Conditional Vendi Score: An Information-Theoretic Approach to Diversity Evaluation of Prompt-based Generative Models
Mohammad Jalali, Azim Ospanov, Amin Gohari, Farzan Farnia

TL;DR
This paper introduces an information-theoretic framework with new metrics, Conditional-Vendi and Information-Vendi scores, to evaluate prompt-induced and model-induced diversity in text-conditioned generative models.
Contribution
It proposes a novel decomposition of entropy to separately quantify diversity from prompts and models, with theoretical interpretation and practical evaluation.
Findings
Conditional-Vendi correlates with internal diversity
Scores distinguish prompt-induced and model-induced diversity
The approach provides a new perspective on diversity evaluation
Abstract
Text-conditioned generation models are commonly evaluated based on the quality of the generated data and its alignment with the input text prompt. On the other hand, several applications of prompt-based generative models require sufficient diversity in the generated data to ensure the models' capability of generating image and video samples possessing a variety of features. However, most existing diversity metrics are designed for unconditional generative models, and thus cannot distinguish the diversity arising from variations in text prompts and that contributed by the generative model itself. In this work, our goal is to quantify the prompt-induced and model-induced diversity in samples generated by prompt-based models. We propose an information-theoretic approach for internal diversity quantification, where we decompose the kernel-based entropy of the generated data into…
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Taxonomy
TopicsMental Health Research Topics · Qualitative Comparative Analysis Research
