federated approach to modifying explicit as well as implicit connections in KGs by using crowdsourced feedback collected through video games. GAME-KG is shown through two demonstrations: a Unity test scenario from Dark Shadows, a video game that collects feedback on KGs parsed from US Department of Justice (DOJ) Press Releases on human trafficking, and a following experiment where OpenAI’s GPT-4 is prompted to answer questions based on a modified and unmodified KG. Initial results suggest that GAME-KG can be an effective framework for enhancing KGs while simultaneously providing an explainable set of structured facts verified by humans. External knowledge graphs (KGs) can be used to augment large language models (LLMs), while simultaneously providing an explainable knowledge base of facts that can be inspected by a human. This approach may be particularly valuable in domains where explainability is critical, like human trafficking data analysis. However, creating KGs can pose challenges. KGs parsed from documents may comprise explicit connections (those directly stated by a document) but miss implicit connections (those obvious to a human although not directly stated). (Published Abstract Provided)
Downloads
Similar Publications
- Correctional Officer Safety and Use of Safety Equipment in Correctional Facilities
- Raman spectroscopic signature of vaginal fluid and its potential application in forensic body fluid identification
- Trends in the Commission of Crime Among Narcotic Addicts Over Successive Periods of Addiction and Nonaddiction