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📄 Abstract
Abstract: We address the challenge of adopting language models (LMs) for embodied tasks
in dynamic environments, where online access to large-scale inference engines
or symbolic planners is constrained due to latency, connectivity, and resource
limitations. To this end, we present NeSyPr, a novel embodied reasoning
framework that compiles knowledge via neurosymbolic proceduralization, thereby
equipping LM-based agents with structured, adaptive, and timely reasoning
capabilities. In NeSyPr, task-specific plans are first explicitly generated by
a symbolic tool leveraging its declarative knowledge. These plans are then
transformed into composable procedural representations that encode the plans'
implicit production rules, enabling the resulting composed procedures to be
seamlessly integrated into the LM's inference process. This neurosymbolic
proceduralization abstracts and generalizes multi-step symbolic structured
path-finding and reasoning into single-step LM inference, akin to human
knowledge compilation. It supports efficient test-time inference without
relying on external symbolic guidance, making it well suited for deployment in
latency-sensitive and resource-constrained physical systems. We evaluate NeSyPr
on the embodied benchmarks PDDLGym, VirtualHome, and ALFWorld, demonstrating
its efficient reasoning capabilities over large-scale reasoning models and a
symbolic planner, while using more compact LMs.
Authors (3)
Wonje Choi
Jooyoung Kim
Honguk Woo
Submitted
October 22, 2025
Key Contributions
NeSyPr introduces neurosymbolic proceduralization to equip LM-based agents with structured, adaptive, and timely reasoning capabilities for embodied tasks in dynamic environments. This framework compiles knowledge into composable procedural representations that integrate seamlessly into LM inference, enabling efficient multi-step reasoning without external symbolic planners.
Business Value
Enables more capable and efficient robots and AI agents in real-world, dynamic environments where traditional planning or large inference engines are not feasible. This can lead to improved automation in logistics, exploration, and interactive systems.