Zero-Shot Explainable AI: Bridging the Gap Between Prior-Fitted Networks and Human-Centric Interpretability

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Pallavi Patil
Vishwaraj Khatpe
Yash Madane
Harsh More
Sunil Pawar

Abstract

Machine learning on tabular data has historically relied on computationally expensive pipelines, involving extensive hyperparameter tuning and feature engineering. Furthermore, the highest-performing models, such as gradient boosting machines and deep neural networks, often operate as opaque "black boxes," severely limiting their deployment in high-stakes domains that require transparency. This study presents a novel end-to-end framework integrating TabPFN a transformer-based Prior-Fitted Network capable of zero-shot inference with SHapley Additive exPlanations (SHAP) and a Large Language Model (LLM) narrative engine. The purpose of this research is to evaluate whether a zero-shot architecture can achieve competitive predictive performance while simultaneously offering automated, human-readable interpretability. The methodology involves constructing an interactive microservices-based dashboard that processes raw tabular data, executes GPU-accelerated inference, and dynamically translates statistical SHAP values into contextual text summaries. Findings indicate that the proposed system reduces end-to-end inference and explanation latency while completely eliminating the traditional training phase. The integration of LLM-generated narratives significantly lowers the barrier to entry for non-technical stakeholders, establishing a new paradigm for scalable, trustworthy machine learning on tabular data.


 

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Patil, P., Khatpe, V., Madane, Y., More, H., & Pawar, S. (2026). Zero-Shot Explainable AI: Bridging the Gap Between Prior-Fitted Networks and Human-Centric Interpretability. International Journal on Advanced Computer Theory and Engineering, 15(2S), 203–207. Retrieved from https://journals.mriindia.com/index.php/ijacte/article/view/2995
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