基于Rademacher复杂度和Shannon熵的人工智能不确定性

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引用次数: 2

摘要

本文从通信信道编码的角度,基于经典的Rademacher复杂度和Shannon熵,对人工智能模式分类的不确定性、能力和进化进行了理论和实践上的讨论。首先,人工智能的能力被定义为通信渠道。定性地说明了经典的Rademacher复杂度和Shannon率在通信理论中的定义是密切相关的。其次,基于通信编码的香农数学理论,给出了人工智能分类问题错误率趋近于零的几个充要条件;本文推导了Shannon熵的1/2准则,使人工智能模式分类问题的错误率趋近于零或为零。最后但并非最不重要的是,我们通过提供错误率接近零或为零的AI模式分类示例来展示我们的分析和理论。影响陈述:人工智能模式分类的错误率控制在许多与生活相关的人工智能应用中至关重要。本文研究了人工智能的不确定性、能力和演化。基于Shannon的通信编码理论,推导了人工智能错误率趋近于零的充要条件。使用香农的编码理论说明了零错误率和零错误率接近模式分类的人工智能设计方法。我们的方法展示了如何控制人工智能的错误率,如何衡量人工智能的能力,以及如何将人工智能进化到更高的水平。索引项:Rademacher复杂度,Shannon理论,Shannon熵,Vapnik-Cheronenkis (VC)维。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI Uncertainty Based on Rademacher Complexity and Shannon Entropy
In this paper from communication channel coding perspective we are able to present both a theoretical and practical discussion of AI’s uncertainty, capacity and evolution for pattern classification based on the classical Rademacher complexity and Shannon entropy. First AI capacity is defined as in communication channels. It is shown qualitatively that the classical Rademacher complexity and Shannon rate in communication theory is closely related by their definitions. Secondly based on the Shannon mathematical theory on communication coding, we derive several sufficient and necessary conditions for an AI’s error rate approaching zero in classifications problems. A 1/2 criteria on Shannon entropy is derived in this paper so that error rate can approach zero or is zero for AI pattern classification problems. Last but not least, we show our analysis and theory by providing examples of AI pattern classifications with error rate approaching zero or being zero. Impact Statement: Error rate control of AI pattern classification is crucial in many lives related AI applications. AI uncertainty, capacity and evolution are investigated in this paper. Sufficient/necessary conditions for AI’s error rate approaching zero are derived based on Shannon’s communication coding theory. Zero error rate and zero error rate approaching AI design methodology for pattern classifications are illustrated using Shannon’s coding theory. Our method shows how to control the error rate of AI, how to measure the capacity of AI and how to evolve AI into higher levels. Index Terms: Rademacher Complexity, Shannon Theory, Shannon Entropy, Vapnik-Cheronenkis (VC) dimension.
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