CLJan 13, 2025

GPT as a Monte Carlo Language Tree: A Probabilistic Perspective

arXiv:2501.07641v21 citationsh-index: 9
AI Analysis

This provides a probabilistic framework for analyzing LLM behavior, addressing issues like hallucination and reasoning, but it is incremental as it builds on existing model interpretations.

The paper tackles the lack of quantitative understanding in how large language models (LLMs) like GPT learn from data by proposing a Monte Carlo Language Tree perspective, showing that over 87% of GPT output tokens can be recalled by this data representation and that larger models converge more closely to it.

Large Language Models (LLMs), such as GPT, are considered to learn the latent distributions within large-scale web-crawl datasets and accomplish natural language processing (NLP) tasks by predicting the next token. However, this mechanism of latent distribution modeling lacks quantitative understanding and analysis. In this paper, we propose a novel perspective that any language dataset can be represented by a Monte Carlo Language Tree (abbreviated as ``Data-Tree''), where each node denotes a token, each edge denotes a token transition probability, and each sequence has a unique path. Any GPT-like language model can also be flattened into another Monte Carlo Language Tree (abbreviated as ``GPT-Tree''). Our experiments show that different GPT models trained on the same dataset exhibit significant structural similarity in GPT-Tree visualization, and larger models converge more closely to the Data-Tree. More than 87\% GPT output tokens can be recalled by Data-Tree. These findings may confirm that the reasoning process of LLMs is more likely to be probabilistic pattern-matching rather than formal reasoning, as each model inference seems to find a context pattern with maximum probability from the Data-Tree. Furthermore, we provide deeper insights into issues such as hallucination, Chain-of-Thought (CoT) reasoning, and token bias in LLMs.

Foundations

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