VISTA: Visualization of Token Attribution via Efficient Analysis
Syed Ahmed, Bharathi Vokkaliga Ganesh, Jagadish Babu P, Karthick Selvaraj, Praneeth Talluri, Sanket Hingne, Anubhav Kumar, Anushka Yadav, Pratham Kumar Verma, Kiranmayee Janardhan, Mandanna A N

TL;DR
VISTA introduces a lightweight, model-agnostic token attribution method for LLMs that uses perturbation and a three-matrix framework to generate relevance maps without extra computational costs.
Contribution
It presents a novel perturbation-based, model-agnostic approach with a three-matrix analytical framework for efficient token importance visualization in generative AI.
Findings
Provides a mathematically grounded measure of token significance.
Achieves attention visualization without additional GPU memory or computational cost.
Open-source implementation available for reproducibility.
Abstract
Understanding how Large Language Models (LLMs) process information from prompts remains a significant challenge. To shed light on this "black box," attention visualization techniques have been developed to capture neuron-level perceptions and interpret how models focus on different parts of input data. However, many existing techniques are tailored to specific model architectures, particularly within the Transformer family, and often require backpropagation, resulting in nearly double the GPU memory usage and increased computational cost. A lightweight, model-agnostic approach for attention visualization remains lacking. In this paper, we introduce a model-agnostic token importance visualization technique to better understand how generative AI systems perceive and prioritize information from input text, without incurring additional computational cost. Our method leverages…
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