CLAIJan 14, 2025

Exploring Narrative Clustering in Large Language Models: A Layerwise Analysis of BERT

arXiv:2501.08053v12 citationsh-index: 5
AI Analysis

This work provides insights into how transformer models prioritize semantic over stylistic features, contributing to understanding linguistic encoding in AI, though it is incremental in nature.

This study investigated BERT's internal mechanisms for clustering narrative content and authorial style across its layers, revealing strong semantic clustering in later layers but minimal clustering for individual authorial style.

This study investigates the internal mechanisms of BERT, a transformer-based large language model, with a focus on its ability to cluster narrative content and authorial style across its layers. Using a dataset of narratives developed via GPT-4, featuring diverse semantic content and stylistic variations, we analyze BERT's layerwise activations to uncover patterns of localized neural processing. Through dimensionality reduction techniques such as Principal Component Analysis (PCA) and Multidimensional Scaling (MDS), we reveal that BERT exhibits strong clustering based on narrative content in its later layers, with progressively compact and distinct clusters. While strong stylistic clustering might occur when narratives are rephrased into different text types (e.g., fables, sci-fi, kids' stories), minimal clustering is observed for authorial style specific to individual writers. These findings highlight BERT's prioritization of semantic content over stylistic features, offering insights into its representational capabilities and processing hierarchy. This study contributes to understanding how transformer models like BERT encode linguistic information, paving the way for future interdisciplinary research in artificial intelligence and cognitive neuroscience.

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