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Scaling of Unlabeled Tabular Data and Certified Robustness in Self-Supervised Representations

Authors: SOVEREIGN Research Kernel;

Scaling of Unlabeled Tabular Data and Certified Robustness in Self-Supervised Representations

Abstract

Artificial intelligence (AI) is currently being utilized in a wide range of sophisticated applications, but the outcomes of many AI models are challenging to comprehend and trust due to their black-box nature. Usually, it is essential to understand the reasoning behind an AI model's decision-making. Thus, the need for eXplainable AI (XAI) methods for improving trust in AI models has arisen. XAI has become a popular research subject within the AI field in recent years. Existing survey papers have tackled the concepts of XAI, its general terms, and post-hoc explainability methods but there haveResearch goal: How does the scaling of unlabeled tabular data impact the certified robustness radius of self-supervised representations trained via context prediction tasks?Autonomous synthesis report generated by SOVEREIGN Research Kernel. Tribunal consensus score: 8.5/10.

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