Pretrained Embeddings as a Behavior Specification Mechanism
Abstract
We propose an approach to formally specifying the behavioral properties of systems that rely on a perception model for interactions with the physical world. The key idea is to introduce embeddings -- mathematical representations of a real-world concept -- as a first-class construct in a specification language, where properties are expressed in terms of distances between a pair of ideal and observed embeddings. To realize this approach, we propose a new type of temporal logic called Embedding Temporal Logic (ETL), and describe how it can be used to express a wider range of properties about AI-enabled systems than previously possible. We demonstrate the applicability of ETL through a preliminary evaluation involving planning tasks in robots that are driven by foundation models; the results are promising, showing that embedding-based specifications can be used to steer a system towards desirable behaviors.
Keywords
Cite
@article{arxiv.2503.02012,
title = {Pretrained Embeddings as a Behavior Specification Mechanism},
author = {Parv Kapoor and Abigail Hammer and Ashish Kapoor and Karen Leung and Eunsuk Kang},
journal= {arXiv preprint arXiv:2503.02012},
year = {2025}
}
Comments
18 pages, 6 figures