Explainable AI the Latest Advancements and New Trends
- URL: http://arxiv.org/abs/2505.07005v1
- Date: Sun, 11 May 2025 15:01:12 GMT
- Title: Explainable AI the Latest Advancements and New Trends
- Authors: Bowen Long, Enjie Liu, Renxi Qiu, Yanqing Duan,
- Abstract summary: The concept of trustworthiness is cross-disciplinary; it must meet societal standards and principles.<n>We elaborate on the strong link between the explainability of AI and the meta-reasoning of autonomous systems.<n>The integration of approaches could pave the way for future interpretable AI systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In recent years, Artificial Intelligence technology has excelled in various applications across all domains and fields. However, the various algorithms in neural networks make it difficult to understand the reasons behind decisions. For this reason, trustworthy AI techniques have started gaining popularity. The concept of trustworthiness is cross-disciplinary; it must meet societal standards and principles, and technology is used to fulfill these requirements. In this paper, we first surveyed developments from various countries and regions on the ethical elements that make AI algorithms trustworthy; and then focused our survey on the state of the art research into the interpretability of AI. We have conducted an intensive survey on technologies and techniques used in making AI explainable. Finally, we identified new trends in achieving explainable AI. In particular, we elaborate on the strong link between the explainability of AI and the meta-reasoning of autonomous systems. The concept of meta-reasoning is 'reason the reasoning', which coincides with the intention and goal of explainable Al. The integration of the approaches could pave the way for future interpretable AI systems.
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