Creating an AI Observer: Generative Semantic Workspaces
Pavan Holur, Shreyas Rajesh, David Chong, Vwani Roychowdhury

TL;DR
This paper introduces GSW, a generative semantic workspace framework leveraging large language models to emulate human-like document understanding, tracking actors, roles, and evolution over time for improved semantic extraction and future behavior prediction.
Contribution
The paper presents GSW, a novel generative semantic workspace architecture with Operator and Reconciler components, enabling dynamic, actor-centric semantic mapping and reasoning in AI systems.
Findings
GSW achieves approximately 94% accuracy on multi-sentence semantics extraction tasks.
GSW outperforms baseline models by 15% in natural language inference tasks.
GSW demonstrates a 35% improvement over existing models in question answering accuracy.
Abstract
An experienced human Observer reading a document -- such as a crime report -- creates a succinct plot-like comprising different actors, their prototypical roles and states at any point, their evolution over time based on their interactions, and even a map of missing Semantic parts anticipating them in the future. . We introduce the enerative emantic orkspace (GSW) -- comprising an and a -- that leverages advancements in LLMs to create a generative-style Semantic framework, as opposed to a traditionally predefined set of lexicon labels. Given a text segment that describes an ongoing situation, the instantiates actor-centric Semantic maps (termed ``Workspace instance''…
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Taxonomy
TopicsSemantic Web and Ontologies · AI-based Problem Solving and Planning · Business Process Modeling and Analysis
MethodsSparse Evolutionary Training
