AICLFeb 17

Enhancing Building Semantics Preservation in AI Model Training with Large Language Model Encodings

arXiv:2602.15791v11 citationsh-index: 6Proceedings of the International Symposium on Automation and Robotics in Construction (IAARC)
Originality Incremental advance
AI Analysis

This work addresses the limitation of conventional encoding methods in conveying relationships among building subtypes for the AECO industry, representing an incremental improvement with specific gains.

This study tackled the problem of preserving nuanced building semantics in AI model training by proposing a novel approach using large language model (LLM) embeddings as encodings, which outperformed conventional one-hot encoding with a weighted average F1-score of 0.8766 compared to 0.8475.

Accurate representation of building semantics, encompassing both generic object types and specific subtypes, is essential for effective AI model training in the architecture, engineering, construction, and operation (AECO) industry. Conventional encoding methods (e.g., one-hot) often fail to convey the nuanced relationships among closely related subtypes, limiting AI's semantic comprehension. To address this limitation, this study proposes a novel training approach that employs large language model (LLM) embeddings (e.g., OpenAI GPT and Meta LLaMA) as encodings to preserve finer distinctions in building semantics. We evaluated the proposed method by training GraphSAGE models to classify 42 building object subtypes across five high-rise residential building information models (BIMs). Various embedding dimensions were tested, including original high-dimensional LLM embeddings (1,536, 3,072, or 4,096) and 1,024-dimensional compacted embeddings generated via the Matryoshka representation model. Experimental results demonstrated that LLM encodings outperformed the conventional one-hot baseline, with the llama-3 (compacted) embedding achieving a weighted average F1-score of 0.8766, compared to 0.8475 for one-hot encoding. The results underscore the promise of leveraging LLM-based encodings to enhance AI's ability to interpret complex, domain-specific building semantics. As the capabilities of LLMs and dimensionality reduction techniques continue to evolve, this approach holds considerable potential for broad application in semantic elaboration tasks throughout the AECO industry.

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